ArmNN
 20.08
DepthwiseConvolution2dLayer.cpp
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1 //
2 // Copyright © 2017 Arm Ltd and Contributors. All rights reserved.
3 // SPDX-License-Identifier: MIT
4 //
5 
7 #include "LayerCloneBase.hpp"
8 
9 #include <armnn/TypesUtils.hpp>
10 
12 
15 
16 #include <string>
17 
18 using namespace armnnUtils;
19 
20 namespace armnn
21 {
22 
24  const char* name)
26 {
27 }
28 
30 {
31  const std::vector<TensorShape>& inputShapes =
32  {
34  m_Weight->GetTensorInfo().GetShape()
35  };
36  const TensorShape filterShape = inputShapes[1];
37  DataLayoutIndexed dataLayoutIndex(m_Param.m_DataLayout);
38  unsigned int inputChannels = filterShape[1];
39  unsigned int filterWidth = filterShape[3];
40  unsigned int filterHeight = filterShape[2];
41  unsigned int depthMultiplier = filterShape[0];
42 
43  fn("FilterWidth",std::to_string(filterWidth));
44  fn("FilterHeight",std::to_string(filterHeight));
45  fn("DepthMultiplier",std::to_string(depthMultiplier));
46  fn("InputChannels",std::to_string(inputChannels));
47 
49 }
50 
51 std::unique_ptr<IWorkload> DepthwiseConvolution2dLayer::CreateWorkload(const IWorkloadFactory& factory) const
52 {
53  // on this level constant data should not be released..
54  ARMNN_ASSERT_MSG(m_Weight != nullptr, "DepthwiseConvolution2dLayer: Weights data should not be null.");
55 
57 
58  descriptor.m_Weight = m_Weight.get();
59 
61  {
62  ARMNN_ASSERT_MSG(m_Bias != nullptr, "DepthwiseConvolution2dLayer: Bias data should not be null.");
63  descriptor.m_Bias = m_Bias.get();
64  }
65  return factory.CreateDepthwiseConvolution2d(descriptor, PrepInfoAndDesc(descriptor));
66 }
67 
69 {
70  auto layer = CloneBase<DepthwiseConvolution2dLayer>(graph, m_Param, GetName());
71  layer->m_Weight = m_Weight ? std::make_unique<ScopedCpuTensorHandle>(*m_Weight) : nullptr;
72 
73  if (layer->m_Param.m_BiasEnabled)
74  {
75  layer->m_Bias = m_Bias ? std::make_unique<ScopedCpuTensorHandle>(*m_Bias) : nullptr;
76  }
77 
78  return std::move(layer);
79 }
80 
81 std::vector<TensorShape>
82 DepthwiseConvolution2dLayer::InferOutputShapes(const std::vector<TensorShape>& inputShapes) const
83 {
84  ARMNN_ASSERT(inputShapes.size() == 2);
85  const TensorShape& inputShape = inputShapes[0];
86  const TensorShape& filterShape = inputShapes[1];
87 
88  ARMNN_ASSERT_MSG(inputShape.GetNumDimensions() == 4, "Convolutions will always have 4D input.");
89 
90  DataLayoutIndexed dataLayoutIndex(m_Param.m_DataLayout);
91 
92  unsigned int inputBatchSize = inputShape[0];
93  unsigned int inputHeight = inputShape[dataLayoutIndex.GetHeightIndex()];
94  unsigned int inputWidth = inputShape[dataLayoutIndex.GetWidthIndex()];
95  unsigned int inputChannels = inputShape[dataLayoutIndex.GetChannelsIndex()];
96 
97  // Expected filter shape: [ M, I, H, W ] - This shape does NOT depend on the data layout
98  // Namely: [ depth multiplier, input channels, filter height, filter width ]
99  // Output channels = input channels * depthMultiplier
100  unsigned int depthMultiplier = filterShape[0];
101 
102  unsigned int filterHeight = filterShape[2];
103  unsigned int dilatedFilterHeight = filterHeight + (m_Param.m_DilationY - 1) * (filterHeight - 1);
104  unsigned int readHeight = (inputHeight + m_Param.m_PadTop + m_Param.m_PadBottom) - dilatedFilterHeight;
105  unsigned int outputHeight = 1 + (readHeight / m_Param.m_StrideY);
106 
107  unsigned int filterWidth = filterShape[3];
108  unsigned int dilatedFilterWidth = filterWidth + (m_Param.m_DilationX - 1) * (filterWidth - 1);
109  unsigned int readWidth = (inputWidth + m_Param.m_PadLeft + m_Param.m_PadRight) - dilatedFilterWidth;
110  unsigned int outputWidth = 1 + (readWidth / m_Param.m_StrideX);
111 
112  unsigned int outputChannels = inputChannels * depthMultiplier;
113  unsigned int outputBatchSize = inputBatchSize;
114 
116  TensorShape{ outputBatchSize, outputHeight, outputWidth, outputChannels } :
117  TensorShape{ outputBatchSize, outputChannels, outputHeight, outputWidth };
118 
119  return std::vector<TensorShape>{ tensorShape };
120 }
121 
123 {
125 
126  const TensorShape& outputShape = GetOutputSlot(0).GetTensorInfo().GetShape();
127 
129 
130  // on this level constant data should not be released..
131  ARMNN_ASSERT_MSG(m_Weight != nullptr, "DepthwiseConvolution2dLayer: Weights data should not be null.");
132 
133  auto inferredShapes = InferOutputShapes({
135  m_Weight->GetTensorInfo().GetShape()
136  });
137 
138  ARMNN_ASSERT(inferredShapes.size() == 1);
139 
140  ValidateAndCopyShape(outputShape, inferredShapes[0], m_ShapeInferenceMethod, "DepthwiseConvolution2dLayer");
141 }
142 
144 {
145  return {m_Weight, m_Bias};
146 }
147 
149 {
150  ConstTensor weightsTensor(m_Weight->GetTensorInfo(), m_Weight->Map(true));
151  Optional<ConstTensor> optionalBiasTensor = EmptyOptional();
152 
153  if (GetParameters().m_BiasEnabled)
154  {
155  ConstTensor biasTensor(m_Bias->GetTensorInfo(), m_Bias->Map(true));
156  optionalBiasTensor = Optional<ConstTensor>(biasTensor);
157  }
158 
159  visitor.VisitDepthwiseConvolution2dLayer(this, GetParameters(), weightsTensor, optionalBiasTensor, GetName());
160 }
161 
162 } // namespace armnn
std::vector< TensorShape > InferOutputShapes(const std::vector< TensorShape > &inputShapes) const override
By default returns inputShapes if the number of inputs are equal to number of outputs, otherwise infers the output shapes from given input shapes and layer properties.
virtual std::unique_ptr< IWorkload > CreateWorkload(const IWorkloadFactory &factory) const override
Makes a workload for the DepthwiseConvolution2d type.
bool m_BiasEnabled
Enable/disable bias.
DepthwiseConvolution2dDescriptor m_Param
The parameters for the layer (not including tensor-valued weights etc.).
const DepthwiseConvolution2dDescriptor & GetParameters() const
const TensorShape & GetShape() const
Definition: Tensor.hpp:187
uint32_t m_PadBottom
Padding bottom value in the height dimension.
DepthwiseConvolution2dLayer * Clone(Graph &graph) const override
Creates a dynamically-allocated copy of this layer.
DataLayout m_DataLayout
The data layout to be used (NCHW, NHWC).
This layer represents a depthwise convolution 2d operation.
std::unique_ptr< ScopedCpuTensorHandle > m_Bias
A unique pointer to store Bias values.
uint32_t m_PadLeft
Padding left value in the width dimension.
ConstantTensors GetConstantTensorsByRef() override
Retrieve the handles to the constant values stored by the layer.
void SerializeLayerParameters(ParameterStringifyFunction &fn) const override
Helper to serialize the layer parameters to string (currently used in DotSerializer and company)...
void VerifyShapeInferenceType(const TensorShape &outputShape, ShapeInferenceMethod shapeInferenceMethod)
Definition: Layer.cpp:432
Copyright (c) 2020 ARM Limited.
const IOutputSlot * GetConnection() const override
Definition: Layer.hpp:199
uint32_t m_DilationY
Dilation factor value for height dimension.
void ValidateAndCopyShape(const TensorShape &outputShape, const TensorShape &inferredShape, const ShapeInferenceMethod shapeInferenceMethod, const std::string &layerName, const unsigned int outputSlotIndex=0)
Definition: Layer.cpp:392
void ValidateTensorShapesFromInputs() override
Check if the input tensor shape(s) will lead to a valid configuration of DepthwiseConvolution2dLayer...
void SerializeLayerParameters(ParameterStringifyFunction &fn) const override
Helper to serialize the layer parameters to string.
void VerifyLayerConnections(unsigned int expectedConnections, const CheckLocation &location) const
Definition: Layer.cpp:344
const InputSlot & GetInputSlot(unsigned int index) const override
Get a const input slot handle by slot index.
Definition: Layer.hpp:312
uint32_t m_StrideX
Stride value when proceeding through input for the width dimension.
uint32_t m_DilationX
Dilation factor value for width dimension.
uint32_t m_PadTop
Padding top value in the height dimension.
#define ARMNN_ASSERT_MSG(COND, MSG)
Definition: Assert.hpp:15
Provides access to the appropriate indexes for Channels, Height and Width based on DataLayout...
DepthwiseConvolution2dLayer(const DepthwiseConvolution2dDescriptor &param, const char *name)
Constructor to create a DepthwiseConvolution2dLayer.
A tensor defined by a TensorInfo (shape and data type) and an immutable backing store.
Definition: Tensor.hpp:298
virtual void VisitDepthwiseConvolution2dLayer(const IConnectableLayer *layer, const DepthwiseConvolution2dDescriptor &convolution2dDescriptor, const ConstTensor &weights, const Optional< ConstTensor > &biases, const char *name=nullptr)=0
Function that a 2D depthwise convolution layer with biases should call back to when its Accept(ILayer...
#define ARMNN_ASSERT(COND)
Definition: Assert.hpp:14
#define CHECK_LOCATION()
Definition: Exceptions.hpp:197
void Accept(ILayerVisitor &visitor) const override
Apply a visitor to this layer.
EmptyOptional is used to initialize the Optional class in case we want to have default value for an O...
Definition: Optional.hpp:32
uint32_t m_StrideY
Stride value when proceeding through input for the height dimension.
WorkloadInfo PrepInfoAndDesc(QueueDescriptor &descriptor) const
Helper function to reduce duplication in *LayerCreateWorkload.
const OutputSlot & GetOutputSlot(unsigned int index=0) const override
Get the const output slot handle by slot index.
Definition: Layer.hpp:314
virtual const TensorInfo & GetTensorInfo() const =0
const char * GetName() const override
Returns the name of the layer.
Definition: Layer.hpp:307
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store Weight values.
std::function< void(const std::string &name, const std::string &value)> ParameterStringifyFunction
std::vector< std::reference_wrapper< std::unique_ptr< ScopedCpuTensorHandle > >> ConstantTensors
Definition: Layer.hpp:378
virtual std::unique_ptr< IWorkload > CreateDepthwiseConvolution2d(const DepthwiseConvolution2dQueueDescriptor &descriptor, const WorkloadInfo &info) const
const TensorInfo & GetTensorInfo() const override
Definition: Layer.cpp:63
ShapeInferenceMethod m_ShapeInferenceMethod
Definition: Layer.hpp:387
A DepthwiseConvolution2dDescriptor for the DepthwiseConvolution2dLayer.
uint32_t m_PadRight
Padding right value in the width dimension.