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9390c56831
[G-API] Fix problems with 1D cv::Mat as graph output * Fix issues with 1D cv::Mat * Fix cv::Mat::create * Fix standalone build * Add test on 1d mat * Fix warning * Add additional condition * Add more tests
622 lines
24 KiB
C++
622 lines
24 KiB
C++
#ifndef OPENCV_GAPI_PIPELINE_MODELING_TOOL_PIPELINE_BUILDER_HPP
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#define OPENCV_GAPI_PIPELINE_MODELING_TOOL_PIPELINE_BUILDER_HPP
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#include <map>
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#include <opencv2/gapi/infer.hpp> // cv::gapi::GNetPackage
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#include <opencv2/gapi/streaming/cap.hpp> // cv::gapi::wip::IStreamSource
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#include <opencv2/gapi/infer/ie.hpp> // cv::gapi::ie::Params
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#include <opencv2/gapi/gcommon.hpp> // cv::gapi::GCompileArgs
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#include <opencv2/gapi/cpu/gcpukernel.hpp> // GAPI_OCV_KERNEL
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#include <opencv2/gapi/gkernel.hpp> // G_API_OP
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#include "pipeline.hpp"
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#include "utils.hpp"
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struct Edge {
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struct P {
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std::string name;
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size_t port;
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};
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P src;
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P dst;
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};
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struct CallParams {
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std::string name;
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size_t call_every_nth;
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};
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struct CallNode {
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using F = std::function<void(const cv::GProtoArgs&, cv::GProtoArgs&)>;
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CallParams params;
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F run;
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};
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struct DataNode {
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cv::optional<cv::GProtoArg> arg;
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};
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struct Node {
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using Ptr = std::shared_ptr<Node>;
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using WPtr = std::weak_ptr<Node>;
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using Kind = cv::util::variant<CallNode, DataNode>;
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std::vector<Node::WPtr> in_nodes;
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std::vector<Node::Ptr> out_nodes;
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Kind kind;
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};
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struct SubGraphCall {
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G_API_OP(GSubGraph,
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<cv::GMat(cv::GMat, cv::GComputation, cv::GCompileArgs, size_t)>,
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"custom.subgraph") {
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static cv::GMatDesc outMeta(const cv::GMatDesc& in,
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cv::GComputation comp,
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cv::GCompileArgs compile_args,
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const size_t call_every_nth) {
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GAPI_Assert(call_every_nth > 0);
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auto out_metas =
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comp.compile(in, std::move(compile_args)).outMetas();
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GAPI_Assert(out_metas.size() == 1u);
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GAPI_Assert(cv::util::holds_alternative<cv::GMatDesc>(out_metas[0]));
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return cv::util::get<cv::GMatDesc>(out_metas[0]);
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}
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};
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struct SubGraphState {
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cv::Mat last_result;
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cv::GCompiled cc;
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int call_counter = 0;
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};
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GAPI_OCV_KERNEL_ST(SubGraphImpl, GSubGraph, SubGraphState) {
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static void setup(const cv::GMatDesc& in,
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cv::GComputation comp,
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cv::GCompileArgs compile_args,
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const size_t /*call_every_nth*/,
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std::shared_ptr<SubGraphState>& state,
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const cv::GCompileArgs& /*args*/) {
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state.reset(new SubGraphState{});
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state->cc = comp.compile(in, std::move(compile_args));
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auto out_desc =
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cv::util::get<cv::GMatDesc>(state->cc.outMetas()[0]);
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utils::createNDMat(state->last_result,
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out_desc.dims,
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out_desc.depth);
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}
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static void run(const cv::Mat& in,
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cv::GComputation /*comp*/,
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cv::GCompileArgs /*compile_args*/,
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const size_t call_every_nth,
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cv::Mat& out,
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SubGraphState& state) {
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// NB: Make a call on the first iteration and skip the furthers.
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if (state.call_counter == 0) {
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state.cc(in, state.last_result);
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}
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state.last_result.copyTo(out);
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state.call_counter = (state.call_counter + 1) % call_every_nth;
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}
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};
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void operator()(const cv::GProtoArgs& inputs, cv::GProtoArgs& outputs);
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size_t numInputs() const { return 1; }
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size_t numOutputs() const { return 1; }
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cv::GComputation comp;
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cv::GCompileArgs compile_args;
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size_t call_every_nth;
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};
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void SubGraphCall::operator()(const cv::GProtoArgs& inputs,
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cv::GProtoArgs& outputs) {
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GAPI_Assert(inputs.size() == 1u);
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GAPI_Assert(cv::util::holds_alternative<cv::GMat>(inputs[0]));
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GAPI_Assert(outputs.empty());
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auto in = cv::util::get<cv::GMat>(inputs[0]);
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outputs.emplace_back(GSubGraph::on(in, comp, compile_args, call_every_nth));
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}
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struct DummyCall {
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G_API_OP(GDummy,
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<cv::GMat(cv::GMat, double, OutputDescr)>,
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"custom.dummy") {
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static cv::GMatDesc outMeta(const cv::GMatDesc& /* in */,
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double /* time */,
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const OutputDescr& output) {
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if (output.dims.size() == 2) {
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return cv::GMatDesc(output.precision,
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1,
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// NB: Dims[H, W] -> Size(W, H)
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cv::Size(output.dims[1], output.dims[0]));
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}
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return cv::GMatDesc(output.precision, output.dims);
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}
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};
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struct DummyState {
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cv::Mat mat;
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};
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// NB: Generate random mat once and then
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// copy to dst buffer on every iteration.
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GAPI_OCV_KERNEL_ST(GCPUDummy, GDummy, DummyState) {
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static void setup(const cv::GMatDesc& /*in*/,
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double /*time*/,
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const OutputDescr& output,
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std::shared_ptr<DummyState>& state,
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const cv::GCompileArgs& /*args*/) {
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state.reset(new DummyState{});
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utils::createNDMat(state->mat, output.dims, output.precision);
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utils::generateRandom(state->mat);
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}
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static void run(const cv::Mat& /*in_mat*/,
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double time,
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const OutputDescr& /*output*/,
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cv::Mat& out_mat,
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DummyState& state) {
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using namespace std::chrono;
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double total = 0;
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auto start = high_resolution_clock::now();
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state.mat.copyTo(out_mat);
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while (total < time) {
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total = duration_cast<duration<double, std::milli>>(
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high_resolution_clock::now() - start).count();
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}
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}
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};
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void operator()(const cv::GProtoArgs& inputs, cv::GProtoArgs& outputs);
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size_t numInputs() const { return 1; }
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size_t numOutputs() const { return 1; }
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double time;
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OutputDescr output;
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};
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void DummyCall::operator()(const cv::GProtoArgs& inputs,
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cv::GProtoArgs& outputs) {
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GAPI_Assert(inputs.size() == 1u);
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GAPI_Assert(cv::util::holds_alternative<cv::GMat>(inputs[0]));
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GAPI_Assert(outputs.empty());
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auto in = cv::util::get<cv::GMat>(inputs[0]);
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outputs.emplace_back(GDummy::on(in, time, output));
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}
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struct InferCall {
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void operator()(const cv::GProtoArgs& inputs, cv::GProtoArgs& outputs);
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size_t numInputs() const { return input_layers.size(); }
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size_t numOutputs() const { return output_layers.size(); }
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std::string tag;
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std::vector<std::string> input_layers;
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std::vector<std::string> output_layers;
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};
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void InferCall::operator()(const cv::GProtoArgs& inputs,
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cv::GProtoArgs& outputs) {
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GAPI_Assert(inputs.size() == input_layers.size());
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GAPI_Assert(outputs.empty());
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cv::GInferInputs g_inputs;
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// TODO: Add an opportunity not specify input/output layers in case
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// there is only single layer.
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for (size_t i = 0; i < inputs.size(); ++i) {
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// TODO: Support GFrame as well.
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GAPI_Assert(cv::util::holds_alternative<cv::GMat>(inputs[i]));
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auto in = cv::util::get<cv::GMat>(inputs[i]);
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g_inputs[input_layers[i]] = in;
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}
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auto g_outputs = cv::gapi::infer<cv::gapi::Generic>(tag, g_inputs);
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for (size_t i = 0; i < output_layers.size(); ++i) {
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outputs.emplace_back(g_outputs.at(output_layers[i]));
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}
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}
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struct SourceCall {
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void operator()(const cv::GProtoArgs& inputs, cv::GProtoArgs& outputs);
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size_t numInputs() const { return 0; }
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size_t numOutputs() const { return 1; }
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};
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void SourceCall::operator()(const cv::GProtoArgs& inputs,
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cv::GProtoArgs& outputs) {
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GAPI_Assert(inputs.empty());
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GAPI_Assert(outputs.empty());
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// NB: Since NV12 isn't exposed source always produce GMat.
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outputs.emplace_back(cv::GMat());
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}
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struct LoadPath {
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std::string xml;
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std::string bin;
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};
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struct ImportPath {
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std::string blob;
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};
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using ModelPath = cv::util::variant<ImportPath, LoadPath>;
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struct DummyParams {
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double time;
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OutputDescr output;
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};
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struct InferParams {
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std::string name;
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ModelPath path;
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std::string device;
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std::vector<std::string> input_layers;
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std::vector<std::string> output_layers;
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std::map<std::string, std::string> config;
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};
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class PipelineBuilder {
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public:
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PipelineBuilder();
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void addDummy(const CallParams& call_params,
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const DummyParams& dummy_params);
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void addInfer(const CallParams& call_params,
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const InferParams& infer_params);
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void setSource(const std::string& name,
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std::shared_ptr<DummySource> src);
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void addEdge(const Edge& edge);
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void setMode(PLMode mode);
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void setDumpFilePath(const std::string& dump);
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void setQueueCapacity(const size_t qc);
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void setName(const std::string& name);
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Pipeline::Ptr build();
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private:
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template <typename CallT>
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void addCall(const CallParams& call_params,
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CallT&& call);
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Pipeline::Ptr construct();
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template <typename K, typename V>
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using M = std::unordered_map<K, V>;
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struct State {
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struct NodeEdges {
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std::vector<Edge> input_edges;
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std::vector<Edge> output_edges;
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};
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M<std::string, Node::Ptr> calls_map;
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std::vector<Node::Ptr> all_calls;
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cv::gapi::GNetPackage networks;
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cv::gapi::GKernelPackage kernels;
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cv::GCompileArgs compile_args;
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cv::gapi::wip::IStreamSource::Ptr src;
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PLMode mode = PLMode::STREAMING;
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std::string name;
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};
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std::unique_ptr<State> m_state;
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};
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PipelineBuilder::PipelineBuilder() : m_state(new State{}) { };
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void PipelineBuilder::addDummy(const CallParams& call_params,
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const DummyParams& dummy_params) {
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m_state->kernels.include<DummyCall::GCPUDummy>();
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addCall(call_params,
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DummyCall{dummy_params.time, dummy_params.output});
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}
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template <typename CallT>
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void PipelineBuilder::addCall(const CallParams& call_params,
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CallT&& call) {
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size_t num_inputs = call.numInputs();
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size_t num_outputs = call.numOutputs();
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Node::Ptr call_node(new Node{{},{},Node::Kind{CallNode{call_params,
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std::move(call)}}});
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// NB: Create placeholders for inputs.
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call_node->in_nodes.resize(num_inputs);
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// NB: Create outputs with empty data.
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for (size_t i = 0; i < num_outputs; ++i) {
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call_node->out_nodes.emplace_back(new Node{{call_node},
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{},
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Node::Kind{DataNode{}}});
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}
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auto it = m_state->calls_map.find(call_params.name);
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if (it != m_state->calls_map.end()) {
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throw std::logic_error("Node: " + call_params.name + " already exists!");
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}
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m_state->calls_map.emplace(call_params.name, call_node);
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m_state->all_calls.emplace_back(call_node);
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}
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void PipelineBuilder::addInfer(const CallParams& call_params,
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const InferParams& infer_params) {
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// NB: No default ctor for Params.
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std::unique_ptr<cv::gapi::ie::Params<cv::gapi::Generic>> pp;
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if (cv::util::holds_alternative<LoadPath>(infer_params.path)) {
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auto load_path = cv::util::get<LoadPath>(infer_params.path);
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pp.reset(new cv::gapi::ie::Params<cv::gapi::Generic>(call_params.name,
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load_path.xml,
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load_path.bin,
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infer_params.device));
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} else {
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GAPI_Assert(cv::util::holds_alternative<ImportPath>(infer_params.path));
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auto import_path = cv::util::get<ImportPath>(infer_params.path);
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pp.reset(new cv::gapi::ie::Params<cv::gapi::Generic>(call_params.name,
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import_path.blob,
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infer_params.device));
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}
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pp->pluginConfig(infer_params.config);
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m_state->networks += cv::gapi::networks(*pp);
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addCall(call_params,
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InferCall{call_params.name,
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infer_params.input_layers,
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infer_params.output_layers});
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}
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void PipelineBuilder::addEdge(const Edge& edge) {
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const auto& src_it = m_state->calls_map.find(edge.src.name);
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if (src_it == m_state->calls_map.end()) {
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throw std::logic_error("Failed to find node: " + edge.src.name);
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}
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auto src_node = src_it->second;
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if (src_node->out_nodes.size() <= edge.src.port) {
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throw std::logic_error("Failed to access node: " + edge.src.name +
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" by out port: " + std::to_string(edge.src.port));
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}
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auto dst_it = m_state->calls_map.find(edge.dst.name);
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if (dst_it == m_state->calls_map.end()) {
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throw std::logic_error("Failed to find node: " + edge.dst.name);
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}
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auto dst_node = dst_it->second;
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if (dst_node->in_nodes.size() <= edge.dst.port) {
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throw std::logic_error("Failed to access node: " + edge.dst.name +
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" by in port: " + std::to_string(edge.dst.port));
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}
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auto out_data = src_node->out_nodes[edge.src.port];
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auto& in_data = dst_node->in_nodes[edge.dst.port];
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// NB: in_data != nullptr.
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if (!in_data.expired()) {
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throw std::logic_error("Node: " + edge.dst.name +
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" already connected by in port: " +
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std::to_string(edge.dst.port));
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}
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dst_node->in_nodes[edge.dst.port] = out_data;
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out_data->out_nodes.push_back(dst_node);
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}
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void PipelineBuilder::setSource(const std::string& name,
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std::shared_ptr<DummySource> src) {
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GAPI_Assert(!m_state->src && "Only single source pipelines are supported!");
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m_state->src = src;
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addCall(CallParams{name, 1u/*call_every_nth*/}, SourceCall{});
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}
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void PipelineBuilder::setMode(PLMode mode) {
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m_state->mode = mode;
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}
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void PipelineBuilder::setDumpFilePath(const std::string& dump) {
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m_state->compile_args.emplace_back(cv::graph_dump_path{dump});
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}
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void PipelineBuilder::setQueueCapacity(const size_t qc) {
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m_state->compile_args.emplace_back(cv::gapi::streaming::queue_capacity{qc});
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}
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void PipelineBuilder::setName(const std::string& name) {
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m_state->name = name;
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}
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static bool visit(Node::Ptr node,
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std::vector<Node::Ptr>& sorted,
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std::unordered_map<Node::Ptr, int>& visited) {
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if (!node) {
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throw std::logic_error("Found null node");
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}
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visited[node] = 1;
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for (auto in : node->in_nodes) {
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auto in_node = in.lock();
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if (visited[in_node] == 0) {
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if (visit(in_node, sorted, visited)) {
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return true;
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}
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} else if (visited[in_node] == 1) {
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return true;
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}
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}
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visited[node] = 2;
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sorted.push_back(node);
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return false;
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}
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static cv::optional<std::vector<Node::Ptr>>
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toposort(const std::vector<Node::Ptr> nodes) {
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std::vector<Node::Ptr> sorted;
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std::unordered_map<Node::Ptr, int> visited;
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for (auto n : nodes) {
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if (visit(n, sorted, visited)) {
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return cv::optional<std::vector<Node::Ptr>>{};
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}
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}
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return cv::util::make_optional(sorted);
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}
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Pipeline::Ptr PipelineBuilder::construct() {
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// NB: Unlike G-API, pipeline_builder_tool graph always starts with CALL node
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// (not data) that produce datas, so the call node which doesn't have
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// inputs is considered as "producer" node.
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//
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// Graph always starts with CALL node and ends with DATA node.
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// Graph example: [source] -> (source:0) -> [PP] -> (PP:0)
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//
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// The algorithm is quite simple:
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// 0. Verify that every call input node exists (connected).
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// 1. Sort all nodes by visiting only call nodes,
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// since there is no data nodes that's not connected with any call node,
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// it's guarantee that every node will be visited.
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// 2. Fillter call nodes.
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// 3. Go through every call node.
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// FIXME: Add toposort in case user passed nodes
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// in arbitrary order which is unlikely happened.
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// 4. Extract proto input from every input node
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// 5. Run call and get outputs
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// 6. If call node doesn't have inputs it means that it's "producer" node,
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// so collect all outputs to graph_inputs vector.
|
|
// 7. Assign proto outputs to output data nodes,
|
|
// so the next calls can use them as inputs.
|
|
cv::GProtoArgs graph_inputs;
|
|
cv::GProtoArgs graph_outputs;
|
|
// 0. Verify that every call input node exists (connected).
|
|
for (auto call_node : m_state->all_calls) {
|
|
for (size_t i = 0; i < call_node->in_nodes.size(); ++i) {
|
|
const auto& in_data_node = call_node->in_nodes[i];
|
|
// NB: in_data_node == nullptr.
|
|
if (in_data_node.expired()) {
|
|
const auto& call = cv::util::get<CallNode>(call_node->kind);
|
|
throw std::logic_error(
|
|
"Node: " + call.params.name + " in Pipeline: " + m_state->name +
|
|
" has dangling input by in port: " + std::to_string(i));
|
|
}
|
|
}
|
|
}
|
|
// (0) Sort all nodes;
|
|
auto has_sorted = toposort(m_state->all_calls);
|
|
if (!has_sorted) {
|
|
throw std::logic_error(
|
|
"Pipeline: " + m_state->name + " has cyclic dependencies") ;
|
|
}
|
|
auto& sorted = has_sorted.value();
|
|
// (1). Fillter call nodes.
|
|
std::vector<Node::Ptr> sorted_calls;
|
|
for (auto n : sorted) {
|
|
if (cv::util::holds_alternative<CallNode>(n->kind)) {
|
|
sorted_calls.push_back(n);
|
|
}
|
|
}
|
|
|
|
m_state->kernels.include<SubGraphCall::SubGraphImpl>();
|
|
m_state->compile_args.emplace_back(m_state->networks);
|
|
m_state->compile_args.emplace_back(m_state->kernels);
|
|
|
|
// (2). Go through every call node.
|
|
for (auto call_node : sorted_calls) {
|
|
auto& call = cv::util::get<CallNode>(call_node->kind);
|
|
cv::GProtoArgs outputs;
|
|
cv::GProtoArgs inputs;
|
|
for (size_t i = 0; i < call_node->in_nodes.size(); ++i) {
|
|
auto in_node = call_node->in_nodes.at(i);
|
|
auto in_data = cv::util::get<DataNode>(in_node.lock()->kind);
|
|
if (!in_data.arg.has_value()) {
|
|
throw std::logic_error("data hasn't been provided");
|
|
}
|
|
// (3). Extract proto input from every input node.
|
|
inputs.push_back(in_data.arg.value());
|
|
}
|
|
// NB: If node shouldn't be called on each iterations,
|
|
// it should be wrapped into subgraph which is able to skip calling.
|
|
if (call.params.call_every_nth != 1u) {
|
|
// FIXME: Limitation of the subgraph operation (<GMat(GMat)>).
|
|
// G-API doesn't support dynamic number of inputs/outputs.
|
|
if (inputs.size() > 1u) {
|
|
throw std::logic_error(
|
|
"skip_frame_nth is supported only for single input subgraphs\n"
|
|
"Current subgraph has " + std::to_string(inputs.size()) + " inputs");
|
|
}
|
|
|
|
if (outputs.size() > 1u) {
|
|
throw std::logic_error(
|
|
"skip_frame_nth is supported only for single output subgraphs\n"
|
|
"Current subgraph has " + std::to_string(inputs.size()) + " outputs");
|
|
}
|
|
// FIXME: Should be generalized.
|
|
// Now every subgraph contains only single node
|
|
// which has single input/output.
|
|
GAPI_Assert(cv::util::holds_alternative<cv::GMat>(inputs[0]));
|
|
cv::GProtoArgs subgr_inputs{cv::GProtoArg{cv::GMat()}};
|
|
cv::GProtoArgs subgr_outputs;
|
|
call.run(subgr_inputs, subgr_outputs);
|
|
auto comp = cv::GComputation(cv::GProtoInputArgs{subgr_inputs},
|
|
cv::GProtoOutputArgs{subgr_outputs});
|
|
call = CallNode{CallParams{call.params.name, 1u/*call_every_nth*/},
|
|
SubGraphCall{std::move(comp),
|
|
m_state->compile_args,
|
|
call.params.call_every_nth}};
|
|
}
|
|
// (4). Run call and get outputs.
|
|
call.run(inputs, outputs);
|
|
// (5) If call node doesn't have inputs
|
|
// it means that it's input producer node (Source).
|
|
if (call_node->in_nodes.empty()) {
|
|
for (auto out : outputs) {
|
|
graph_inputs.push_back(out);
|
|
}
|
|
}
|
|
// (6). Assign proto outputs to output data nodes,
|
|
// so the next calls can use them as inputs.
|
|
GAPI_Assert(outputs.size() == call_node->out_nodes.size());
|
|
for (size_t i = 0; i < outputs.size(); ++i) {
|
|
auto out_node = call_node->out_nodes[i];
|
|
auto& out_data = cv::util::get<DataNode>(out_node->kind);
|
|
out_data.arg = cv::util::make_optional(outputs[i]);
|
|
if (out_node->out_nodes.empty()) {
|
|
graph_outputs.push_back(out_data.arg.value());
|
|
}
|
|
}
|
|
}
|
|
|
|
if (m_state->mode == PLMode::STREAMING) {
|
|
GAPI_Assert(graph_inputs.size() == 1);
|
|
GAPI_Assert(cv::util::holds_alternative<cv::GMat>(graph_inputs[0]));
|
|
// FIXME: Handle GFrame when NV12 comes.
|
|
const auto& graph_input = cv::util::get<cv::GMat>(graph_inputs[0]);
|
|
// NB: In case streaming mode need to expose timestamp in order to
|
|
// calculate performance metrics.
|
|
graph_outputs.emplace_back(
|
|
cv::gapi::streaming::timestamp(graph_input).strip());
|
|
|
|
return std::make_shared<StreamingPipeline>(std::move(m_state->name),
|
|
cv::GComputation(
|
|
cv::GProtoInputArgs{graph_inputs},
|
|
cv::GProtoOutputArgs{graph_outputs}),
|
|
std::move(m_state->src),
|
|
std::move(m_state->compile_args),
|
|
graph_outputs.size());
|
|
}
|
|
GAPI_Assert(m_state->mode == PLMode::REGULAR);
|
|
return std::make_shared<RegularPipeline>(std::move(m_state->name),
|
|
cv::GComputation(
|
|
cv::GProtoInputArgs{graph_inputs},
|
|
cv::GProtoOutputArgs{graph_outputs}),
|
|
std::move(m_state->src),
|
|
std::move(m_state->compile_args),
|
|
graph_outputs.size());
|
|
}
|
|
|
|
Pipeline::Ptr PipelineBuilder::build() {
|
|
auto pipeline = construct();
|
|
m_state.reset(new State{});
|
|
return pipeline;
|
|
}
|
|
|
|
#endif // OPENCV_GAPI_PIPELINE_MODELING_TOOL_PIPELINE_BUILDER_HPP
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