// // Copyright © 2017-2024 Arm Ltd and Contributors. All rights reserved. // SPDX-License-Identifier: MIT // #include "DepthwiseConvolution2dLayer.hpp" #include "LayerCloneBase.hpp" #include #include #include #include #include using namespace armnnUtils; namespace armnn { DepthwiseConvolution2dLayer::DepthwiseConvolution2dLayer(const DepthwiseConvolution2dDescriptor& param, const char* name) : LayerWithParameters(param.GetNumInputs(), 1, LayerType::DepthwiseConvolution2d, param, name) { } void DepthwiseConvolution2dLayer::SerializeLayerParameters(ParameterStringifyFunction& fn) const { const std::vector& inputShapes = { GetInputSlot(0).GetTensorInfo().GetShape(), GetInputSlot(1).GetTensorInfo().GetShape() }; const TensorShape filterShape = inputShapes[1]; unsigned int inputChannels = filterShape[1]; unsigned int filterWidth = filterShape[3]; unsigned int filterHeight = filterShape[2]; unsigned int depthMultiplier = filterShape[0]; fn("FilterWidth",std::to_string(filterWidth)); fn("FilterHeight",std::to_string(filterHeight)); fn("DepthMultiplier",std::to_string(depthMultiplier)); fn("InputChannels",std::to_string(inputChannels)); LayerWithParameters::SerializeLayerParameters(fn); } std::unique_ptr DepthwiseConvolution2dLayer::CreateWorkload(const IWorkloadFactory& factory) const { DepthwiseConvolution2dQueueDescriptor descriptor; SetAdditionalInfo(descriptor); return factory.CreateWorkload(LayerType::DepthwiseConvolution2d, descriptor, PrepInfoAndDesc(descriptor)); } DepthwiseConvolution2dLayer* DepthwiseConvolution2dLayer::Clone(Graph& graph) const { auto layer = CloneBase(graph, m_Param, GetName()); return std::move(layer); } std::vector DepthwiseConvolution2dLayer::InferOutputShapes(const std::vector& inputShapes) const { if (inputShapes.size() != 2) { throw armnn::Exception("inputShapes' size is \"" + std::to_string(inputShapes.size()) + "\" - should be \"2\"."); } const TensorShape& inputShape = inputShapes[0]; const TensorShape& filterShape = inputShapes[1]; if (inputShape.GetNumDimensions() != 4) { throw armnn::Exception("Convolutions will always have 4D input."); } if (m_Param.m_StrideX == 0) { throw armnn::Exception("m_StrideX cannot be 0."); } if (m_Param.m_StrideY == 0) { throw armnn::Exception("m_StrideY cannot be 0."); } DataLayoutIndexed dataLayoutIndex(m_Param.m_DataLayout); unsigned int inputBatchSize = inputShape[0]; unsigned int inputHeight = inputShape[dataLayoutIndex.GetHeightIndex()]; unsigned int inputWidth = inputShape[dataLayoutIndex.GetWidthIndex()]; // Expected filter shape: [ 1, H, W, O ] - This shape does NOT depend on the data layout // Namely: [ 1, filter height, filter width, output channels ] unsigned int filterHeight = filterShape[1]; unsigned int dilatedFilterHeight = filterHeight + (m_Param.m_DilationY - 1) * (filterHeight - 1); unsigned int readHeight = (inputHeight + m_Param.m_PadTop + m_Param.m_PadBottom) - dilatedFilterHeight; unsigned int outputHeight = 1 + (readHeight / m_Param.m_StrideY); unsigned int filterWidth = filterShape[2]; unsigned int dilatedFilterWidth = filterWidth + (m_Param.m_DilationX - 1) * (filterWidth - 1); unsigned int readWidth = (inputWidth + m_Param.m_PadLeft + m_Param.m_PadRight) - dilatedFilterWidth; unsigned int outputWidth = 1 + (readWidth / m_Param.m_StrideX); unsigned int outputChannels = filterShape[3]; unsigned int outputBatchSize = inputBatchSize; TensorShape tensorShape = m_Param.m_DataLayout == armnn::DataLayout::NHWC ? TensorShape{ outputBatchSize, outputHeight, outputWidth, outputChannels } : TensorShape{ outputBatchSize, outputChannels, outputHeight, outputWidth }; return std::vector{ tensorShape }; } void DepthwiseConvolution2dLayer::ValidateTensorShapesFromInputs() { VerifyLayerConnections(m_Param.GetNumInputs(), CHECK_LOCATION()); const TensorShape& outputShape = GetOutputSlot(0).GetTensorInfo().GetShape(); VerifyShapeInferenceType(outputShape, m_ShapeInferenceMethod); if (!GetInputSlot(1).GetConnection()) { throw armnn::LayerValidationException("DepthwiseConvolution2dLayer: Weights data should not be null."); } auto inferredShapes = InferOutputShapes({ GetInputSlot(0).GetTensorInfo().GetShape(), GetInputSlot(1).GetTensorInfo().GetShape() }); if (inferredShapes.size() != 1) { throw armnn::LayerValidationException("inferredShapes has " + std::to_string(inferredShapes.size()) + " elements - should only have 1."); } ValidateAndCopyShape(outputShape, inferredShapes[0], m_ShapeInferenceMethod, "DepthwiseConvolution2dLayer"); } Layer::ImmutableConstantTensors DepthwiseConvolution2dLayer::GetConstantTensorsByRef() const { Layer::ImmutableConstantTensors tensors = GetConnectedConstantAsInputTensors(); return tensors; } void DepthwiseConvolution2dLayer::ExecuteStrategy(IStrategy& strategy) const { strategy.ExecuteStrategy(this, GetParameters(), {}, GetName()); } } // namespace armnn