opencv/modules/dnn/perf/perf_layer.cpp
rogday ed69bcae2d
Merge pull request #21865 from rogday:nary_eltwise_layers
Reimplementation of Element-wise layers with broadcasting support

* init

* semi-working initial version

* add small_vector

* wip

* remove smallvec

* add nary function

* replace auto with Mat in lambda expr used in transform

* uncomment asserts

* autobuffer shape_buf & step_buf

* fix a missing bracket

* fixed a missing addLayer in parseElementWise

* solve one-dimensional broadcast

* remove pre_broadcast_transform for the case of two constants; fix missing constBlobsExtraInfo when addConstant is called

* one autobuffer for step & shape

* temporal fix for the missing original dimension information

* fix parseUnsqueeze when it gets a 1d tensor constant

* support sum/mean/min/max with only one input

* reuse old code to handle cases of two non-constant inputs

* add condition to handle div & mul of two non-constant inputs

* use || instead of or

* remove trainling spaces

* enlarge buf in binary_forward to contain other buffer

* use autobuffer in nary_forward

* generate data randomly and add more cases for perf

* add op and, or & xor

* update perf_dnn

* remove some comments

* remove legacy; add two ONNX conformance tests in filter

* move from cpu_denylist to all_denylist

* adjust parsing for inputs>=2

Co-authored-by: fengyuentau <yuantao.feng@opencv.org.cn>
2022-07-19 06:14:05 +03:00

246 lines
6.0 KiB
C++

// This file is part of OpenCV project.
// It is subject to the license terms in the LICENSE file found in the top-level directory
// of this distribution and at http://opencv.org/license.html.
#include "perf_precomp.hpp"
#include <opencv2/dnn/shape_utils.hpp>
namespace opencv_test {
struct Layer_Slice : public TestBaseWithParam<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 & 4095);
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);
// warmup
{
net.setInput(input);
net.setPreferableBackend(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
EXPECT_GT(cv::norm(out, NORM_INF), 0);
#if 0
//normAssert(out, input(range));
cout << input(range).clone().reshape(1, 1) << endl;
cout << out.reshape(1, 1) << endl;
#endif
}
TEST_CYCLE()
{
Mat res = net.forward();
}
SANITY_CHECK_NOTHING();
}
};
struct Layer_NaryEltwise : public TestBaseWithParam<tuple<Backend, Target> >
{
void test_layer(const std::vector<int>& a_shape, const std::vector<int>& b_shape, const String op, bool isRef = false)
{
int backendId = get<0>(GetParam());
int targetId = get<1>(GetParam());
Mat a(a_shape, CV_32FC1);
Mat b(b_shape, CV_32FC1);
Scalar mean = 0.f;
Scalar std = 1.f;
randn(a, mean, std);
randn(b, mean, std);
Net net;
LayerParams lp;
if (isRef)
lp.type = "Eltwise";
else
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);
// warmup
{
std::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(backendId);
net.setPreferableTarget(targetId);
Mat out = net.forward();
}
TEST_CYCLE()
{
Mat res = net.forward();
}
SANITY_CHECK_NOTHING();
}
int N = 8;
int C = 256;
int H = 128;
int W = 100;
};
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_add)
{
test_layer({N, C, H, W}, {N, C, H, W}, "add");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_div)
{
test_layer({N, C, H, W}, {N, C, H, W}, "div");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_ref_div)
{
test_layer({N, C, H, W}, {N, C, H, W}, "div", true);
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_equal)
{
test_layer({N, C, H, W}, {N, C, H, W}, "equal");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_greater)
{
test_layer({N, C, H, W}, {N, C, H, W}, "greater");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_less)
{
test_layer({N, C, H, W}, {N, C, H, W}, "less");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_max)
{
test_layer({N, C, H, W}, {N, C, H, W}, "max");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_ref_max)
{
test_layer({N, C, H, W}, {N, C, H, W}, "max", true);
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_mean)
{
test_layer({N, C, H, W}, {N, C, H, W}, "mean");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_min)
{
test_layer({N, C, H, W}, {N, C, H, W}, "min");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_ref_min)
{
test_layer({N, C, H, W}, {N, C, H, W}, "min", true);
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_mul)
{
test_layer({N, C, H, W}, {N, C, H, W}, "mul");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_ref_mul)
{
test_layer({N, C, H, W}, {N, C, H, W}, "prod", true);
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_pow)
{
test_layer({N, C, H, W}, {N, C, H, W}, "pow");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_sub)
{
test_layer({N, C, H, W}, {N, C, H, W}, "sub");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_sum)
{
test_layer({N, C, H, W}, {N, C, H, W}, "sum");
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_NCHW_ref_sum)
{
test_layer({N, C, H, W}, {N, C, H, W}, "sum", true);
}
PERF_TEST_P_(Layer_NaryEltwise, NCHW_C_sum)
{
test_layer({N, C, H, W}, {C, 1, 1}, "sum");
}
PERF_TEST_P_(Layer_NaryEltwise, NHWC_C)
{
test_layer({N, H, W, C}, {1, C}, "sum");
}
PERF_TEST_P_(Layer_Slice, YOLOv4_tiny_1)
{
const int inputShape[4] = {1, 64, 104, 104};
const int begin[] = {0, 32, 0, 0};
const int end[] = {1, 64, 104, 104};
test_slice<4>(inputShape, begin, end);
}
PERF_TEST_P_(Layer_Slice, YOLOv4_tiny_2)
{
const int inputShape[4] = {1, 128, 52, 52};
const int begin[] = {0, 64, 0, 0};
const int end[] = {1, 128, 52, 52};
test_slice<4>(inputShape, begin, end);
}
PERF_TEST_P_(Layer_Slice, YOLOv4_tiny_3)
{
const int inputShape[4] = {1, 256, 26, 26};
const int begin[] = {0, 128, 0, 0};
const int end[] = {1, 256, 26, 26};
test_slice<4>(inputShape, begin, end);
}
PERF_TEST_P_(Layer_Slice, FastNeuralStyle_eccv16)
{
const int inputShape[4] = {1, 128, 80, 100};
const int begin[] = {0, 0, 2, 2};
const int end[] = {1, 128, 76, 96};
test_slice<4>(inputShape, begin, end);
}
INSTANTIATE_TEST_CASE_P(/**/, Layer_Slice, dnnBackendsAndTargets(false, false));
INSTANTIATE_TEST_CASE_P(/**/, Layer_NaryEltwise, testing::Values(std::make_tuple(DNN_BACKEND_OPENCV, DNN_TARGET_CPU)));
} // namespace