// // Copyright © 2019-2024 Arm Ltd and Contributors. All rights reserved. // SPDX-License-Identifier: MIT // #include "TransposeConvolution2dLayer.hpp" #include "LayerCloneBase.hpp" #include #include #include using namespace armnnUtils; namespace armnn { TransposeConvolution2dLayer::TransposeConvolution2dLayer(const TransposeConvolution2dDescriptor& param, const char* name) : LayerWithParameters(1, 1, LayerType::TransposeConvolution2d, param, name) { } std::unique_ptr TransposeConvolution2dLayer::CreateWorkload(const IWorkloadFactory& factory) const { if (!m_Weight) { throw armnn::NullPointerException("TransposeConvolution2dLayer: Weights data should not be null."); } TransposeConvolution2dQueueDescriptor descriptor; descriptor.m_Weight = m_Weight.get(); if (m_Param.m_BiasEnabled) { if (!m_Bias) { throw armnn::NullPointerException("TransposeConvolution2dLayer: Bias data should not be null."); } descriptor.m_Bias = m_Bias.get(); } SetAdditionalInfo(descriptor); return factory.CreateWorkload(LayerType::TransposeConvolution2d, descriptor, PrepInfoAndDesc(descriptor)); } TransposeConvolution2dLayer* TransposeConvolution2dLayer::Clone(Graph& graph) const { auto layer = CloneBase(graph, m_Param, GetName()); layer->m_Weight = m_Weight ? m_Weight : nullptr; if (layer->m_Param.m_BiasEnabled) { layer->m_Bias = m_Bias ? m_Bias : nullptr; } return std::move(layer); } std::vector TransposeConvolution2dLayer::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& kernelShape = inputShapes[1]; if (inputShape.GetNumDimensions() != 4) { throw armnn::Exception("Transpose convolutions will always have 4D input"); } DataLayoutIndexed dataLayoutIndex(m_Param.m_DataLayout); const unsigned int batches = inputShape[0]; const unsigned int wInput = inputShape[dataLayoutIndex.GetWidthIndex()]; const unsigned int hInput = inputShape[dataLayoutIndex.GetHeightIndex()]; const unsigned int wKernel = kernelShape[dataLayoutIndex.GetWidthIndex()]; const unsigned int hKernel = kernelShape[dataLayoutIndex.GetHeightIndex()]; unsigned int wPadding = m_Param.m_PadLeft + m_Param.m_PadRight; unsigned int hPadding = m_Param.m_PadTop + m_Param.m_PadBottom; unsigned int wOutput = (wInput - 1) * m_Param.m_StrideX + wKernel - wPadding; unsigned int hOutput = (hInput - 1) * m_Param.m_StrideY + hKernel - hPadding; unsigned int cOutput = kernelShape[0]; TensorShape tensorShape = m_Param.m_DataLayout == armnn::DataLayout::NHWC ? TensorShape( { batches, hOutput, wOutput, cOutput } ) : TensorShape( { batches, cOutput, hOutput, wOutput }); return std::vector({ tensorShape }); } void TransposeConvolution2dLayer::ValidateTensorShapesFromInputs() { VerifyLayerConnections(1, CHECK_LOCATION()); const TensorShape& outputShape = GetOutputSlot(0).GetTensorInfo().GetShape(); VerifyShapeInferenceType(outputShape, m_ShapeInferenceMethod); if (!m_Weight) { throw armnn::LayerValidationException("TransposeConvolution2dLayer: Weight data cannot be null."); } std::vector expectedOutputShape; std::vector outputShapeGivenAsInput; expectedOutputShape = InferOutputShapes({GetInputSlot(0).GetTensorInfo().GetShape(), m_Weight->GetTensorInfo().GetShape() }); if (expectedOutputShape.size() != 1) { throw armnn::LayerValidationException("expectedOutputShape' size is " + std::to_string(expectedOutputShape.size()) + " - should be \"1\"."); } // If output_shape was specified then use it rather than calculate an inferred output shape. if (m_Param.m_OutputShapeEnabled) { TensorShape shapeAsTensorShape(static_cast(m_Param.m_OutputShape.size()), m_Param.m_OutputShape.data()); outputShapeGivenAsInput.push_back(shapeAsTensorShape); if (outputShapeGivenAsInput.size() != 1) { throw armnn::LayerValidationException("outputShapeGivenAsInput' size is " + std::to_string(outputShapeGivenAsInput.size()) + " - should be \"1\"."); } if (expectedOutputShape != outputShapeGivenAsInput) { throw armnn::LayerValidationException("TransposeConvolution2dLayer: " "output calculated by InferOutputShapes and the output given " "as an input parameter to the layer are not matching"); } } ValidateAndCopyShape(outputShape, expectedOutputShape[0], m_ShapeInferenceMethod, "TransposeConvolution2dLayer"); } Layer::ImmutableConstantTensors TransposeConvolution2dLayer::GetConstantTensorsByRef() const { // For API stability DO NOT ALTER order and add new members to the end of vector return {m_Weight, m_Bias}; } void TransposeConvolution2dLayer::ExecuteStrategy(IStrategy& strategy) const { ManagedConstTensorHandle managedWeight(m_Weight); std::vector constTensors { { managedWeight.GetTensorInfo(), managedWeight.Map() } }; ManagedConstTensorHandle managedBias(m_Bias); if (GetParameters().m_BiasEnabled) { constTensors.emplace_back(ConstTensor(managedBias.GetTensorInfo(), managedBias.Map())); } strategy.ExecuteStrategy(this, GetParameters(), constTensors, GetName()); } } // namespace armnn