// 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 "../precomp.hpp" #include "../op_inf_engine.hpp" #include "../ie_ngraph.hpp" #include "layers_common.hpp" #include // for std::max & std::min namespace cv { namespace dnn { class ScatterLayerImpl CV_FINAL : public ScatterLayer { public: enum class REDUCTION { NONE = 1, ADD, MUL, MAX, MIN } reduction; ScatterLayerImpl(const LayerParams& params) { setParamsFrom(params); axis = params.get("axis", 0); String reduction_name = toLowerCase(params.get("reduction", "none")); if (reduction_name == "none") reduction = REDUCTION::NONE; else if (reduction_name == "add") reduction = REDUCTION::ADD; else if (reduction_name == "mul") reduction = REDUCTION::MUL; else if (reduction_name == "max") reduction = REDUCTION::MAX; else if (reduction_name == "min") reduction = REDUCTION::MIN; else CV_Error(cv::Error::StsBadArg, "Unkown reduction \"" + reduction_name + "\""); } virtual bool supportBackend(int backendId) CV_OVERRIDE { return backendId == DNN_BACKEND_OPENCV || (backendId == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH && reduction == REDUCTION::NONE); } virtual bool getMemoryShapes(const std::vector &inputs, const int requiredOutputs, std::vector &outputs, std::vector &internals) const CV_OVERRIDE { CV_CheckEQ(inputs.size(), 3ull, "Scatter: require three inputs."); CV_CheckEQ(inputs[0].size(), inputs[1].size(), "Scatter: input data should have the same ndim with indices."); CV_CheckEQ(inputs[0].size(), inputs[2].size(), "Scatter: input data should have the same ndim with updates."); for (size_t i = 0; i < inputs[0].size(); i++) { CV_CheckGE(inputs[0][i], inputs[1][i], "Scatter: each dim of input data should be greater than (or equal to) indices'."); CV_CheckEQ(inputs[1][i], inputs[2][i], "Scatter: each dim of indices should be equal to updates'."); } outputs.assign(1, inputs[0]); return false; } 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_16F) { forward_fallback(inputs_arr, outputs_arr, internals_arr); return; } std::vector inputs, outputs; inputs_arr.getMatVector(inputs); outputs_arr.getMatVector(outputs); const Mat& data = inputs[0]; const Mat& indices = inputs[1]; const Mat& updates = inputs[2]; Mat& out = outputs[0]; typeDispatch(outputs[0].type(), data, indices, updates, out); } template void forward_impl(const Functor &reduce_operation, const Mat &input_mat, const Mat &indices_mat, const Mat &updates_mat, Mat &output_mat) { input_mat.copyTo(output_mat); const int ndims = input_mat.dims; const auto &input_mat_shape = shape(input_mat); std::vector input_mat_step(ndims); const auto &indices_mat_shape = shape(indices_mat); std::vector indices_mat_step(ndims); for (int i = 0; i < ndims; i++) { input_mat_step[i] = static_cast(input_mat.step.p[i] / sizeof(T)); indices_mat_step[i] = static_cast(indices_mat.step.p[i] / sizeof(T)); } auto fn = [&](const Range &r) { size_t input_offset = 0, indices_offset = 0; int indices_index, index; size_t axis_offset, tmp_index, j_index; for (int i = r.start; i < r.end; i++) { const T* indices = indices_mat.ptr(); const T* updates = updates_mat.ptr(); T* output = output_mat.ptr(); input_offset = 0; indices_offset = 0; indices_index = i; axis_offset = 0; for (int j = ndims - 1; j >= 0; j--) { tmp_index = indices_index / indices_mat_shape[j]; j_index = (size_t)(indices_index - tmp_index * indices_mat_shape[j]); input_offset += j_index * input_mat_step[j]; indices_offset += j_index * indices_mat_step[j]; indices_index = tmp_index; if (j == axis) { axis_offset = j_index * input_mat_step[j]; } } // get index and overwrite current indices index = static_cast(*(indices + indices_offset)); index = (index + input_mat_shape[axis]) % input_mat_shape[axis]; CV_Assert(index < input_mat_shape[axis] && index >= 0); input_offset = input_offset - axis_offset + index * input_mat_step[axis]; updates += indices_offset; output += input_offset; *output = reduce_operation(*output, *updates); } }; size_t total = indices_mat.total(); double nstripes = (size_t)total * ndims * (1 / 1024.0); parallel_for_(Range(0, total), fn, nstripes); } template inline void typeDispatch(const int type, Args&&... args) { switch (type) { case CV_8U: reductionDispatch(std::forward(args)...); break; case CV_32S: reductionDispatch(std::forward(args)...); break; case CV_32F: reductionDispatch(std::forward(args)...); break; default: CV_Error(cv::Error::BadDepth, "Unsupported type."); }; } template inline void reductionDispatch(Args&&... args) { switch (reduction) { case REDUCTION::NONE: { auto rd = [](const T& a, const T& b) { return b; }; // a from input data, b from updates forward_impl(rd, std::forward(args)...); break; } case REDUCTION::ADD: { auto rd = [](const T& a, const T& b) { return a + b; }; forward_impl(rd, std::forward(args)...); break; } case REDUCTION::MUL: { auto rd = [](const T& a, const T& b) { return a * b; }; forward_impl(rd, std::forward(args)...); break; } case REDUCTION::MAX: { auto rd = [](const T& a, const T& b) { return std::max(a, b); }; forward_impl(rd, std::forward(args)...); break; } case REDUCTION::MIN: { auto rd = [](const T& a, const T& b) { return std::min(a, b); }; forward_impl(rd, std::forward(args)...); break; } default: CV_Error(Error::StsBadArg, "Unsupported reduction."); }; } #ifdef HAVE_DNN_NGRAPH virtual Ptr initNgraph(const std::vector >& inputs, const std::vector >& nodes) CV_OVERRIDE { int32_t indicesBoundValue = nodes[0].dynamicCast()->node.get_shape()[axis]; auto indicesBound = std::make_shared(ov::element::i32, ov::Shape{}, &indicesBoundValue); auto indices = std::make_shared(nodes[1].dynamicCast()->node, ov::element::i32); auto indicesNonNegative = std::make_shared( std::make_shared(indices, indicesBound), indicesBound); auto axis_node = std::make_shared(ov::element::i32, ov::Shape{}, &axis); auto scatterElements = std::make_shared( nodes[0].dynamicCast()->node, indicesNonNegative, nodes[2].dynamicCast()->node, axis_node); return Ptr(new InfEngineNgraphNode(scatterElements)); } #endif // HAVE_DNN_NGRAPH private: // Attributes int axis; }; Ptr ScatterLayer::create(const LayerParams& params) { return makePtr(params); } }} // namespace cv::dnn