opencv/modules/dnn/test/test_layers.cpp
Alexander Smorkalov 34f34f6227 Merge branch 4.x
2023-11-08 14:39:48 +03:00

2748 lines
93 KiB
C++

/*M///////////////////////////////////////////////////////////////////////////////////////
//
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
//
// By downloading, copying, installing or using the software you agree to this license.
// If you do not agree to this license, do not download, install,
// copy or use the software.
//
//
// License Agreement
// For Open Source Computer Vision Library
//
// Copyright (C) 2017, Intel Corporation, all rights reserved.
// Third party copyrights are property of their respective owners.
//
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
//
// * Redistribution's of source code must retain the above copyright notice,
// this list of conditions and the following disclaimer.
//
// * Redistribution's in binary form must reproduce the above copyright notice,
// this list of conditions and the following disclaimer in the documentation
// and/or other materials provided with the distribution.
//
// * The name of the copyright holders may not be used to endorse or promote products
// derived from this software without specific prior written permission.
//
// This software is provided by the copyright holders and contributors "as is" and
// any express or implied warranties, including, but not limited to, the implied
// warranties of merchantability and fitness for a particular purpose are disclaimed.
// In no event shall the Intel Corporation or contributors be liable for any direct,
// indirect, incidental, special, exemplary, or consequential damages
// (including, but not limited to, procurement of substitute goods or services;
// loss of use, data, or profits; or business interruption) however caused
// and on any theory of liability, whether in contract, strict liability,
// or tort (including negligence or otherwise) arising in any way out of
// the use of this software, even if advised of the possibility of such damage.
//
//M*/
#include "test_precomp.hpp"
#include <opencv2/core/ocl.hpp>
#include "npy_blob.hpp"
#include <opencv2/dnn/shape_utils.hpp>
#include <opencv2/dnn/all_layers.hpp>
#include <opencv2/dnn/layer.details.hpp> // CV_DNN_REGISTER_LAYER_CLASS
#ifdef HAVE_INF_ENGINE
#include <thread>
#endif
namespace opencv_test { namespace {
template<typename TString>
static String _tf(TString filename)
{
String basetestdir = getOpenCVExtraDir();
size_t len = basetestdir.size();
if(len > 0 && basetestdir[len-1] != '/' && basetestdir[len-1] != '\\')
return (basetestdir + "/dnn/layers") + filename;
return (basetestdir + "dnn/layers/") + filename;
}
void runLayer(Ptr<Layer> layer, std::vector<Mat> &inpBlobs, std::vector<Mat> &outBlobs)
{
size_t ninputs = inpBlobs.size();
std::vector<Mat> inp(ninputs), outp, intp;
std::vector<MatShape> inputs, outputs, internals;
for (size_t i = 0; i < ninputs; i++)
{
inp[i] = inpBlobs[i].clone();
inputs.push_back(shape(inp[i]));
}
layer->getMemoryShapes(inputs, 0, outputs, internals);
for (size_t i = 0; i < outputs.size(); i++)
{
outp.push_back(Mat(outputs[i], CV_32F));
}
for (size_t i = 0; i < internals.size(); i++)
{
intp.push_back(Mat(internals[i], CV_32F));
}
layer->finalize(inp, outp);
layer->forward(inp, outp, intp);
size_t noutputs = outp.size();
outBlobs.resize(noutputs);
for (size_t i = 0; i < noutputs; i++)
outBlobs[i] = outp[i];
}
class Test_Caffe_layers : public DNNTestLayer
{
public:
void testLayerUsingCaffeModels(const String& basename, bool useCaffeModel = false,
bool useCommonInputBlob = true, double l1 = 0.0, double lInf = 0.0,
int numInps = 1, int numOuts = 1)
{
CV_Assert_N(numInps >= 1, numInps <= 10, numOuts >= 1, numOuts <= 10);
String prototxt = _tf(basename + ".prototxt");
String caffemodel = _tf(basename + ".caffemodel");
std::vector<Mat> inps, refs, outs;
if (numInps > 1)
{
for (int i = 0; i < numInps; i++)
{
String inpfile = _tf(basename + cv::format(".input_%d.npy", i));
inps.push_back(blobFromNPY(inpfile));
}
}
else
{
String inpfile = (useCommonInputBlob) ? _tf("blob.npy") : _tf(basename + ".input.npy");
inps.push_back(blobFromNPY(inpfile));
}
if (numOuts > 1)
{
for (int i = 0; i < numOuts; i++)
{
String outfile = _tf(basename + cv::format("_%d.npy", i));
refs.push_back(blobFromNPY(outfile));
}
}
else
{
String outfile = _tf(basename + ".npy");
refs.push_back(blobFromNPY(outfile));
}
Net net = readNetFromCaffe(prototxt, (useCaffeModel) ? caffemodel : String());
ASSERT_FALSE(net.empty());
checkBackend(&inps[0], &refs[0]);
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
String inp_name = "input";
if (numInps > 1)
{
for (int i = 0; i < numInps; i++)
{
net.setInput(inps[i], inp_name + cv::format("_%d", i));
}
}
else
{
net.setInput(inps.back(), inp_name);
}
net.forward(outs);
for (int i = 0; i < refs.size(); i++)
{
normAssert(refs[i], outs[i], "", l1 ? l1 : default_l1, lInf ? lInf : default_lInf);
}
}
};
TEST_P(Test_Caffe_layers, Softmax)
{
testLayerUsingCaffeModels("layer_softmax");
}
TEST_P(Test_Caffe_layers, LRN)
{
double l1 = 0.0, lInf = 0.0;
// The OpenCL kernels use the native_ math functions which have
// implementation defined accuracy, so we use relaxed thresholds. See
// https://github.com/opencv/opencv/issues/9821 for more details.
if (target == DNN_TARGET_OPENCL)
{
l1 = 0.01;
lInf = 0.01;
}
testLayerUsingCaffeModels("layer_lrn_spatial", false, true, l1, lInf);
testLayerUsingCaffeModels("layer_lrn_channels", false, true, l1, lInf);
}
TEST_P(Test_Caffe_layers, Convolution)
{
testLayerUsingCaffeModels("layer_convolution", true);
}
TEST_P(Test_Caffe_layers, DeConvolution)
{
if(target == DNN_TARGET_CUDA_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_CUDA_FP16);
testLayerUsingCaffeModels("layer_deconvolution", true, false);
}
TEST_P(Test_Caffe_layers, InnerProduct)
{
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LT(2021040000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NGRAPH);
#endif
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_EQ(2021040000)
// IE exception: Ngraph operation Reshape with name Reshape_4219609 has dynamic output shape on 0 port, but CPU plug-in supports only static shape
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && (target == DNN_TARGET_OPENCL || target == DNN_TARGET_OPENCL_FP16))
applyTestTag(target == DNN_TARGET_OPENCL ? CV_TEST_TAG_DNN_SKIP_IE_OPENCL : CV_TEST_TAG_DNN_SKIP_IE_OPENCL_FP16,
CV_TEST_TAG_DNN_SKIP_IE_NGRAPH, CV_TEST_TAG_DNN_SKIP_IE_VERSION
);
#endif
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_CPU_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_CPU_FP16);
double l1 = 0.0, lInf = 0.0;
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && (target == DNN_TARGET_OPENCL || target == DNN_TARGET_OPENCL_FP16))
{
l1 = 5e-3;
lInf = 2e-2;
}
testLayerUsingCaffeModels("layer_inner_product", true, true, l1, lInf);
}
TEST_P(Test_Caffe_layers, Pooling_max)
{
testLayerUsingCaffeModels("layer_pooling_max");
}
TEST_P(Test_Caffe_layers, Pooling_ave)
{
testLayerUsingCaffeModels("layer_pooling_ave");
}
TEST_P(Test_Caffe_layers, MVN)
{
if(backend == DNN_BACKEND_CUDA)
applyTestTag(CV_TEST_TAG_DNN_SKIP_CUDA); /* MVN is unsupported */
testLayerUsingCaffeModels("layer_mvn");
}
void testReshape(const MatShape& inputShape, const MatShape& targetShape,
int axis = 0, int num_axes = -1,
MatShape mask = MatShape())
{
LayerParams params;
params.set("axis", axis);
params.set("num_axes", num_axes);
if (!mask.empty())
{
params.set("dim", DictValue::arrayInt<int*>(&mask[0], mask.size()));
}
Mat inp(inputShape.size(), &inputShape[0], CV_32F);
std::vector<Mat> inpVec(1, inp);
std::vector<Mat> outVec, intVec;
Ptr<Layer> rl = LayerFactory::createLayerInstance("Reshape", params);
runLayer(rl, inpVec, outVec);
Mat& out = outVec[0];
MatShape shape(out.size.p, out.size.p + out.dims);
EXPECT_EQ(shape, targetShape);
}
TEST(Layer_Test_Reshape, Accuracy)
{
{
int inp[] = {4, 3, 1, 2};
int out[] = {4, 3, 2};
testReshape(MatShape(inp, inp + 4), MatShape(out, out + 3), 2, 1);
}
{
int inp[] = {1, 128, 4, 4};
int out[] = {1, 2048};
int mask[] = {-1, 2048};
testReshape(MatShape(inp, inp + 4), MatShape(out, out + 2), 0, -1,
MatShape(mask, mask + 2));
}
{
int inp[] = {1, 2, 3};
int out[] = {3, 1, 2};
int mask[] = {3, 1, 2};
testReshape(MatShape(inp, inp + 3), MatShape(out, out + 3), 0, -1,
MatShape(mask, mask + 3));
}
}
TEST_P(Test_Caffe_layers, BatchNorm)
{
testLayerUsingCaffeModels("layer_batch_norm", true);
testLayerUsingCaffeModels("layer_batch_norm_local_stats", true, false);
}
TEST_P(Test_Caffe_layers, ReLU)
{
testLayerUsingCaffeModels("layer_relu");
}
TEST_P(Test_Caffe_layers, Dropout)
{
testLayerUsingCaffeModels("layer_dropout");
}
TEST_P(Test_Caffe_layers, Concat)
{
#if defined(INF_ENGINE_RELEASE)
#if INF_ENGINE_VER_MAJOR_GE(2019010000) && INF_ENGINE_VER_MAJOR_LT(2019020000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER, CV_TEST_TAG_DNN_SKIP_IE_VERSION);
#elif INF_ENGINE_VER_MAJOR_EQ(2019020000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 &&
(target == DNN_TARGET_OPENCL || target == DNN_TARGET_OPENCL_FP16))
applyTestTag(target == DNN_TARGET_OPENCL ? CV_TEST_TAG_DNN_SKIP_IE_OPENCL : CV_TEST_TAG_DNN_SKIP_IE_OPENCL_FP16,
CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER, CV_TEST_TAG_DNN_SKIP_IE_VERSION);
#endif
#if INF_ENGINE_VER_MAJOR_LT(2021040000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH &&
(target == DNN_TARGET_OPENCL || target == DNN_TARGET_OPENCL_FP16))
applyTestTag(target == DNN_TARGET_OPENCL ? CV_TEST_TAG_DNN_SKIP_IE_OPENCL : CV_TEST_TAG_DNN_SKIP_IE_OPENCL_FP16,
CV_TEST_TAG_DNN_SKIP_IE_NGRAPH, CV_TEST_TAG_DNN_SKIP_IE_VERSION);
#endif
#endif
testLayerUsingCaffeModels("layer_concat");
testLayerUsingCaffeModels("layer_concat_optim", true, false);
testLayerUsingCaffeModels("layer_concat_shared_input", true, false);
}
TEST_P(Test_Caffe_layers, Fused_Concat)
{
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && (target == DNN_TARGET_OPENCL || target == DNN_TARGET_OPENCL_FP16))
applyTestTag(target == DNN_TARGET_OPENCL ? CV_TEST_TAG_DNN_SKIP_IE_OPENCL : CV_TEST_TAG_DNN_SKIP_IE_OPENCL_FP16,
CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER, CV_TEST_TAG_DNN_SKIP_IE_VERSION);
checkBackend();
// Test case
// input
// |
// v
// some_layer
// | |
// v v
// concat
Net net;
int interLayer;
{
LayerParams lp;
lp.type = "AbsVal";
lp.name = "someLayer";
interLayer = net.addLayerToPrev(lp.name, lp.type, lp);
}
{
LayerParams lp;
lp.set("axis", 1);
lp.type = "Concat";
lp.name = "testConcat";
int id = net.addLayer(lp.name, lp.type, lp);
net.connect(interLayer, 0, id, 0);
net.connect(interLayer, 0, id, 1);
}
int shape[] = {1, 2, 3, 4};
Mat input(4, shape, CV_32F);
randu(input, 0.0f, 1.0f); // [0, 1] to make AbsVal an identity transformation.
net.setInput(input);
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat out = net.forward();
normAssert(slice(out, Range::all(), Range(0, 2), Range::all(), Range::all()), input, "", default_l1, default_lInf);
normAssert(slice(out, Range::all(), Range(2, 4), Range::all(), Range::all()), input, "", default_l1, default_lInf);
}
TEST_P(Test_Caffe_layers, Eltwise)
{
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD);
testLayerUsingCaffeModels("layer_eltwise");
}
TEST_P(Test_Caffe_layers, PReLU)
{
double lInf = (target == DNN_TARGET_MYRIAD || target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_CPU_FP16) ? 0.021 : 0.0;
testLayerUsingCaffeModels("layer_prelu", true, true, 0.0, lInf);
}
// TODO: fix an unstable test case
TEST_P(Test_Caffe_layers, layer_prelu_fc)
{
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
// Reference output values are in range [-0.0001, 10.3906]
double l1 = (target == DNN_TARGET_MYRIAD) ? 0.005 : 0.0;
double lInf = (target == DNN_TARGET_MYRIAD) ? 0.021 : 0.0;
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_GE(2020040000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && target == DNN_TARGET_OPENCL)
{
l1 = 0.006f; lInf = 0.05f;
}
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && target == DNN_TARGET_OPENCL_FP16)
{
l1 = 0.01f; lInf = 0.05f;
}
#endif
testLayerUsingCaffeModels("layer_prelu_fc", true, false, l1, lInf);
}
TEST_P(Test_Caffe_layers, Reshape_Split_Slice)
{
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LT(2023000000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NGRAPH);
#endif
Net net = readNetFromCaffe(_tf("reshape_and_slice_routines.prototxt"));
ASSERT_FALSE(net.empty());
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat input(6, 12, CV_32F);
RNG rng(0);
rng.fill(input, RNG::UNIFORM, -1, 1);
net.setInput(input, "input");
Mat output = net.forward("output");
normAssert(input, output, "", default_l1, default_lInf);
}
TEST_P(Test_Caffe_layers, Conv_Elu)
{
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_RELEASE <= 2018050000
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_VERSION);
#endif
Net net = readNetFromTensorflow(_tf("layer_elu_model.pb"));
ASSERT_FALSE(net.empty());
Mat inp = blobFromNPY(_tf("layer_elu_in.npy"));
Mat ref = blobFromNPY(_tf("layer_elu_out.npy"));
net.setInput(inp, "input");
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat out = net.forward();
double l1 = default_l1, lInf = default_lInf;
if (target == DNN_TARGET_CUDA_FP16)
{
l1 = 0.0002;
lInf = 0.0005;
}
normAssert(ref, out, "", l1, lInf);
}
class Layer_LSTM_Test : public ::testing::Test
{
public:
int numInp, numOut;
Mat Wh, Wx, b, h, c;
Ptr<LSTMLayer> layer;
std::vector<Mat> inputs, outputs;
Layer_LSTM_Test() {}
void init(const MatShape &inpShape_, const MatShape &outShape_,
bool produceCellOutput, bool useTimestampDim)
{
numInp = total(inpShape_);
numOut = total(outShape_);
Wh = Mat::ones(4 * numOut, numOut, CV_32F);
Wx = Mat::ones(4 * numOut, numInp, CV_32F);
b = Mat::ones(4 * numOut, 1, CV_32F);
h = Mat::ones(4, numOut, CV_32F);
c = Mat::ones(4, numOut, CV_32F);
LayerParams lp;
lp.blobs.resize(5);
lp.blobs[0] = Wh;
lp.blobs[1] = Wx;
lp.blobs[2] = b;
lp.blobs[3] = h;
lp.blobs[4] = c;
lp.set<bool>("produce_cell_output", produceCellOutput);
lp.set<bool>("use_timestamp_dim", useTimestampDim);
layer = LSTMLayer::create(lp);
layer->setOutShape(outShape_);
}
};
TEST_F(Layer_LSTM_Test, get_set_test)
{
const int TN = 4;
MatShape inpShape = shape(5, 3, 2);
MatShape outShape = shape(3, 1, 2);
MatShape inpResShape = concat(shape(TN), inpShape);
MatShape outResShape = concat(shape(TN), outShape);
init(inpShape, outShape, true, false);
layer->setOutShape(outShape);
Mat C((int)outResShape.size(), &outResShape[0], CV_32F);
randu(C, -1., 1.);
Mat H = C.clone();
randu(H, -1., 1.);
Mat inp((int)inpResShape.size(), &inpResShape[0], CV_32F);
randu(inp, -1., 1.);
inputs.push_back(inp);
runLayer(layer, inputs, outputs);
EXPECT_EQ(2u, outputs.size());
print(outResShape, "outResShape");
print(shape(outputs[0]), "out0");
print(shape(outputs[0]), "out1");
EXPECT_EQ(outResShape, shape(outputs[0]));
EXPECT_EQ(outResShape, shape(outputs[1]));
EXPECT_EQ(0, layer->inputNameToIndex("x"));
EXPECT_EQ(0, layer->outputNameToIndex("h"));
EXPECT_EQ(1, layer->outputNameToIndex("c"));
}
TEST(Layer_LSTM_Test_Accuracy_with_, CaffeRecurrent)
{
LayerParams lp;
lp.blobs.resize(5);
lp.blobs[0] = blobFromNPY(_tf("lstm.prototxt.w_2.npy")); // Wh
lp.blobs[1] = blobFromNPY(_tf("lstm.prototxt.w_0.npy")); // Wx
lp.blobs[2] = blobFromNPY(_tf("lstm.prototxt.w_1.npy")); // bias
lp.blobs[3] = Mat::zeros(2, 17, CV_32F); // h_0
lp.blobs[4] = Mat::zeros(2, 17, CV_32F); // c_0
Ptr<LSTMLayer> layer = LSTMLayer::create(lp);
Mat inp = blobFromNPY(_tf("recurrent.input.npy"));
std::vector<Mat> inputs(1, inp), outputs;
runLayer(layer, inputs, outputs);
Mat h_t_reference = blobFromNPY(_tf("lstm.prototxt.h_1.npy"));
normAssert(h_t_reference, outputs[0]);
}
TEST(Layer_LSTM_Test_Accuracy_with_, HiddenParams)
{
Mat Wx = blobFromNPY(_tf("lstm.hidden.W.npy"));
Mat Wh = blobFromNPY(_tf("lstm.hidden.R.npy"));
Mat b = blobFromNPY(_tf("lstm.hidden.B.npy"));
Mat h0 = blobFromNPY(_tf("lstm.hidden.h0.npy"));
Mat c0 = blobFromNPY(_tf("lstm.hidden.c0.npy"));
const int numHidden = 3;
const int numDirs = Wx.size[0];
const int numFeatures = Wx.size[2];
b = b.reshape(1, b.size[0]);
Mat bx = b.colRange(0, b.cols / 2);
Mat bh = b.colRange(b.cols / 2, b.cols);
b = bx + bh;
// IFGO->IGFO
for (int k = 0; k < numDirs; ++k)
{
float* WxData = Wx.ptr<float>(k);
float* WhData = Wh.ptr<float>(k);
float* biasData = b.ptr<float>(k);
for (int j = 0; j < numHidden; ++j)
{
for (int i = 0; i < numFeatures; ++i)
{
std::swap(WxData[(numHidden + j) * numFeatures + i],
WxData[(numHidden * 2 + j) * numFeatures + i]);
}
for (int i = 0; i < numHidden; ++i)
{
std::swap(WhData[(numHidden + j) * numHidden + i],
WhData[(numHidden * 2 + j) * numHidden + i]);
}
std::swap(biasData[numHidden + j], biasData[numHidden * 2 + j]);
}
}
Wx = Wx.reshape(1, Wx.size[0] * Wx.size[1]);
Wh = Wh.reshape(1, Wh.size[0] * Wh.size[1]);
h0 = h0.reshape(1, h0.size[0] * h0.size[1]);
c0 = c0.reshape(1, c0.size[0] * c0.size[1]);
LayerParams lstmParams;
lstmParams.blobs.resize(5);
lstmParams.blobs[0] = Wh;
lstmParams.blobs[1] = Wx;
lstmParams.blobs[2] = b;
lstmParams.blobs[3] = h0;
lstmParams.blobs[4] = c0;
lstmParams.set("bidirectional", false);
Ptr<LSTMLayer> layer = LSTMLayer::create(lstmParams);
Mat inp = blobFromNPY(_tf("lstm.hidden.input.npy"));
std::vector<Mat> inputs(1, inp), outputs;
runLayer(layer, inputs, outputs);
Mat h_t_reference = blobFromNPY(_tf("lstm.hidden.output.npy"));
normAssert(h_t_reference, outputs[0]);
}
TEST(Layer_GRU_Test_Accuracy_with_, Pytorch)
{
Mat Wx = blobFromNPY(_tf("gru.W.npy"));
Mat Wh = blobFromNPY(_tf("gru.R.npy"));
Mat b = blobFromNPY(_tf("gru.B.npy"));
Mat h0 = blobFromNPY(_tf("gru.h0.npy"));
Wx = Wx.reshape(1, Wx.size[0] * Wx.size[1]);
Wh = Wh.reshape(1, Wh.size[0] * Wh.size[1]);
h0 = h0.reshape(1, h0.size[0] * h0.size[1]);
b = b.reshape(1, b.size[0]);
LayerParams gruParams;
gruParams.blobs.resize(4);
gruParams.blobs[0] = Wh;
gruParams.blobs[1] = Wx;
gruParams.blobs[2] = b;
gruParams.blobs[3] = h0;
gruParams.set("bidirectional", false);
Ptr<GRULayer> layer = GRULayer::create(gruParams);
Mat inp = blobFromNPY(_tf("gru.input.npy"));
std::vector<Mat> inputs(1, inp), outputs;
runLayer(layer, inputs, outputs);
Mat h_t_reference = blobFromNPY(_tf("gru.output.npy"));
normAssert(h_t_reference, outputs[0]);
}
TEST(Layer_RNN_Test_Accuracy_with_, CaffeRecurrent)
{
Ptr<RNNLayer> layer = RNNLayer::create(LayerParams());
layer->setWeights(
blobFromNPY(_tf("rnn.prototxt.w_0.npy")),
blobFromNPY(_tf("rnn.prototxt.w_1.npy")),
blobFromNPY(_tf("rnn.prototxt.w_2.npy")),
blobFromNPY(_tf("rnn.prototxt.w_3.npy")),
blobFromNPY(_tf("rnn.prototxt.w_4.npy")) );
std::vector<Mat> output, input(1, blobFromNPY(_tf("recurrent.input.npy")));
runLayer(layer, input, output);
Mat h_ref = blobFromNPY(_tf("rnn.prototxt.h_1.npy"));
normAssert(h_ref, output[0]);
}
TEST(Layer_LSTM_Test_Accuracy_, Reverse)
{
// This handcrafted setup calculates (approximately) the prefix sum of the
// input, assuming the inputs are suitably small.
cv::Mat input(2, 1, CV_32FC1);
input.at<float>(0, 0) = 1e-5f;
input.at<float>(1, 0) = 2e-5f;
cv::Mat Wx(4, 1, CV_32FC1);
Wx.at<float>(0, 0) = 0.f; // Input gate
Wx.at<float>(1, 0) = 0.f; // Forget gate
Wx.at<float>(2, 0) = 0.f; // Output gate
Wx.at<float>(3, 0) = 1.f; // Update signal
cv::Mat Wh(4, 1, CV_32FC1);
Wh.at<float>(0, 0) = 0.f; // Input gate
Wh.at<float>(1, 0) = 0.f; // Forget gate
Wh.at<float>(2, 0) = 0.f; // Output gate
Wh.at<float>(3, 0) = 0.f; // Update signal
cv::Mat bias(4, 1, CV_32FC1);
bias.at<float>(0, 0) = 1e10f; // Input gate - always allows input to c
bias.at<float>(1, 0) = 1e10f; // Forget gate - never forget anything on c
bias.at<float>(2, 0) = 1e10f; // Output gate - always output everything
bias.at<float>(3, 0) = 0.f; // Update signal
cv::Mat hInternal = cv::Mat::zeros(1, 1, CV_32FC1);
cv::Mat cInternal = cv::Mat::zeros(1, 1, CV_32FC1);
LayerParams lp;
lp.set("reverse", true);
lp.set("use_timestamp_dim", true);
lp.blobs.clear();
lp.blobs.push_back(Wh);
lp.blobs.push_back(Wx);
lp.blobs.push_back(bias);
lp.blobs.push_back(hInternal);
lp.blobs.push_back(cInternal);
cv::Ptr<cv::dnn::LSTMLayer> layer = LSTMLayer::create(lp);
std::vector<cv::Mat> outputs;
std::vector<cv::Mat> inputs;
inputs.push_back(input);
runLayer(layer, inputs, outputs);
ASSERT_EQ(1, outputs.size());
cv::Mat out = outputs[0];
ASSERT_EQ(3, out.dims);
ASSERT_EQ(shape(2, 1, 1), shape(out));
float* data = reinterpret_cast<float*>(out.data);
EXPECT_NEAR(std::tanh(1e-5f) + std::tanh(2e-5f), data[0], 1e-10);
EXPECT_NEAR(std::tanh(2e-5f), data[1], 1e-10);
}
class Layer_RNN_Test : public ::testing::Test
{
public:
int nX, nH, nO, nT, nS;
Mat Whh, Wxh, bh, Who, bo;
Ptr<RNNLayer> layer;
std::vector<Mat> inputs, outputs;
Layer_RNN_Test()
{
nT = 3;
nS = 5;
nX = 31;
nH = 64;
nO = 100;
Whh = Mat::ones(nH, nH, CV_32F);
Wxh = Mat::ones(nH, nX, CV_32F);
bh = Mat::ones(nH, 1, CV_32F);
Who = Mat::ones(nO, nH, CV_32F);
bo = Mat::ones(nO, 1, CV_32F);
layer = RNNLayer::create(LayerParams());
layer->setProduceHiddenOutput(true);
layer->setWeights(Wxh, bh, Whh, Who, bo);
}
};
TEST_F(Layer_RNN_Test, get_set_test)
{
int sz[] = { nT, nS, 1, nX };
Mat inp(4, sz, CV_32F);
randu(inp, -1., 1.);
inputs.push_back(inp);
runLayer(layer, inputs, outputs);
EXPECT_EQ(outputs.size(), 2u);
EXPECT_EQ(shape(outputs[0]), shape(nT, nS, nO));
EXPECT_EQ(shape(outputs[1]), shape(nT, nS, nH));
}
TEST_P(Test_Caffe_layers, Accum)
{
#ifdef OPENCV_DNN_EXTERNAL_PROTOBUF
throw SkipTestException("Requires patched protobuf");
#else
if (backend == DNN_BACKEND_OPENCV && target != DNN_TARGET_CPU)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL, CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
testLayerUsingCaffeModels("accum", false, false, 0.0, 0.0, 2);
testLayerUsingCaffeModels("accum_ref", false, false, 0.0, 0.0, 2);
#endif
}
TEST_P(Test_Caffe_layers, FlowWarp)
{
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
testLayerUsingCaffeModels("flow_warp", false, false, 0.0, 0.0, 2);
}
TEST_P(Test_Caffe_layers, ChannelNorm)
{
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
testLayerUsingCaffeModels("channel_norm", false, false);
}
TEST_P(Test_Caffe_layers, DataAugmentation)
{
#ifdef OPENCV_DNN_EXTERNAL_PROTOBUF
throw SkipTestException("Requires patched protobuf");
#else
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
testLayerUsingCaffeModels("data_augmentation", true, false);
testLayerUsingCaffeModels("data_augmentation_2x1", true, false);
testLayerUsingCaffeModels("data_augmentation_8x6", true, false);
#endif
}
TEST_P(Test_Caffe_layers, Resample)
{
#ifdef OPENCV_DNN_EXTERNAL_PROTOBUF
throw SkipTestException("Requires patched protobuf");
#else
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LT(2023000000)
if (backend != DNN_BACKEND_OPENCV)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER, CV_TEST_TAG_DNN_SKIP_IE_NGRAPH);
#endif
testLayerUsingCaffeModels("nearest_2inps", false, false, 0.0, 0.0, 2);
testLayerUsingCaffeModels("nearest", false, false);
#endif
}
TEST_P(Test_Caffe_layers, Correlation)
{
#ifdef OPENCV_DNN_EXTERNAL_PROTOBUF
throw SkipTestException("Requires patched protobuf");
#else
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NGRAPH, CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER,
CV_TEST_TAG_DNN_SKIP_OPENCL, CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
testLayerUsingCaffeModels("correlation", false, false, 0.0, 0.0, 2);
#endif
}
TEST_P(Test_Caffe_layers, Convolution2Inputs)
{
testLayerUsingCaffeModels("conv_2_inps", true, false, 0.0, 0.0, 2);
}
TEST_P(Test_Caffe_layers, ROIPooling_Accuracy)
{
Net net = readNetFromCaffe(_tf("net_roi_pooling.prototxt"));
ASSERT_FALSE(net.empty());
Mat inp = blobFromNPY(_tf("net_roi_pooling.input.npy"));
Mat rois = blobFromNPY(_tf("net_roi_pooling.rois.npy"));
Mat ref = blobFromNPY(_tf("net_roi_pooling.npy"));
checkBackend(&inp, &ref);
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
net.setInput(inp, "input");
net.setInput(rois, "rois");
Mat out = net.forward();
double l1 = (target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_MYRIAD) ? 1e-3 : 1e-5;
double lInf = (target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_MYRIAD) ? 1e-3 : 1e-4;
if (target == DNN_TARGET_CUDA_FP16)
{
l1 = 2e-4;
lInf = 9e-4;
}
normAssert(out, ref, "", l1, lInf);
}
TEST_P(Test_Caffe_layers, FasterRCNN_Proposal)
{
if (backend == DNN_BACKEND_OPENCV && target == DNN_TARGET_OPENCL_FP16)
applyTestTag(CV_TEST_TAG_DNN_SKIP_OPENCL_FP16);
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NGRAPH);
if(backend == DNN_BACKEND_CUDA)
applyTestTag(CV_TEST_TAG_DNN_SKIP_CUDA); /* Proposal layer is unsupported */
Net net = readNetFromCaffe(_tf("net_faster_rcnn_proposal.prototxt"));
Mat scores = blobFromNPY(_tf("net_faster_rcnn_proposal.scores.npy"));
Mat deltas = blobFromNPY(_tf("net_faster_rcnn_proposal.deltas.npy"));
Mat imInfo = (Mat_<float>(1, 3) << 600, 800, 1.6f);
net.setInput(scores, "rpn_cls_prob_reshape");
net.setInput(deltas, "rpn_bbox_pred");
net.setInput(imInfo, "im_info");
std::vector<Mat> outs;
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
net.forward(outs, "output");
for (int i = 0; i < 2; ++i)
{
Mat ref = blobFromNPY(_tf(i == 0 ? "net_faster_rcnn_proposal.out_rois.npy" :
"net_faster_rcnn_proposal.out_scores.npy"));
const int numDets = ref.size[0];
EXPECT_LE(numDets, outs[i].size[0]);
normAssert(outs[i].rowRange(0, numDets), ref);
if (numDets < outs[i].size[0])
{
EXPECT_EQ(countNonZero(outs[i].rowRange(numDets, outs[i].size[0])), 0);
}
}
}
typedef testing::TestWithParam<tuple<Vec4i, Vec2i, bool> > Scale_untrainable;
TEST_P(Scale_untrainable, Accuracy)
{
Vec4i inpShapeVec = get<0>(GetParam());
int axis = get<1>(GetParam())[0];
int weightsDims = get<1>(GetParam())[1];
bool testFusion = get<2>(GetParam());
const int inpShape[] = {inpShapeVec[0], inpShapeVec[1], inpShapeVec[2], inpShapeVec[3]};
// Create a network with two inputs. Scale layer multiplies a first input to
// a second one. See http://caffe.berkeleyvision.org/tutorial/layers/scale.html
Net net;
// Check that this version of Scale layer won't be fused with Convolution layer.
if (testFusion)
{
LayerParams lp;
lp.set("kernel_size", 1);
lp.set("num_output", 3);
lp.set("group", 3);
lp.set("bias_term", false);
lp.type = "Convolution";
lp.name = "testConv";
std::vector<int> weightsShape(4);
weightsShape[0] = 3; // #outChannels
weightsShape[1] = 1; // #inpChannels / group
weightsShape[2] = 1; // height
weightsShape[3] = 1; // width
Mat weights(weightsShape, CV_32F);
weights.setTo(1);
lp.blobs.push_back(weights);
net.addLayerToPrev(lp.name, lp.type, lp);
}
LayerParams lp;
lp.type = "Scale";
lp.name = "testLayer";
lp.set("axis", axis);
int id = net.addLayerToPrev(lp.name, lp.type, lp);
net.connect(0, 1, id, 1);
Mat input(4, inpShape, CV_32F);
Mat weights(weightsDims, &inpShape[axis], CV_32F);
randu(input, -1, 1);
randu(weights, -1, 1);
std::vector<String> inpNames(2);
inpNames[0] = "scale_input";
inpNames[1] = "scale_weights";
net.setInputsNames(inpNames);
net.setInput(input, inpNames[0]);
net.setInput(weights, inpNames[1]);
net.setPreferableBackend(DNN_BACKEND_OPENCV);
Mat out = net.forward();
Mat ref(input.dims, input.size, CV_32F);
float* inpData = (float*)input.data;
float* refData = (float*)ref.data;
float* weightsData = (float*)weights.data;
int spatialSize = 1;
for (int i = axis + weightsDims; i < 4; ++i)
spatialSize *= inpShape[i];
for (int i = 0; i < ref.total(); ++i)
{
float w = weightsData[(i / spatialSize) % weights.total()];
refData[i] = inpData[i] * w;
}
normAssert(out, ref);
}
INSTANTIATE_TEST_CASE_P(Layer_Test, Scale_untrainable, Combine(
/*input size*/ Values(Vec4i(2, 3, 4, 5)),
/*axis, #dims*/ Values(Vec2i(0, 1), Vec2i(0, 2), Vec2i(0, 3), Vec2i(0, 4),
Vec2i(1, 1), Vec2i(1, 2), Vec2i(1, 3),
Vec2i(2, 1), Vec2i(2, 2),
Vec2i(3, 1)),
/*conv fusion*/ testing::Bool()
));
typedef testing::TestWithParam<tuple<Vec4i, Vec4i, int, int, int> > Crop;
TEST_P(Crop, Accuracy)
{
Vec4i inpShapeVec = get<0>(GetParam());
Vec4i sizShapeVec = get<1>(GetParam());
int axis = get<2>(GetParam());
int numOffsets = get<3>(GetParam());
int offsetVal = get<4>(GetParam());
const int inpShape[] = {inpShapeVec[0], inpShapeVec[1], inpShapeVec[2], inpShapeVec[3]};
const int sizShape[] = {sizShapeVec[0], sizShapeVec[1], sizShapeVec[2], sizShapeVec[3]};
// Create a network with two inputs. Crop layer crops a first input to
// the size of a second one.
// See http://caffe.berkeleyvision.org/tutorial/layers/crop.html
Net net;
LayerParams lp;
lp.name = "testCrop";
lp.type = "Crop";
lp.set("axis", axis);
if (numOffsets > 0)
{
std::vector<int> offsets(numOffsets, offsetVal);
lp.set("offset", DictValue::arrayInt<int*>(&offsets[0], offsets.size()));
}
else
offsetVal = 0;
int id = net.addLayerToPrev(lp.name, lp.type, lp);
net.connect(0, 1, id, 1);
Mat inpImage(4, inpShape, CV_32F);
Mat sizImage(4, sizShape, CV_32F);
randu(inpImage, -1, 1);
randu(sizImage, -1, 1);
std::vector<String> inpNames(2);
inpNames[0] = "cropImage";
inpNames[1] = "sizImage";
net.setInputsNames(inpNames);
net.setInput(inpImage, inpNames[0]);
net.setInput(sizImage, inpNames[1]);
net.setPreferableBackend(DNN_BACKEND_OPENCV);
// There are a few conditions that represent invalid input to the crop
// layer, so in those cases we want to verify an exception is thrown.
bool shouldThrowException = false;
if (numOffsets > 1 && numOffsets != 4 - axis)
shouldThrowException = true;
else
for (int i = axis; i < 4; i++)
if (sizShape[i] + offsetVal > inpShape[i])
shouldThrowException = true;
Mat out;
if (shouldThrowException)
{
ASSERT_ANY_THROW(out = net.forward());
return;
}
else
out = net.forward();
// Finally, compare the cropped output blob from the DNN layer (out)
// to a reference blob (ref) that we compute here.
std::vector<Range> crop_range;
crop_range.resize(4, Range::all());
for (int i = axis; i < 4; i++)
crop_range[i] = Range(offsetVal, sizShape[i] + offsetVal);
Mat ref(sizImage.dims, sizImage.size, CV_32F);
inpImage(&crop_range[0]).copyTo(ref);
normAssert(out, ref);
}
INSTANTIATE_TEST_CASE_P(Layer_Test, Crop, Combine(
/*input blob shape*/ Values(Vec4i(1, 3, 20, 30)),
/*cropsize blob shape*/ Values(Vec4i(1, 3, 10, 12)),
/*start axis*/ Values(0, 1, 2),
/*number of offsets*/ Values(0, 1, 2, 4),
/*offset value*/ Values(3, 4)
));
// Check that by default average pooling layer should not count zero padded values
// into the normalization area.
TEST_P(Test_Caffe_layers, Average_pooling_kernel_area)
{
LayerParams lp;
lp.name = "testAvePool";
lp.type = "Pooling";
lp.set("kernel_size", 2);
lp.set("stride", 2);
lp.set("pool", "AVE");
Net net;
net.addLayerToPrev(lp.name, lp.type, lp);
// 1 2 | 3
// 4 5 | 6
// ----+--
// 7 8 | 9
Mat inp = (Mat_<float>(3, 3) << 1, 2, 3, 4, 5, 6, 7, 8, 9);
Mat ref = (Mat_<float>(2, 2) << (1 + 2 + 4 + 5) / 4.f, (3 + 6) / 2.f, (7 + 8) / 2.f, 9);
Mat tmp = blobFromImage(inp);
net.setInput(blobFromImage(inp));
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat out = net.forward();
normAssert(out, blobFromImage(ref));
}
TEST_P(Test_Caffe_layers, PriorBox_repeated)
{
Net net = readNet(_tf("prior_box.prototxt"));
int inp_size[] = {1, 3, 10, 10};
int shape_size[] = {1, 2, 3, 4};
Mat inp(4, inp_size, CV_32F);
randu(inp, -1.0f, 1.0f);
Mat shape(4, shape_size, CV_32F);
randu(shape, -1.0f, 1.0f);
net.setInput(inp, "data");
net.setInput(shape, "shape");
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat out = net.forward();
Mat ref = blobFromNPY(_tf("priorbox_output.npy"));
double l1 = (target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_MYRIAD) ? 1e-3 : 1e-5;
double lInf = (target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_MYRIAD) ? 1e-3 : 1e-4;
if (target == DNN_TARGET_CUDA_FP16)
{
l1 = 7e-5;
lInf = 0.0005;
}
normAssert(out, ref, "", l1, lInf);
}
// Test PriorBoxLayer in case of no aspect ratios (just squared proposals).
TEST_P(Test_Caffe_layers, PriorBox_squares)
{
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NGRAPH);
LayerParams lp;
lp.name = "testPriorBox";
lp.type = "PriorBox";
lp.set("min_size", 2);
lp.set("flip", true);
lp.set("clip", true);
float variance[] = {0.1f, 0.1f, 0.2f, 0.2f};
float aspectRatios[] = {1.0f}; // That should be ignored.
lp.set("variance", DictValue::arrayReal<float*>(&variance[0], 4));
lp.set("aspect_ratio", DictValue::arrayReal<float*>(&aspectRatios[0], 1));
Net net;
int id = net.addLayerToPrev(lp.name, lp.type, lp);
net.connect(0, 0, id, 1); // The second input is an input image. Shapes are used for boxes normalization.
Mat inp(1, 2, CV_32F);
randu(inp, -1, 1);
net.setInput(blobFromImage(inp));
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat out = net.forward();
Mat ref = (Mat_<float>(4, 4) << 0.0, 0.0, 0.75, 1.0,
0.25, 0.0, 1.0, 1.0,
0.1f, 0.1f, 0.2f, 0.2f,
0.1f, 0.1f, 0.2f, 0.2f);
double l1 = 1e-5;
if (target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_MYRIAD || target == DNN_TARGET_CUDA_FP16)
l1 = 2e-5;
normAssert(out.reshape(1, 4), ref, "", l1);
}
typedef TestWithParam<tuple<int, int> > Layer_Test_DWconv_Prelu;
TEST_P(Layer_Test_DWconv_Prelu, Accuracy)
{
// Test case
// input img size 3x16x16 value all 1
// |
// v
// dw_conv weight[0]=-1 weight[1]=-2 weight[2]=-3 bias={1,2,3}
// |
// v
// prelu weight={1,2,3}
// |
// v
// output out size 3x14x14 if right: out[0]=-8 out[0]=-32 out[0]=-72
// but current opencv output: out[0]=-24 out[0]=-48 out[0]=-72
const int num_input = get<0>(GetParam()); //inpChannels
const int group = 3; //outChannels=group when group>1
const int num_output = get<1>(GetParam());
const int kernel_depth = num_input/group;
CV_Assert_N(num_output >= group, num_output % group == 0, num_input % group == 0);
Net net;
//layer 1: dwconv
LayerParams lp;
lp.name = "dwconv";
lp.type = "Convolution";
lp.set("kernel_size", 3);
lp.set("num_output", num_output);
lp.set("pad", 0);
lp.set("group", group);
lp.set("stride", 1);
lp.set("engine", "CAFFE");
lp.set("bias_term", "true");
std::vector<int> weightsShape(4);
weightsShape[0] = num_output; // #outChannels
weightsShape[1] = kernel_depth; // #inpChannels / group
weightsShape[2] = 3; // height
weightsShape[3] = 3; // width
Mat weights(weightsShape, CV_32F, Scalar(1));
//assign weights
for (int i = 0; i < weightsShape[0]; ++i)
{
for (int j = 0; j < weightsShape[1]; ++j)
{
for (int k = 0; k < weightsShape[2]; ++k)
{
for (int l = 0; l < weightsShape[3]; ++l)
{
weights.ptr<float>(i, j, k)[l]=-1*(i+1);
}
}
}
}
lp.blobs.push_back(weights);
//assign bias
Mat bias(1, num_output, CV_32F, Scalar(1));
for (int i = 0; i < 1; ++i)
{
for (int j = 0; j < num_output; ++j)
{
bias.ptr<float>(i)[j]=j+1;
}
}
lp.blobs.push_back(bias);
net.addLayerToPrev(lp.name, lp.type, lp);
//layer 2: prelu
LayerParams lpr;
lpr.name = "dw_relu";
lpr.type = "PReLU";
Mat weightsp(1, num_output, CV_32F, Scalar(1));
//assign weights
for (int i = 0; i < 1; ++i)
{
for (int j = 0; j < num_output; ++j)
{
weightsp.ptr<float>(i)[j]=j+1;
}
}
lpr.blobs.push_back(weightsp);
net.addLayerToPrev(lpr.name, lpr.type, lpr);
int shape[] = {1, num_input, 16, 16};
Mat in_blob(4, &shape[0], CV_32FC1, Scalar(1));
net.setPreferableBackend(DNN_BACKEND_OPENCV);
net.enableWinograd(false);
net.setInput(in_blob);
Mat out = net.forward();
//assign target
std::vector<int> outShape(4);
outShape[0] = 1;
outShape[1] = num_output; // outChannels
outShape[2] = 14; // height
outShape[3] = 14; // width
Mat target(outShape, CV_32F, Scalar(1));
for (int i = 0; i < outShape[0]; ++i)
{
for (int j = 0; j < outShape[1]; ++j)
{
for (int k = 0; k < outShape[2]; ++k)
{
for (int l = 0; l < outShape[3]; ++l)
{
target.ptr<float>(i, j, k)[l]=(-9*kernel_depth*(j+1)+j+1)*(j+1);
}
}
}
}
normAssert(out, target);
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_DWconv_Prelu, Combine(Values(3, 6), Values(3, 6)));
#ifdef HAVE_INF_ENGINE
// Using Intel's Model Optimizer generate .xml and .bin files:
// ./ModelOptimizer -w /path/to/caffemodel -d /path/to/prototxt \
// -p FP32 -i -b ${batch_size} -o /path/to/output/folder
typedef testing::TestWithParam<tuple<Backend, Target> > Layer_Test_Convolution_DLDT;
TEST_P(Layer_Test_Convolution_DLDT, Accuracy)
{
const Backend backendId = get<0>(GetParam());
const Target targetId = get<1>(GetParam());
if (backendId == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && targetId == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backendId != DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && backendId != DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
throw SkipTestException("No support for async forward");
ASSERT_EQ(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, backendId);
Net netDefault = readNet(_tf("layer_convolution.caffemodel"), _tf("layer_convolution.prototxt"));
Net net = readNet(_tf("layer_convolution.xml"), _tf("layer_convolution.bin"));
Mat inp = blobFromNPY(_tf("blob.npy"));
netDefault.setInput(inp);
netDefault.setPreferableBackend(DNN_BACKEND_OPENCV);
Mat outDefault = netDefault.forward();
net.setInput(inp);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
double l1 = (targetId == DNN_TARGET_OPENCL_FP16 || targetId == DNN_TARGET_MYRIAD) ? 1.5e-3 : 1e-5;
double lInf = (targetId == DNN_TARGET_OPENCL_FP16 || targetId == DNN_TARGET_MYRIAD) ? 1.8e-2 : 1e-4;
normAssert(outDefault, out, "", l1, lInf);
std::vector<int> outLayers = net.getUnconnectedOutLayers();
ASSERT_EQ(net.getLayer(outLayers[0])->name, "output");
if (backendId == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
ASSERT_EQ(net.getLayer(outLayers[0])->type, "Convolution");
else
ASSERT_EQ(net.getLayer(outLayers[0])->type, "Result");
}
TEST_P(Layer_Test_Convolution_DLDT, setInput_uint8)
{
const Backend backendId = get<0>(GetParam());
const Target targetId = get<1>(GetParam());
if (backendId == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && targetId == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backendId != DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && backendId != DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
throw SkipTestException("No support for async forward");
ASSERT_EQ(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, backendId);
int blobSize[] = {2, 6, 75, 113};
Mat inputs[] = {Mat(4, &blobSize[0], CV_8U), Mat()};
randu(inputs[0], 0, 255);
inputs[0].convertTo(inputs[1], CV_32F);
Mat outs[2];
for (int i = 0; i < 2; ++i)
{
Net net = readNet(_tf("layer_convolution.xml"), _tf("layer_convolution.bin"));
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
net.setInput(inputs[i]);
outs[i] = net.forward();
ASSERT_EQ(outs[i].type(), CV_32F);
}
if (targetId != DNN_TARGET_MYRIAD)
normAssert(outs[0], outs[1]);
}
TEST_P(Layer_Test_Convolution_DLDT, multithreading)
{
const Backend backendId = get<0>(GetParam());
const Target targetId = get<1>(GetParam());
if (backendId == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && targetId == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER);
if (backendId != DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && backendId != DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
throw SkipTestException("No support for async forward");
ASSERT_EQ(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, backendId);
std::string xmlPath = _tf("layer_convolution.xml");
std::string binPath = _tf("layer_convolution.bin");
Net firstNet = readNet(xmlPath, binPath);
Net secondNet = readNet(xmlPath, binPath);
Mat inp = blobFromNPY(_tf("blob.npy"));
firstNet.setInput(inp);
secondNet.setInput(inp);
firstNet.setPreferableBackend(backendId);
firstNet.setPreferableTarget(targetId);
secondNet.setPreferableBackend(backendId);
secondNet.setPreferableTarget(targetId);
Mat out1, out2;
std::thread t1([&]{out1 = firstNet.forward();});
std::thread t2([&]{out2 = secondNet.forward();});
t1.join();
t2.join();
Mat ref = blobFromNPY(_tf("layer_convolution.npy"));
double l1 = (targetId == DNN_TARGET_OPENCL_FP16 || targetId == DNN_TARGET_MYRIAD) ? 1.5e-3 : 1e-5;
double lInf = (targetId == DNN_TARGET_OPENCL_FP16 || targetId == DNN_TARGET_MYRIAD) ? 1.8e-2 : 1e-4;
normAssert(out1, ref, "first thread", l1, lInf);
normAssert(out2, ref, "second thread", l1, lInf);
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_Convolution_DLDT,
dnnBackendsAndTargetsIE()
);
// 1. Create a .prototxt file with the following network:
// layer {
// type: "Input" name: "data" top: "data"
// input_param { shape { dim: 1 dim: 2 dim: 3 } }
// }
// layer {
// type: "Input" name: "second_input" top: "second_input"
// input_param { shape { dim: 1 dim: 2 dim: 3 } }
// }
// layer {
// type: "Eltwise" name: "output" top: "output"
// bottom: "data" bottom: "second_input"
// eltwise_param { operation: SUM }
// }
//
// 2. Create a .caffemodel file using Caffe:
//
// import caffe
// net = caffe.Net('/path/to/prototxt', caffe.TEST)
// net.save('/path/to/caffemodel')
//
// 3. Convert using ModelOptimizer.
typedef testing::TestWithParam<tuple<int, int, Target, std::vector<int> > > Test_DLDT_two_inputs_3dim;
TEST_P(Test_DLDT_two_inputs_3dim, as_IR)
{
int firstInpType = get<0>(GetParam());
int secondInpType = get<1>(GetParam());
Target targetId = get<2>(GetParam());
Net net = readNet(_tf("net_two_inputs.xml"), _tf("net_two_inputs.bin"));
std::vector<int> inpSize = get<3>(GetParam());
Mat firstInp(3, inpSize.data(), firstInpType);
Mat secondInp(3, inpSize.data(), secondInpType);
randu(firstInp, 0, 255);
randu(secondInp, 0, 255);
net.setInput(firstInp, "data");
net.setInput(secondInp, "second_input");
net.setPreferableTarget(targetId);
double l1 = ((targetId == DNN_TARGET_OPENCL_FP16 || targetId == DNN_TARGET_MYRIAD) &&
(firstInpType == CV_32F || secondInpType == CV_32F)) ? 0.06 : 0.0;
double lInf = ((targetId == DNN_TARGET_OPENCL_FP16 || targetId == DNN_TARGET_MYRIAD) &&
(firstInpType == CV_32F || secondInpType == CV_32F)) ? 0.23 : 0.0;
Mat out = net.forward();
Mat ref;
cv::add(firstInp, secondInp, ref, Mat(), CV_32F);
normAssert(out, ref, "", l1, lInf);
}
std::vector< std::vector<int> > list_sizes{ {1, 2, 3}, {3, 2, 1}, {5, 5, 5}, {13, 7, 11} };
INSTANTIATE_TEST_CASE_P(/*nothing*/, Test_DLDT_two_inputs_3dim, Combine(
Values(CV_8U, CV_32F), Values(CV_8U, CV_32F),
testing::ValuesIn(getAvailableTargets(DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)),
testing::ValuesIn(list_sizes)
));
class UnsupportedLayer : public Layer
{
public:
UnsupportedLayer(const LayerParams &params) : Layer(params) {}
static Ptr<Layer> create(const LayerParams& params)
{
return Ptr<Layer>(new UnsupportedLayer(params));
}
virtual bool supportBackend(int backendId) CV_OVERRIDE
{
return backendId == DNN_BACKEND_OPENCV;
}
virtual void forward(cv::InputArrayOfArrays inputs, cv::OutputArrayOfArrays outputs, cv::OutputArrayOfArrays internals) CV_OVERRIDE {}
};
typedef DNNTestLayer Test_DLDT_layers;
static void test_dldt_fused_output(Backend backend, Target target)
{
static const int kNumChannels = 3;
Net net;
{
LayerParams lp;
lp.set("kernel_size", 1);
lp.set("num_output", 3);
lp.set("bias_term", false);
lp.type = "Convolution";
lp.name = "testConv";
lp.blobs.push_back(Mat({kNumChannels, 1, 1, 1}, CV_32F, Scalar(1)));
net.addLayerToPrev(lp.name, lp.type, lp);
}
{
LayerParams lp;
lp.set("bias_term", false);
lp.type = "Scale";
lp.name = "testScale";
lp.blobs.push_back(Mat({kNumChannels}, CV_32F, Scalar(1)));
net.addLayerToPrev(lp.name, lp.type, lp);
}
{
LayerParams lp;
net.addLayerToPrev("unsupported_layer", "Unsupported", lp);
}
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
net.setInput(Mat({1, 1, 2, 3}, CV_32FC1, Scalar(1)));
net.forward();
}
TEST_P(Test_DLDT_layers, fused_output)
{
CV_DNN_REGISTER_LAYER_CLASS(Unsupported, UnsupportedLayer);
try
{
test_dldt_fused_output(backend, target);
}
catch (const std::exception& e)
{
ADD_FAILURE() << "Exception: " << e.what();
}
catch(...)
{
ADD_FAILURE() << "Unknown exception";
}
LayerFactory::unregisterLayer("Unsupported");
}
TEST_P(Test_DLDT_layers, multiple_networks)
{
Net nets[2];
for (int i = 0; i < 2; ++i)
{
nets[i].setInputsNames(std::vector<String>(1, format("input_%d", i)));
LayerParams lp;
lp.set("kernel_size", 1);
lp.set("num_output", 1);
lp.set("bias_term", false);
lp.type = "Convolution";
lp.name = format("testConv_%d", i);
lp.blobs.push_back(Mat({1, 1, 1, 1}, CV_32F, Scalar(1 + i)));
nets[i].addLayerToPrev(lp.name, lp.type, lp);
nets[i].setPreferableBackend(backend);
nets[i].setPreferableTarget(target);
nets[i].setInput(Mat({1, 1, 2, 3}, CV_32FC1, Scalar(1)));
}
Mat out_1 = nets[0].forward();
Mat out_2 = nets[1].forward();
// After the second model is initialized we try to receive an output from the first network again.
out_1 = nets[0].forward();
normAssert(2 * out_1, out_2);
}
INSTANTIATE_TEST_CASE_P(/*nothing*/, Test_DLDT_layers, dnnBackendsAndTargets());
#endif // HAVE_INF_ENGINE
// Test a custom layer.
class CustomInterpLayer CV_FINAL : public Layer
{
public:
CustomInterpLayer(const LayerParams &params) : Layer(params)
{
zoomFactor = params.get<int>("zoom_factor", 0);
outWidth = params.get<int>("width", 0);
outHeight = params.get<int>("height", 0);
}
static Ptr<Layer> create(LayerParams& params)
{
return Ptr<Layer>(new CustomInterpLayer(params));
}
virtual bool getMemoryShapes(const std::vector<std::vector<int> > &inputs,
const int requiredOutputs,
std::vector<std::vector<int> > &outputs,
std::vector<std::vector<int> > &internals) const CV_OVERRIDE
{
const int batchSize = inputs[0][0];
const int numChannels = inputs[0][1];
const int inpHeight = inputs[0][2];
const int inpWidth = inputs[0][3];
std::vector<int> outShape(4);
outShape[0] = batchSize;
outShape[1] = numChannels;
outShape[2] = outHeight != 0 ? outHeight : (inpHeight + (inpHeight - 1) * (zoomFactor - 1));
outShape[3] = outWidth != 0 ? outWidth : (inpWidth + (inpWidth - 1) * (zoomFactor - 1));
outputs.assign(1, outShape);
return false;
}
virtual void finalize(InputArrayOfArrays, OutputArrayOfArrays outputs_arr) CV_OVERRIDE
{
std::vector<Mat> outputs;
outputs_arr.getMatVector(outputs);
if (!outWidth && !outHeight)
{
outHeight = outputs[0].size[2];
outWidth = outputs[0].size[3];
}
}
// Implementation of this custom layer is based on https://github.com/cdmh/deeplab-public/blob/master/src/caffe/layers/interp_layer.cpp
void forward(InputArrayOfArrays inputs_arr, OutputArrayOfArrays outputs_arr, OutputArrayOfArrays internals_arr) CV_OVERRIDE
{
CV_TRACE_FUNCTION();
CV_TRACE_ARG_VALUE(name, "name", name.c_str());
if (inputs_arr.depth() == CV_16S)
{
forward_fallback(inputs_arr, outputs_arr, internals_arr);
return;
}
std::vector<Mat> inputs, outputs;
inputs_arr.getMatVector(inputs);
outputs_arr.getMatVector(outputs);
Mat& inp = inputs[0];
Mat& out = outputs[0];
const float* inpData = (float*)inp.data;
float* outData = (float*)out.data;
const int batchSize = inp.size[0];
const int numChannels = inp.size[1];
const int inpHeight = inp.size[2];
const int inpWidth = inp.size[3];
const float rheight = (outHeight > 1) ? static_cast<float>(inpHeight - 1) / (outHeight - 1) : 0.f;
const float rwidth = (outWidth > 1) ? static_cast<float>(inpWidth - 1) / (outWidth - 1) : 0.f;
for (int h2 = 0; h2 < outHeight; ++h2)
{
const float h1r = rheight * h2;
const int h1 = h1r;
const int h1p = (h1 < inpHeight - 1) ? 1 : 0;
const float h1lambda = h1r - h1;
const float h0lambda = 1.f - h1lambda;
for (int w2 = 0; w2 < outWidth; ++w2)
{
const float w1r = rwidth * w2;
const int w1 = w1r;
const int w1p = (w1 < inpWidth - 1) ? 1 : 0;
const float w1lambda = w1r - w1;
const float w0lambda = 1.f - w1lambda;
const float* pos1 = inpData + h1 * inpWidth + w1;
float* pos2 = outData + h2 * outWidth + w2;
for (int c = 0; c < batchSize * numChannels; ++c)
{
pos2[0] =
h0lambda * (w0lambda * pos1[0] + w1lambda * pos1[w1p]) +
h1lambda * (w0lambda * pos1[h1p * inpWidth] + w1lambda * pos1[h1p * inpWidth + w1p]);
pos1 += inpWidth * inpHeight;
pos2 += outWidth * outHeight;
}
}
}
}
private:
int outWidth, outHeight, zoomFactor;
};
TEST_P(Test_Caffe_layers, Interp)
{
#ifdef OPENCV_DNN_EXTERNAL_PROTOBUF
throw SkipTestException("Requires patched protobuf");
#else
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_EQ(2021030000)
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD, CV_TEST_TAG_DNN_SKIP_IE_NGRAPH); // exception
#endif
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && target == DNN_TARGET_MYRIAD)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_MYRIAD);
// Test a custom layer.
CV_DNN_REGISTER_LAYER_CLASS(Interp, CustomInterpLayer);
try
{
testLayerUsingCaffeModels("layer_interp", false, false);
}
catch (...)
{
LayerFactory::unregisterLayer("Interp");
throw;
}
LayerFactory::unregisterLayer("Interp");
// Test an implemented layer.
testLayerUsingCaffeModels("layer_interp", false, false);
#endif
}
INSTANTIATE_TEST_CASE_P(/*nothing*/, Test_Caffe_layers, dnnBackendsAndTargets());
TEST(Layer_Test_PoolingIndices, Accuracy)
{
Net net;
LayerParams lp;
lp.set("pool", "max");
lp.set("kernel_w", 2);
lp.set("kernel_h", 2);
lp.set("stride_w", 2);
lp.set("stride_h", 2);
lp.set("pad_w", 0);
lp.set("pad_h", 0);
lp.name = "testLayer.name"; // This test also checks that OpenCV lets use names with dots.
lp.type = "Pooling";
net.addLayerToPrev(lp.name, lp.type, lp);
Mat inp(10, 10, CV_8U);
randu(inp, 0, 255);
Mat maxValues(5, 5, CV_32F, Scalar(-1)), indices(5, 5, CV_32F, Scalar(-1));
for (int y = 0; y < 10; ++y)
{
int dstY = y / 2;
for (int x = 0; x < 10; ++x)
{
int dstX = x / 2;
uint8_t val = inp.at<uint8_t>(y, x);
if ((float)inp.at<uint8_t>(y, x) > maxValues.at<float>(dstY, dstX))
{
maxValues.at<float>(dstY, dstX) = val;
indices.at<float>(dstY, dstX) = y * 10 + x;
}
}
}
net.setPreferableBackend(DNN_BACKEND_OPENCV);
net.setInput(blobFromImage(inp));
std::vector<Mat> outputs;
net.forward(outputs, lp.name);
normAssert(maxValues, outputs[0].reshape(1, 5));
normAssert(indices, outputs[1].reshape(1, 5));
}
typedef testing::TestWithParam<tuple<Vec4i, int, tuple<Backend, Target> > > Layer_Test_ShuffleChannel;
TEST_P(Layer_Test_ShuffleChannel, Accuracy)
{
Vec4i inpShapeVec = get<0>(GetParam());
int group = get<1>(GetParam());
ASSERT_EQ(inpShapeVec[1] % group, 0);
const int groupSize = inpShapeVec[1] / group;
int backendId = get<0>(get<2>(GetParam()));
int targetId = get<1>(get<2>(GetParam()));
Net net;
LayerParams lp;
lp.set("group", group);
lp.type = "ShuffleChannel";
lp.name = "testLayer";
net.addLayerToPrev(lp.name, lp.type, lp);
const int inpShape[] = {inpShapeVec[0], inpShapeVec[1], inpShapeVec[2], inpShapeVec[3]};
Mat inp(4, inpShape, CV_32F);
randu(inp, 0, 255);
net.setInput(inp);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
double l1 = 1e-5, lInf = 1e-4;
if (targetId == DNN_TARGET_OPENCL_FP16)
{
l1 = 5e-2;
lInf = 7e-2;
}
else if (targetId == DNN_TARGET_CUDA_FP16)
{
l1 = 0.06;
lInf = 0.07;
}
for (int n = 0; n < inpShapeVec[0]; ++n)
{
for (int c = 0; c < inpShapeVec[1]; ++c)
{
Mat outChannel = getPlane(out, n, c);
Mat inpChannel = getPlane(inp, n, groupSize * (c % group) + c / group);
normAssert(outChannel, inpChannel, "", l1, lInf);
}
}
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_ShuffleChannel, Combine(
/*input shape*/ Values(Vec4i(1, 6, 5, 7), Vec4i(3, 12, 1, 4)),
/*group*/ Values(1, 2, 3, 6), dnnBackendsAndTargets(/*with IE*/ false)
));
// Check if relu is not fused to convolution if we requested it's output
TEST(Layer_Test_Convolution, relu_fusion)
{
Net net;
{
LayerParams lp;
lp.set("kernel_size", 1);
lp.set("num_output", 1);
lp.set("bias_term", false);
lp.type = "Convolution";
lp.name = "testConv";
int weightsShape[] = {1, 1, 1, 1};
Mat weights(4, &weightsShape[0], CV_32F, Scalar(1));
lp.blobs.push_back(weights);
net.addLayerToPrev(lp.name, lp.type, lp);
}
{
LayerParams lp;
lp.type = "ReLU";
lp.name = "testReLU";
net.addLayerToPrev(lp.name, lp.type, lp);
}
int sz[] = {1, 1, 2, 3};
Mat input(4, &sz[0], CV_32F);
randu(input, -1.0, -0.1);
net.setInput(input);
net.setPreferableBackend(DNN_BACKEND_OPENCV);
Mat output = net.forward("testConv");
normAssert(input, output);
}
typedef testing::TestWithParam<tuple<bool, tuple<Backend, Target> > > Layer_Test_Eltwise_unequal;
TEST_P(Layer_Test_Eltwise_unequal, accuracy_input_0_truncate)
{
bool weighted = get<0>(GetParam());
int backendId = get<0>(get<1>(GetParam()));
int targetId = get<1>(get<1>(GetParam()));
if (backendId == DNN_BACKEND_CUDA && weighted)
applyTestTag(CV_TEST_TAG_DNN_SKIP_CUDA);
Net net;
LayerParams lp;
lp.type = "Eltwise";
lp.name = "testLayer";
lp.set<std::string>("output_channels_mode", "input_0_truncate");
const int inpShapes[][4] = {{1, 4, 2, 2}, {1, 5, 2, 2}, {1, 3, 2, 2}};
const int out_channels = inpShapes[0][1];
std::vector<String> inpNames(3);
std::vector<Mat> inputs(3);
std::vector<float> weights(3, 1);
if (weighted)
{
for (int i = 0; i < inputs.size(); ++i)
weights[i] = -0.125f + i * 0.25f;
lp.set("coeff", DictValue::arrayReal<float*>(&weights[0], weights.size()));
}
int eltwiseId = net.addLayer(lp.name, lp.type, lp);
for (int i = 0; i < inputs.size(); ++i)
{
inputs[i].create(4, inpShapes[i], CV_32F);
size_t total = inputs[i].total();
for (size_t j = 0; j < total; j++)
inputs[i].ptr<float>()[j] = j + i * 100;
inpNames[i] = format("input_%d", i);
net.connect(0, i, eltwiseId, i);
}
Mat ref(4, inpShapes[0], CV_32F, Scalar(0));
net.setInputsNames(inpNames);
for (int i = 0; i < inputs.size(); ++i)
{
//std::cout << ref.reshape(1,1) << endl;
net.setInput(inputs[i], inpNames[i]);
for (size_t batchId = 0; batchId < ref.size[0]; batchId++)
{
int input_channels = inputs[i].size[1];
Range ranges[4] = { Range(batchId, batchId + 1), Range(0, std::min(out_channels, input_channels)), Range::all(), Range::all() };
Mat ref_slice = ref(ranges);
Mat input_slice = inputs[i](ranges);
ref_slice += weights[i] * input_slice;
}
}
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
normAssert(out, ref);
if (testing::Test::HasFailure())
{
std::cout << out.reshape(1,1) << endl;
std::cout << ref.reshape(1,1) << endl;
}
}
TEST_P(Layer_Test_Eltwise_unequal, accuracy_input_0)
{
bool weighted = get<0>(GetParam());
int backendId = get<0>(get<1>(GetParam()));
int targetId = get<1>(get<1>(GetParam()));
Net net;
LayerParams lp;
lp.type = "Eltwise";
lp.name = "testLayer";
lp.set<std::string>("output_channels_mode", "input_0");
if (backendId == DNN_BACKEND_CUDA && weighted)
applyTestTag(CV_TEST_TAG_DNN_SKIP_CUDA);
const int inpShapes[][4] = {{1, 4, 2, 2}, {1, 2, 2, 2}, {1, 3, 2, 2}};
const int out_channels = inpShapes[0][1];
std::vector<String> inpNames(3);
std::vector<Mat> inputs(3);
std::vector<float> weights(3, 1);
if (weighted)
{
for (int i = 0; i < inputs.size(); ++i)
weights[i] = -0.125f + i * 0.25f;
lp.set("coeff", DictValue::arrayReal<float*>(&weights[0], weights.size()));
}
int eltwiseId = net.addLayer(lp.name, lp.type, lp);
for (int i = 0; i < inputs.size(); ++i)
{
inputs[i].create(4, inpShapes[i], CV_32F);
size_t total = inputs[i].total();
for (size_t j = 0; j < total; j++)
inputs[i].ptr<float>()[j] = j + i * 100;
inpNames[i] = format("input_%d", i);
net.connect(0, i, eltwiseId, i);
}
Mat ref(4, inpShapes[0], CV_32F, Scalar(0));
net.setInputsNames(inpNames);
for (int i = 0; i < inputs.size(); ++i)
{
//std::cout << ref.reshape(1,1) << endl;
net.setInput(inputs[i], inpNames[i]);
for (size_t batchId = 0; batchId < ref.size[0]; batchId++)
{
int input_channels = inputs[i].size[1];
Range ranges[4] = { Range(batchId, batchId + 1), Range(0, std::min(out_channels, input_channels)), Range::all(), Range::all() };
Mat ref_slice = ref(ranges);
Mat input_slice = inputs[i](ranges);
ref_slice += weights[i] * input_slice;
}
}
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
normAssert(out, ref);
if (testing::Test::HasFailure())
{
std::cout << out.reshape(1,1) << endl;
std::cout << ref.reshape(1,1) << endl;
}
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_Eltwise_unequal, Combine(
testing::Bool(),
dnnBackendsAndTargets()
));
struct Layer_Test_Eltwise_bcast : testing::TestWithParam<tuple<string, int, tuple<Backend, Target>>>
{
public:
void test_bcast()
{
string op = get<0>(GetParam());
int dim = get<1>(GetParam());
tuple<Backend, Target> backend_target= get<2>(GetParam());
int backend = get<0>(backend_target);
int target = get<1>(backend_target);
if (backend == DNN_BACKEND_CUDA && dim > 4)
applyTestTag(CV_TEST_TAG_LONG);
vector<vector<int>> dim_shape_list;
get_all_arr(dim_shape_list, dim);
replace(dim_shape_list, 1, 3);
// same shape
for (int i = 0; i < dim_shape_list.size(); i++)
for (int j = 0; j < dim_shape_list.size(); j++)
run(dim_shape_list[i], dim_shape_list[j], op, backend, target);
vector<vector<int>> sub_shape_list;
vector<vector<int>> tmp;
for(int i = 1; i < dim; i++){
get_all_arr(tmp, i);
replace(tmp, 1, 3);
sub_shape_list.insert(sub_shape_list.end(), tmp.begin(), tmp.end());
}
// diff shape
for (const auto &shp1: dim_shape_list)
for (const auto &shp2: sub_shape_list)
run(shp1, shp2, op, backend, target);
// diff shape
for (const auto &shp1: sub_shape_list)
for (const auto &shp2: dim_shape_list)
run(shp1, shp2, op, backend, target);
}
private:
// give n to generate all n-D arrays with 0 or 1
static void get_all_arr(vector<vector<int>> &arr, int n)
{
int total = 1 << n;
arr.assign(total, vector<int>(n, -1));
for (int i = 0; i < total; i++)
for (int j = 0; j < n; j++)
arr[i][j] = (i >> (n - j - 1)) & 1;
}
// zero will replace all 0, one will replace all 1
static void replace(vector<vector<int>> &arr, int zero, int one)
{
for (int i = 0; i < arr.size(); i++)
for (int j = 0; j < arr[0].size(); j++)
arr[i][j] = arr[i][j] ? one : zero;
}
static void run(const vector<int> &a_shape, const vector<int> &b_shape, const String &op, const int backend, const int target)
{
Mat a = Mat::zeros((int) a_shape.size(), a_shape.data(), CV_32FC1);
Mat b = Mat::ones((int) b_shape.size(), b_shape.data(), CV_32FC1);
Net net;
LayerParams lp;
lp.type = "NaryEltwise";
lp.name = "testLayer";
lp.set("operation", op);
int id = net.addLayerToPrev(lp.name, lp.type, lp);
net.connect(0, 1, id, 1);
vector<String> inpNames(2);
inpNames[0] = "a";
inpNames[1] = "b";
net.setInputsNames(inpNames);
net.setInput(a, inpNames[0]);
net.setInput(b, inpNames[1]);
net.setPreferableBackend(backend);
net.setPreferableTarget(target);
Mat re;
ASSERT_NO_THROW(re = net.forward()); // runtime error
auto ptr_re = (float *) re.data;
for (int i = 0; i < re.total(); i++)
if (op == "sum"){
ASSERT_EQ(1, ptr_re[i]); // sum result should be 1
}
}
};
TEST_P(Layer_Test_Eltwise_bcast, brute_force)
{
test_bcast();
}
// This test is to verify whether the broadcast operations of unidirectional and bidirectional,
// as well as tensors with same and different shapes, can be forwarded correctly.
// This can ensure that the elementwise layer does not have any errors when forwarding.
//
// To test which cases the backend will fallback to the cpu, replace the fallback command like
// `return Ptr<BackendNode>();` in `initCUDA()` with `throw std::runtime_error("fallback");`
//
// To test more operators, add more ops after "sum".
// Default only "sum" is tested, because for the most cases they have the same implementation.
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_Eltwise_bcast, Combine(
Values("sum"),
Values(1, 2, 3, 4, 5),
dnnBackendsAndTargets()
));
typedef testing::TestWithParam<tuple<Backend, Target> > Layer_Test_Resize;
TEST_P(Layer_Test_Resize, change_input)
{
int backendId = get<0>(GetParam());
int targetId = get<1>(GetParam());
Net net;
LayerParams lp;
lp.type = "Resize";
lp.name = "testLayer";
lp.set("zoom_factor", 2);
lp.set("interpolation", "nearest");
net.addLayerToPrev(lp.name, lp.type, lp);
for (int i = 0; i < 2; ++i)
{
Mat inp(4 + i, 5 + i, CV_8UC3), ref;
randu(inp, 0, 255);
resize(inp, ref, Size(0, 0), 2, 2, INTER_NEAREST);
ref = blobFromImage(ref);
net.setInput(blobFromImage(inp));
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
normAssert(out, ref);
}
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_Resize, dnnBackendsAndTargets());
struct Layer_Test_Slice : public testing::TestWithParam<tuple<Backend, Target> >
{
template<int DIMS>
void test_slice(const int* inputShape, const int* begin, const int* end)
{
int backendId = get<0>(GetParam());
int targetId = get<1>(GetParam());
Mat input(DIMS, inputShape, CV_32FC1, Scalar::all(0));
for (int i = 0; i < (int)input.total(); ++i)
input.ptr<float>()[i] = (float)i;
std::vector<Range> range(DIMS);
for (int i = 0; i < DIMS; ++i)
range[i] = Range(begin[i], end[i]);
Net net;
LayerParams lp;
lp.type = "Slice";
lp.name = "testLayer";
lp.set("begin", DictValue::arrayInt<int*>((int*)&begin[0], DIMS));
lp.set("end", DictValue::arrayInt<int*>((int*)&end[0], DIMS));
net.addLayerToPrev(lp.name, lp.type, lp);
{
net.setInput(input);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
EXPECT_GT(cv::norm(out, NORM_INF), 0);
normAssert(out, input(range));
#if 0
cout << input(range).clone().reshape(1, 1) << endl;
cout << out.reshape(1, 1) << endl;
#endif
}
}
};
TEST_P(Layer_Test_Slice, slice_channels_17762)
{
const int inputShape[4] = {1, 16, 6, 8};
const int begin[] = {0, 4, 0, 0};
const int end[] = {1, 8, 6, 8};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_channels_with_batch_17762)
{
const int inputShape[4] = {4, 4, 3, 4};
const int begin[] = {0, 1, 0, 0};
const int end[] = {4, 3, 3, 4};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_channels_and_batch_17762)
{
int backend = get<0>(GetParam());
if (backend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
applyTestTag(CV_TEST_TAG_DNN_SKIP_IE_NN_BUILDER, CV_TEST_TAG_DNN_SKIP_IE_VERSION);
const int inputShape[4] = {4, 4, 3, 4};
const int begin[] = {2, 1, 0, 0};
const int end[] = {4, 3, 3, 4};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_rows)
{
const int inputShape[4] = {1, 2, 6, 4};
const int begin[] = {0, 0, 4, 0};
const int end[] = {1, 2, 6, 4};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_cols)
{
const int inputShape[4] = {1, 2, 3, 8};
const int begin[] = {0, 0, 0, 4};
const int end[] = {1, 2, 3, 8};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_complex_1_unaligned)
{
const int inputShape[4] = {1, 4, 2, 3};
const int begin[] = {0, 2, 1, 0};
const int end[] = {1, 3, 2, 2};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_complex_2_x4)
{
const int inputShape[4] = {1, 3, 2, 4};
const int begin[] = {0, 2, 1, 0};
const int end[] = {1, 3, 2, 2};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, slice_complex_3)
{
const int inputShape[4] = {1, 6, 4, 8};
const int begin[] = {0, 2, 1, 4};
const int end[] = {1, 4, 3, 8};
test_slice<4>(inputShape, begin, end);
}
TEST_P(Layer_Test_Slice, variable_input_shape)
{
int backendId = get<0>(GetParam());
int targetId = get<1>(GetParam());
int begin[] = {0, 0, 0, 0};
int end[] = {INT_MAX, INT_MAX, INT_MAX, INT_MAX};
Net net;
LayerParams lp;
lp.type = "Slice";
lp.name = "testLayer";
lp.set("begin", DictValue::arrayInt<int*>(&begin[0], 4));
lp.set("end", DictValue::arrayInt<int*>(&end[0], 4));
net.addLayerToPrev(lp.name, lp.type, lp);
for (int i = 0; i < 2; ++i)
{
Mat inp(4 + i, 5 + i, CV_8UC1);
randu(inp, 0, 255);
inp = blobFromImage(inp);
net.setInput(inp);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
normAssert(out, inp);
}
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_Slice, dnnBackendsAndTargets());
typedef testing::TestWithParam<tuple<Backend, Target> > Layer_Test_BatchNorm;
TEST_P(Layer_Test_BatchNorm, fusion)
{
// This tests reinitializes network by forwarding different batch size input.
// We check BatchNorm layer weights restoring after fusion.
int backendId = get<0>(GetParam());
int targetId = get<1>(GetParam());
const int ch = 4;
Mat mean(1, ch, CV_32F), var(1, ch, CV_32F), weights(1, ch, CV_32F);
randu(mean, 0, 1);
randu(var, 0, 1);
randu(weights, 0, 1);
Net net;
{
LayerParams lp;
lp.type = "BatchNorm";
lp.name = "bn";
lp.set("has_weight", false);
lp.set("has_bias", false);
lp.blobs.push_back(mean);
lp.blobs.push_back(var);
net.addLayerToPrev(lp.name, lp.type, lp);
}
{
LayerParams lp;
lp.type = "Scale";
lp.name = "scale";
lp.set("has_bias", false);
lp.blobs.push_back(weights);
net.addLayerToPrev(lp.name, lp.type, lp);
}
Mat inp(4, 5, CV_32FC(ch));
randu(inp, 0, 1);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
net.setInput(blobFromImage(inp));
Mat ref = net.forward();
net.setInput(blobFromImages(std::vector<Mat>(2, inp)));
Mat out = net.forward();
for (int i = 0; i < 2; ++i)
{
std::vector<Range> ranges(4, Range::all());
ranges[0].start = i;
ranges[0].end = i + 1;
normAssert(out(ranges), ref);
}
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Test_BatchNorm, dnnBackendsAndTargets());
class TestLayerFusion : public DNNTestLayer {
public:
static void makeDefaultTestConvolutionLayer(LayerParams& convParams, int in_channels, int num_filters, bool bias_term)
{
const int kernel_h = 3, kernel_w = 3;
const int pad_h = kernel_h / 2, pad_w = kernel_w / 2;
convParams.set("kernel_h", kernel_h);
convParams.set("kernel_w", kernel_w);
convParams.set("pad_h", pad_h);
convParams.set("pad_w", pad_w);
convParams.set("num_output", num_filters);
convParams.set("bias_term", bias_term);
convParams.type = "Convolution";
convParams.name = "convolution";
float conv_init_magnitude = 1.0f / in_channels / kernel_h / kernel_w;
int weightsShape[] = {num_filters, in_channels, kernel_h, kernel_w};
Mat weights(4, &weightsShape[0], CV_32F);
randu(weights, -conv_init_magnitude, conv_init_magnitude);
convParams.blobs.push_back(weights);
if (bias_term)
{
Mat bias(1, num_filters, CV_32F);
randu(bias, -1.0f, 1.0f);
convParams.blobs.push_back(bias);
}
}
static void makeDefaultTestActivationLayer(LayerParams& activationParams, const std::string& type, int in_channels)
{
activationParams.type = type;
activationParams.name = "activation";
if (activationParams.type == "ReLU")
activationParams.set("negative_slope", 0.1f);
else if (activationParams.type == "Power")
{
activationParams.set("power", 2.0f);
activationParams.set("scale", 0.5f);
activationParams.set("shift", 0.3f);
}
else if (activationParams.type == "ReLU6")
{
activationParams.set("min_value", -1.0f);
activationParams.set("max_value", 1.0f);
}
else if (activationParams.type == "ChannelsPReLU")
{
Mat scales(1, in_channels, CV_32F);
randu(scales, -1.0f, 1.0f);
activationParams.blobs.push_back(scales);
}
else if (activationParams.type == "Exp")
{
activationParams.set("base", -1.0f);
activationParams.set("scale", 0.3f);
activationParams.set("shift", 0.6f);
}
}
static void makeDefaultTestEltwiseLayer(LayerParams& eltwiseParams, const std::string& op, bool withCoefficients)
{
eltwiseParams.type = "Eltwise";
eltwiseParams.name = "eltwise";
eltwiseParams.set("operation", op);
if (withCoefficients)
{
float coeff[] = {0.3f, 0.5f};
eltwiseParams.set("coeff", DictValue::arrayReal<float*>(coeff, 2));
}
}
static void test(Mat& input, Net& net, Backend backendId, Target targetId, std::vector<int> expectedFusedLayers = std::vector<int>(), double l1 = 0.0, double lInf = 0.0)
{
DNNTestLayer::checkBackend(backendId, targetId);
net.enableFusion(false);
net.setPreferableBackend(DNN_BACKEND_OPENCV);
net.setPreferableTarget(DNN_TARGET_CPU);
net.setInput(input);
Mat outputReference = net.forward().clone();
std::vector<double> refTimings;
net.getPerfProfile(refTimings);
for (int i = 0; i < refTimings.size(); i++)
{
CV_Assert(refTimings[i] != 0.0);
}
net.enableFusion(true);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
net.setInput(input);
Mat outputTest = net.forward().clone();
std::vector<double> testTimings;
net.getPerfProfile(testTimings);
for (int i = 0; i < testTimings.size(); i++)
{
if(std::find(expectedFusedLayers.begin(), expectedFusedLayers.end(), i + 1) != expectedFusedLayers.end())
{
EXPECT_EQ(testTimings[i], 0.0);
}
else
{
EXPECT_NE(testTimings[i], 0.0);
}
}
// double ref_max_value, ref_min_value;
// minMaxLoc(outputReference.reshape(1, 1), &ref_min_value, &ref_max_value);
// std::cout << "reference range: " << ref_min_value << ' ' << ref_max_value << std::endl;
double default_l1, default_lInf;
DNNTestLayer::getDefaultThresholds(backendId, targetId, &default_l1, &default_lInf);
if (l1 == 0.0)
l1 = default_l1;
if (lInf == 0.0)
lInf = default_lInf;
normAssert(outputReference, outputTest, "", l1, lInf);
}
static testing::internal::ParamGenerator<std::string> eltwiseOpList()
{
// TODO: automate list generation
return Values("sum", "max", "min", "prod", "div");
}
static testing::internal::ParamGenerator<std::string> activationLayersList()
{
// TODO: automate list generation
return Values("ReLU", "ReLU6", "ChannelsPReLU", "TanH", "Swish", "Mish", "Sigmoid", "ELU", "AbsVal", "BNLL", "Power", "Exp");
}
static testing::internal::ParamGenerator<tuple<Backend, Target> > dnnBackendsAndTargetsForFusionTests()
{
return dnnBackendsAndTargets(/* withInferenceEngine = */ false,
/* obsolete_withHalide = */ false,
/* withCpuOCV = */ true,
/* withVkCom = */ false,
/* withCUDA = */ true,
/* withNgraph = */false); // OCV OpenCL + OCV CPU + CUDA
}
};
typedef TestWithParam<tuple<bool, std::string, tuple<Backend, Target> > > ConvolutionActivationFusion;
TEST_P(ConvolutionActivationFusion, Accuracy)
{
// input
// |
// -----------------------
// | convolution |
// -----------------------
// |
// -----------------------
// | activation |
// -----------------------
// |
// output
const int batch_size = 2, in_channels = 16;
const int in_height = 16, in_width = 16;
int inputShape[] = {batch_size, in_channels, in_height, in_width};
Mat input(4, &inputShape[0], CV_32F);
randu(input, 1.0f, 2.0f);
bool bias_term = get<0>(GetParam());
LayerParams convParams;
TestLayerFusion::makeDefaultTestConvolutionLayer(convParams, in_channels, in_channels, bias_term);
std::string actType = get<1>(GetParam());
LayerParams activationParams;
TestLayerFusion::makeDefaultTestActivationLayer(activationParams, actType, in_channels);
Backend backendId = get<0>(get<2>(GetParam()));
Target targetId = get<1>(get<2>(GetParam()));
Net net;
int convId = net.addLayer(convParams.name, convParams.type, convParams);
int activId = net.addLayerToPrev(activationParams.name, activationParams.type, activationParams);
net.connect(0, 0, convId, 0);
std::vector<int> expectedFusedLayers;
if (backendId == DNN_BACKEND_OPENCV)
{
if (targetId == DNN_TARGET_CPU || targetId == DNN_TARGET_CPU_FP16)
expectedFusedLayers.push_back(activId); // all activations are fused
else if (targetId == DNN_TARGET_OPENCL || targetId == DNN_TARGET_OPENCL_FP16)
{
if (actType == "ReLU" || actType == "ChannelsPReLU" || actType == "ReLU6" || actType == "TanH" /*|| actType == "Power"*/)
expectedFusedLayers.push_back(activId);
}
}
else if (backendId == DNN_BACKEND_CUDA)
{
if (actType == "ReLU" || actType == "ReLU6" || actType == "TanH" || actType == "Swish" ||
actType == "Mish" || actType == "Sigmoid" || actType == "Power")
expectedFusedLayers.push_back(activId);
}
TestLayerFusion::test(input, net, backendId, targetId, expectedFusedLayers);
}
INSTANTIATE_TEST_CASE_P(TestLayerFusion, ConvolutionActivationFusion, Combine(
/* bias */ testing::Bool(),
/* activation */ TestLayerFusion::activationLayersList(),
TestLayerFusion::dnnBackendsAndTargetsForFusionTests()
));
typedef TestWithParam<tuple<bool, std::string, bool, tuple<Backend, Target> > > ConvolutionEltwiseFusion;
TEST_P(ConvolutionEltwiseFusion, Accuracy)
{
// input
// |
// -------------------------------
// | |
// | ---------------
// | | convolution |
// | ---------------
// | |
// | ---------------- |
// --------| eltwise op |-------
// ----------------
// |
// output
const int batch_size = 2, in_channels = 16;
const int in_height = 16, in_width = 16;
int inputShape[] = {batch_size, in_channels, in_height, in_width};
Mat input(4, &inputShape[0], CV_32F);
randu(input, 1.0f, 2.0f); // avoid small values to test eltwise div
bool bias_term = get<0>(GetParam());
LayerParams convParams;
TestLayerFusion::makeDefaultTestConvolutionLayer(convParams, in_channels, in_channels, bias_term);
std::string eltwiseOp = get<1>(GetParam());
bool weightedEltwise = get<2>(GetParam());
if (eltwiseOp != "sum" && weightedEltwise)
throw SkipTestException("weighted eltwise not supported");
LayerParams eltwiseParams;
TestLayerFusion::makeDefaultTestEltwiseLayer(eltwiseParams, eltwiseOp, weightedEltwise);
Net net;
int convId = net.addLayer(convParams.name, convParams.type, convParams);
int eltwiseId = net.addLayer(eltwiseParams.name, eltwiseParams.type, eltwiseParams);
net.connect(0, 0, convId, 0);
net.connect(convId, 0, eltwiseId, 0);
net.connect(0, 0, eltwiseId, 1);
Backend backendId = get<0>(get<3>(GetParam()));
Target targetId = get<1>(get<3>(GetParam()));
std::vector<int> expectedFusedLayers;
if (backendId == DNN_BACKEND_CUDA && eltwiseOp == "sum" && !weightedEltwise)
expectedFusedLayers.push_back(eltwiseId);
TestLayerFusion::test(input, net, backendId, targetId, expectedFusedLayers);
}
INSTANTIATE_TEST_CASE_P(TestLayerFusion, ConvolutionEltwiseFusion, Combine(
/* bias */ testing::Bool(),
/* eltwise op */ TestLayerFusion::eltwiseOpList(),
/* eltwise weighted */ testing::Bool(),
TestLayerFusion::dnnBackendsAndTargetsForFusionTests()
));
typedef TestWithParam<tuple<bool, std::string, bool, std::string, tuple<Backend, Target> > > ConvolutionEltwiseActivationFusion;
TEST_P(ConvolutionEltwiseActivationFusion, Accuracy)
{
// input
// |
// -------------------------------
// | |
// | ---------------
// | | convolution |
// | ---------------
// | |
// | ---------------- |
// --------| eltwise op |-------
// ----------------
// |
// ----------------
// | activation |
// ----------------
// |
// output
const int batch_size = 2, in_channels = 16;
const int in_height = 16, in_width = 16;
int inputShape[] = {batch_size, in_channels, in_height, in_width};
Mat input(4, &inputShape[0], CV_32F);
randu(input, 1.0f, 2.0f); // avoid small values to test eltwise div
bool bias_term = get<0>(GetParam());
LayerParams convParams;
TestLayerFusion::makeDefaultTestConvolutionLayer(convParams, in_channels, in_channels, bias_term);
std::string eltwiseOp = get<1>(GetParam());
bool weightedEltwise = get<2>(GetParam());
if (eltwiseOp != "sum" && weightedEltwise)
throw SkipTestException("weighted eltwise not supported");
LayerParams eltwiseParams;
TestLayerFusion::makeDefaultTestEltwiseLayer(eltwiseParams, eltwiseOp, weightedEltwise);
std::string actType = get<3>(GetParam());
LayerParams activationParams;
TestLayerFusion::makeDefaultTestActivationLayer(activationParams, actType, in_channels);
Backend backendId = get<0>(get<4>(GetParam()));
Target targetId = get<1>(get<4>(GetParam()));
Net net;
int convId = net.addLayer(convParams.name, convParams.type, convParams);
int eltwiseId = net.addLayer(eltwiseParams.name, eltwiseParams.type, eltwiseParams);
int activId = net.addLayer(activationParams.name, activationParams.type, activationParams);
net.connect(0, 0, convId, 0);
net.connect(convId, 0, eltwiseId, 0);
net.connect(0, 0, eltwiseId, 1);
net.connect(eltwiseId, 0, activId, 0);
std::vector<int> expectedFusedLayers;
if (backendId == DNN_BACKEND_OPENCV)
{
if (targetId == DNN_TARGET_CPU || targetId == DNN_TARGET_CPU_FP16)
expectedFusedLayers.push_back(activId); // activation is fused with eltwise layer
else if (targetId == DNN_TARGET_OPENCL || targetId == DNN_TARGET_OPENCL_FP16)
{
if (eltwiseOp == "sum" && !weightedEltwise &&
(actType == "ReLU" || actType == "ChannelsPReLU" /*|| actType == "Power"*/)
)
{
expectedFusedLayers.push_back(eltwiseId);
expectedFusedLayers.push_back(activId);
}
}
}
else if(backendId == DNN_BACKEND_CUDA)
{
if (eltwiseOp == "sum" && !weightedEltwise)
{
expectedFusedLayers.push_back(eltwiseId);
if (actType == "ReLU" || actType == "ReLU6" || actType == "TanH" || actType == "Swish" ||
actType == "Mish" || actType == "Sigmoid" || actType == "Power")
expectedFusedLayers.push_back(activId);
}
}
TestLayerFusion::test(input, net, backendId, targetId, expectedFusedLayers);
}
INSTANTIATE_TEST_CASE_P(TestLayerFusion, ConvolutionEltwiseActivationFusion, Combine(
/* bias */ testing::Bool(),
/* eltwise op */ TestLayerFusion::eltwiseOpList(),
/* eltwise weighted */ testing::Bool(),
/* activation */ TestLayerFusion::activationLayersList(),
TestLayerFusion::dnnBackendsAndTargetsForFusionTests()
));
typedef TestWithParam<tuple<bool, std::string, std::string, bool, tuple<Backend, Target> > > ConvolutionActivationEltwiseFusion;
TEST_P(ConvolutionActivationEltwiseFusion, Accuracy)
{
// input
// |
// -------------------------------
// | |
// | ----------------
// | | convolution |
// | ----------------
// | |
// | ----------------
// | | activation |
// | ----------------
// | |
// | ---------------- |
// --------| eltwise sum |-------
// ----------------
// |
const int batch_size = 2, in_channels = 16;
const int in_height = 16, in_width = 16;
int inputShape[] = {batch_size, in_channels, in_height, in_width};
Mat input(4, &inputShape[0], CV_32F);
randu(input, 1.0f, 2.0f); // avoid small values to test eltwise div
bool bias_term = get<0>(GetParam());
LayerParams convParams;
TestLayerFusion::makeDefaultTestConvolutionLayer(convParams, in_channels, in_channels, bias_term);
std::string actType = get<1>(GetParam());
LayerParams activationParams;
TestLayerFusion::makeDefaultTestActivationLayer(activationParams, actType, in_channels);
std::string eltwiseOp = get<2>(GetParam());
bool weightedEltwise = get<3>(GetParam());
if (eltwiseOp != "sum" && weightedEltwise)
throw SkipTestException("weighted eltwise not supported");
LayerParams eltwiseParams;
TestLayerFusion::makeDefaultTestEltwiseLayer(eltwiseParams, eltwiseOp, weightedEltwise);
Backend backendId = get<0>(get<4>(GetParam()));
Target targetId = get<1>(get<4>(GetParam()));
Net net;
int convId = net.addLayer(convParams.name, convParams.type, convParams);
int activId = net.addLayer(activationParams.name, activationParams.type, activationParams);
int eltwiseId = net.addLayer(eltwiseParams.name, eltwiseParams.type, eltwiseParams);
net.connect(0, 0, convId, 0);
net.connect(convId, 0, activId, 0);
net.connect(activId, 0, eltwiseId, 0);
net.connect(0, 0, eltwiseId, 1);
std::vector<int> expectedFusedLayers;
if (backendId == DNN_BACKEND_OPENCV)
{
if (targetId == DNN_TARGET_CPU || targetId == DNN_TARGET_CPU_FP16)
expectedFusedLayers.push_back(activId); // activation fused with convolution
else if (targetId == DNN_TARGET_OPENCL || targetId == DNN_TARGET_OPENCL_FP16)
{
if (actType == "ReLU" || actType == "ChannelsPReLU" || actType == "ReLU6" || actType == "TanH" /*|| actType == "Power"*/)
expectedFusedLayers.push_back(activId); // activation fused with convolution
}
}
else if(backendId == DNN_BACKEND_CUDA)
{
if (actType == "ReLU" || actType == "ReLU6" || actType == "TanH" || actType == "Swish" ||
actType == "Mish" || actType == "Sigmoid" || actType == "Power")
{
expectedFusedLayers.push_back(activId);
if (eltwiseOp == "sum" && !weightedEltwise)
expectedFusedLayers.push_back(eltwiseId);
}
}
TestLayerFusion::test(input, net, backendId, targetId, expectedFusedLayers);
}
INSTANTIATE_TEST_CASE_P(TestLayerFusion, ConvolutionActivationEltwiseFusion, Combine(
/* bias */ testing::Bool(),
/* activation */ TestLayerFusion::activationLayersList(),
/* eltwise op */ TestLayerFusion::eltwiseOpList(),
/* eltwise weighted */ testing::Bool(),
TestLayerFusion::dnnBackendsAndTargetsForFusionTests()
));
}} // namespace