ArmNN
 21.02
TransposeConvolution2dLayer Class Reference

This layer represents a 2D transpose convolution operation. More...

#include <TransposeConvolution2dLayer.hpp>

Inheritance diagram for TransposeConvolution2dLayer:
LayerWithParameters< TransposeConvolution2dDescriptor > Layer IConnectableLayer

Public Member Functions

virtual std::unique_ptr< IWorkloadCreateWorkload (const IWorkloadFactory &factory) const override
 Makes a workload for the TransposeConvolution2d type. More...
 
TransposeConvolution2dLayerClone (Graph &graph) const override
 Creates a dynamically-allocated copy of this layer. More...
 
void ValidateTensorShapesFromInputs () override
 Check if the input tensor shape(s) will lead to a valid configuration of TransposeConvolution2dLayer. More...
 
std::vector< TensorShapeInferOutputShapes (const std::vector< TensorShape > &inputShapes) const override
 Infers the output shapes from given input shapes and layer properties. More...
 
void Accept (ILayerVisitor &visitor) const override
 Apply a visitor to this layer. More...
 
void ExecuteStrategy (IStrategy &strategy) const override
 Apply a visitor to this layer. More...
 
- Public Member Functions inherited from LayerWithParameters< TransposeConvolution2dDescriptor >
const TransposeConvolution2dDescriptorGetParameters () const
 
void SerializeLayerParameters (ParameterStringifyFunction &fn) const override
 Helper to serialize the layer parameters to string (currently used in DotSerializer and company). More...
 
- Public Member Functions inherited from Layer
 Layer (unsigned int numInputSlots, unsigned int numOutputSlots, LayerType type, const char *name)
 
 Layer (unsigned int numInputSlots, unsigned int numOutputSlots, LayerType type, DataLayout layout, const char *name)
 
const std::string & GetNameStr () const
 
const OutputHandlerGetOutputHandler (unsigned int i=0) const
 
OutputHandlerGetOutputHandler (unsigned int i=0)
 
ShapeInferenceMethod GetShapeInferenceMethod () const
 
const std::vector< InputSlot > & GetInputSlots () const
 
const std::vector< OutputSlot > & GetOutputSlots () const
 
std::vector< InputSlot >::iterator BeginInputSlots ()
 
std::vector< InputSlot >::iterator EndInputSlots ()
 
std::vector< OutputSlot >::iterator BeginOutputSlots ()
 
std::vector< OutputSlot >::iterator EndOutputSlots ()
 
bool IsOutputUnconnected ()
 
void ResetPriority () const
 
LayerPriority GetPriority () const
 
LayerType GetType () const override
 Returns the armnn::LayerType of this layer. More...
 
DataType GetDataType () const
 
const BackendIdGetBackendId () const
 
void SetBackendId (const BackendId &id)
 
virtual void CreateTensorHandles (const TensorHandleFactoryRegistry &registry, const IWorkloadFactory &factory, const bool IsMemoryManaged=true)
 
void VerifyLayerConnections (unsigned int expectedConnections, const CheckLocation &location) const
 
virtual void ReleaseConstantData ()
 
template<typename Op >
void OperateOnConstantTensors (Op op)
 
const char * GetName () const override
 Returns the name of the layer. More...
 
unsigned int GetNumInputSlots () const override
 Returns the number of connectable input slots. More...
 
unsigned int GetNumOutputSlots () const override
 Returns the number of connectable output slots. More...
 
const InputSlotGetInputSlot (unsigned int index) const override
 Get a const input slot handle by slot index. More...
 
InputSlotGetInputSlot (unsigned int index) override
 Get the input slot handle by slot index. More...
 
const OutputSlotGetOutputSlot (unsigned int index=0) const override
 Get the const output slot handle by slot index. More...
 
OutputSlotGetOutputSlot (unsigned int index=0) override
 Get the output slot handle by slot index. More...
 
void SetGuid (LayerGuid guid)
 
LayerGuid GetGuid () const final
 Returns the unique id of the layer. More...
 
void AddRelatedLayerName (const std::string layerName)
 
const std::list< std::string > & GetRelatedLayerNames ()
 
virtual void Reparent (Graph &dest, std::list< Layer *>::const_iterator iterator)=0
 
void BackendSelectionHint (Optional< BackendId > backend) final
 Provide a hint for the optimizer as to which backend to prefer for this layer. More...
 
Optional< BackendIdGetBackendHint () const
 
void SetShapeInferenceMethod (ShapeInferenceMethod shapeInferenceMethod)
 
template<typename T >
std::shared_ptr< T > GetAdditionalInformation () const
 
void SetAdditionalInfoForObject (const AdditionalInfoObjectPtr &additionalInfo)
 

Public Attributes

std::unique_ptr< ScopedCpuTensorHandlem_Weight
 A unique pointer to store weight values. More...
 
std::unique_ptr< ScopedCpuTensorHandlem_Bias
 A unique pointer to store bias values. More...
 

Protected Member Functions

 TransposeConvolution2dLayer (const TransposeConvolution2dDescriptor &param, const char *name)
 Constructor to create a TransposeConvolution2dLayer. More...
 
 ~TransposeConvolution2dLayer ()=default
 Default destructor. More...
 
ConstantTensors GetConstantTensorsByRef () override
 Retrieve the handles to the constant values stored by the layer. More...
 
- Protected Member Functions inherited from LayerWithParameters< TransposeConvolution2dDescriptor >
 LayerWithParameters (unsigned int numInputSlots, unsigned int numOutputSlots, LayerType type, const TransposeConvolution2dDescriptor &param, const char *name)
 
 ~LayerWithParameters ()=default
 
WorkloadInfo PrepInfoAndDesc (QueueDescriptor &descriptor) const
 Helper function to reduce duplication in *LayerCreateWorkload. More...
 
void ExecuteStrategy (IStrategy &strategy) const override
 Apply a visitor to this layer. More...
 
- Protected Member Functions inherited from Layer
virtual ~Layer ()=default
 
template<typename QueueDescriptor >
void CollectQueueDescriptorInputs (QueueDescriptor &descriptor, WorkloadInfo &info) const
 
template<typename QueueDescriptor >
void CollectQueueDescriptorOutputs (QueueDescriptor &descriptor, WorkloadInfo &info) const
 
void ValidateAndCopyShape (const TensorShape &outputShape, const TensorShape &inferredShape, const ShapeInferenceMethod shapeInferenceMethod, const std::string &layerName, const unsigned int outputSlotIndex=0)
 
void VerifyShapeInferenceType (const TensorShape &outputShape, ShapeInferenceMethod shapeInferenceMethod)
 
template<typename QueueDescriptor >
WorkloadInfo PrepInfoAndDesc (QueueDescriptor &descriptor) const
 Helper function to reduce duplication in *LayerCreateWorkload. More...
 
template<typename LayerType , typename ... Params>
LayerTypeCloneBase (Graph &graph, Params &&... params) const
 
void SetAdditionalInfo (QueueDescriptor &descriptor) const
 
- Protected Member Functions inherited from IConnectableLayer
 ~IConnectableLayer ()
 Objects are not deletable via the handle. More...
 

Additional Inherited Members

- Public Types inherited from LayerWithParameters< TransposeConvolution2dDescriptor >
using DescriptorType = TransposeConvolution2dDescriptor
 
- Protected Types inherited from Layer
using ConstantTensors = std::vector< std::reference_wrapper< std::unique_ptr< ScopedCpuTensorHandle > >>
 
- Protected Attributes inherited from LayerWithParameters< TransposeConvolution2dDescriptor >
TransposeConvolution2dDescriptor m_Param
 The parameters for the layer (not including tensor-valued weights etc.). More...
 
- Protected Attributes inherited from Layer
AdditionalInfoObjectPtr m_AdditionalInfoObject
 
std::vector< OutputHandlerm_OutputHandlers
 
ShapeInferenceMethod m_ShapeInferenceMethod
 

Detailed Description

This layer represents a 2D transpose convolution operation.

Definition at line 15 of file TransposeConvolution2dLayer.hpp.

Constructor & Destructor Documentation

◆ TransposeConvolution2dLayer()

TransposeConvolution2dLayer ( const TransposeConvolution2dDescriptor param,
const char *  name 
)
protected

Constructor to create a TransposeConvolution2dLayer.

Parameters
[in]paramTransposeConvolution2dDescriptor to configure the 2D transpose convolution operation.
[in]nameOptional name for the layer.

Definition at line 19 of file TransposeConvolution2dLayer.cpp.

References armnn::TransposeConvolution2d.

22 {
23 }
LayerWithParameters(unsigned int numInputSlots, unsigned int numOutputSlots, LayerType type, const TransposeConvolution2dDescriptor &param, const char *name)

◆ ~TransposeConvolution2dLayer()

~TransposeConvolution2dLayer ( )
protecteddefault

Default destructor.

Member Function Documentation

◆ Accept()

void Accept ( ILayerVisitor visitor) const
overridevirtual

Apply a visitor to this layer.

Implements IConnectableLayer.

Definition at line 124 of file TransposeConvolution2dLayer.cpp.

References Layer::GetName(), LayerWithParameters< TransposeConvolution2dDescriptor >::GetParameters(), TransposeConvolution2dLayer::m_Bias, TransposeConvolution2dLayer::m_Weight, and ILayerVisitor::VisitTransposeConvolution2dLayer().

125 {
126  ConstTensor weightsTensor(m_Weight->GetTensorInfo(), m_Weight->Map(true)) ;
127  Optional<ConstTensor> optionalBiasTensor = EmptyOptional();
128 
129  if (GetParameters().m_BiasEnabled)
130  {
131  ConstTensor biasTensor(m_Bias->GetTensorInfo(), m_Bias->Map(true));
132  optionalBiasTensor = Optional<ConstTensor>(biasTensor);
133  }
134 
135  visitor.VisitTransposeConvolution2dLayer(this, GetParameters(), weightsTensor, optionalBiasTensor, GetName());
136 }
const TransposeConvolution2dDescriptor & GetParameters() const
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store weight values.
A tensor defined by a TensorInfo (shape and data type) and an immutable backing store.
Definition: Tensor.hpp:314
EmptyOptional is used to initialize the Optional class in case we want to have default value for an O...
Definition: Optional.hpp:32
virtual void VisitTransposeConvolution2dLayer(const IConnectableLayer *layer, const TransposeConvolution2dDescriptor &descriptor, const ConstTensor &weights, const Optional< ConstTensor > &biases, const char *name=nullptr)=0
Function that a 2D transpose convolution layer should call back to when its Accept(ILayerVisitor&) fu...
const char * GetName() const override
Returns the name of the layer.
Definition: Layer.hpp:311
std::unique_ptr< ScopedCpuTensorHandle > m_Bias
A unique pointer to store bias values.

◆ Clone()

TransposeConvolution2dLayer * Clone ( Graph graph) const
overridevirtual

Creates a dynamically-allocated copy of this layer.

Parameters
[in]graphThe graph into which this layer is being cloned.

Implements Layer.

Definition at line 43 of file TransposeConvolution2dLayer.cpp.

References Layer::GetName(), TransposeConvolution2dLayer::m_Bias, LayerWithParameters< TransposeConvolution2dDescriptor >::m_Param, and TransposeConvolution2dLayer::m_Weight.

44 {
45  auto layer = CloneBase<TransposeConvolution2dLayer>(graph, m_Param, GetName());
46 
47  layer->m_Weight = m_Weight ? std::make_unique<ScopedCpuTensorHandle>(*m_Weight) : nullptr;
48 
49  if (layer->m_Param.m_BiasEnabled)
50  {
51  layer->m_Bias = m_Bias ? std::make_unique<ScopedCpuTensorHandle>(*m_Bias) : nullptr;
52  }
53 
54  return std::move(layer);
55 }
TransposeConvolution2dDescriptor m_Param
The parameters for the layer (not including tensor-valued weights etc.).
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store weight values.
const char * GetName() const override
Returns the name of the layer.
Definition: Layer.hpp:311
std::unique_ptr< ScopedCpuTensorHandle > m_Bias
A unique pointer to store bias values.

◆ CreateWorkload()

std::unique_ptr< IWorkload > CreateWorkload ( const IWorkloadFactory factory) const
overridevirtual

Makes a workload for the TransposeConvolution2d type.

Parameters
[in]graphThe graph where this layer can be found.
[in]factoryThe workload factory which will create the workload.
Returns
A pointer to the created workload, or nullptr if not created.

Implements Layer.

Definition at line 25 of file TransposeConvolution2dLayer.cpp.

References ARMNN_ASSERT_MSG, IWorkloadFactory::CreateTransposeConvolution2d(), TransposeConvolution2dLayer::m_Bias, TransposeConvolution2dQueueDescriptor::m_Bias, TransposeConvolution2dDescriptor::m_BiasEnabled, LayerWithParameters< TransposeConvolution2dDescriptor >::m_Param, TransposeConvolution2dLayer::m_Weight, TransposeConvolution2dQueueDescriptor::m_Weight, LayerWithParameters< TransposeConvolution2dDescriptor >::PrepInfoAndDesc(), and Layer::SetAdditionalInfo().

26 {
27  ARMNN_ASSERT_MSG(m_Weight != nullptr, "TransposeConvolution2dLayer: Weights data should not be null.");
28 
30  descriptor.m_Weight = m_Weight.get();
31 
33  {
34  ARMNN_ASSERT_MSG(m_Bias != nullptr, "TransposeConvolution2dLayer: Bias data should not be null.");
35  descriptor.m_Bias = m_Bias.get();
36  }
37 
38  SetAdditionalInfo(descriptor);
39 
40  return factory.CreateTransposeConvolution2d(descriptor, PrepInfoAndDesc(descriptor));
41 }
TransposeConvolution2dDescriptor m_Param
The parameters for the layer (not including tensor-valued weights etc.).
bool m_BiasEnabled
Enable/disable bias.
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store weight values.
#define ARMNN_ASSERT_MSG(COND, MSG)
Definition: Assert.hpp:15
void SetAdditionalInfo(QueueDescriptor &descriptor) const
Definition: Layer.cpp:245
virtual std::unique_ptr< IWorkload > CreateTransposeConvolution2d(const TransposeConvolution2dQueueDescriptor &descriptor, const WorkloadInfo &info) const
WorkloadInfo PrepInfoAndDesc(QueueDescriptor &descriptor) const
Helper function to reduce duplication in *LayerCreateWorkload.
std::unique_ptr< ScopedCpuTensorHandle > m_Bias
A unique pointer to store bias values.

◆ ExecuteStrategy()

void ExecuteStrategy ( IStrategy strategy) const
overridevirtual

Apply a visitor to this layer.

Reimplemented from Layer.

Definition at line 138 of file TransposeConvolution2dLayer.cpp.

References IStrategy::ExecuteStrategy(), Layer::GetName(), LayerWithParameters< TransposeConvolution2dDescriptor >::GetParameters(), TransposeConvolution2dLayer::m_Bias, and TransposeConvolution2dLayer::m_Weight.

139 {
140  std::vector<armnn::ConstTensor> constTensors { {m_Weight->GetTensorInfo(), m_Weight->Map(true)} };
141 
142  if (GetParameters().m_BiasEnabled)
143  {
144  constTensors.emplace_back(ConstTensor(m_Bias->GetTensorInfo(), m_Bias->Map(true)));
145  }
146 
147  strategy.ExecuteStrategy(this, GetParameters(), constTensors, GetName());
148 }
const TransposeConvolution2dDescriptor & GetParameters() const
virtual void ExecuteStrategy(const armnn::IConnectableLayer *layer, const armnn::BaseDescriptor &descriptor, const std::vector< armnn::ConstTensor > &constants, const char *name, const armnn::LayerBindingId id=0)=0
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store weight values.
A tensor defined by a TensorInfo (shape and data type) and an immutable backing store.
Definition: Tensor.hpp:314
const char * GetName() const override
Returns the name of the layer.
Definition: Layer.hpp:311
std::unique_ptr< ScopedCpuTensorHandle > m_Bias
A unique pointer to store bias values.

◆ GetConstantTensorsByRef()

Layer::ConstantTensors GetConstantTensorsByRef ( )
overrideprotectedvirtual

Retrieve the handles to the constant values stored by the layer.

Returns
A vector of the constant tensors stored by this layer.

Reimplemented from Layer.

Definition at line 119 of file TransposeConvolution2dLayer.cpp.

References TransposeConvolution2dLayer::m_Bias, and TransposeConvolution2dLayer::m_Weight.

120 {
121  return {m_Weight, m_Bias};
122 }
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store weight values.
std::unique_ptr< ScopedCpuTensorHandle > m_Bias
A unique pointer to store bias values.

◆ InferOutputShapes()

std::vector< TensorShape > InferOutputShapes ( const std::vector< TensorShape > &  inputShapes) const
overridevirtual

Infers the output shapes from given input shapes and layer properties.

Parameters
[in]inputShapesThe input shapes the layer has.
Returns
A vector of the inferred output shape.

Reimplemented from Layer.

Definition at line 57 of file TransposeConvolution2dLayer.cpp.

References ARMNN_ASSERT, ARMNN_ASSERT_MSG, TransposeConvolution2dDescriptor::m_DataLayout, TransposeConvolution2dDescriptor::m_PadBottom, TransposeConvolution2dDescriptor::m_PadLeft, TransposeConvolution2dDescriptor::m_PadRight, TransposeConvolution2dDescriptor::m_PadTop, LayerWithParameters< TransposeConvolution2dDescriptor >::m_Param, TransposeConvolution2dDescriptor::m_StrideX, TransposeConvolution2dDescriptor::m_StrideY, and armnn::NHWC.

Referenced by TransposeConvolution2dInferOutputShapeTest(), and TransposeConvolution2dLayer::ValidateTensorShapesFromInputs().

59 {
60  ARMNN_ASSERT(inputShapes.size() == 2);
61  const TensorShape& inputShape = inputShapes[0];
62  const TensorShape& kernelShape = inputShapes[1];
63 
64  ARMNN_ASSERT_MSG(inputShape.GetNumDimensions() == 4, "Transpose convolutions will always have 4D input");
65 
66  DataLayoutIndexed dataLayoutIndex(m_Param.m_DataLayout);
67 
68  const unsigned int batches = inputShape[0];
69 
70  const unsigned int wInput = inputShape[dataLayoutIndex.GetWidthIndex()];
71  const unsigned int hInput = inputShape[dataLayoutIndex.GetHeightIndex()];
72 
73  const unsigned int wKernel = kernelShape[dataLayoutIndex.GetWidthIndex()];
74  const unsigned int hKernel = kernelShape[dataLayoutIndex.GetHeightIndex()];
75 
76  unsigned int wPadding = m_Param.m_PadLeft + m_Param.m_PadRight;
77  unsigned int hPadding = m_Param.m_PadTop + m_Param.m_PadBottom;
78 
79  unsigned int wOutput = (wInput - 1) * m_Param.m_StrideX + wKernel - wPadding;
80  unsigned int hOutput = (hInput - 1) * m_Param.m_StrideY + hKernel - hPadding;
81  unsigned int cOutput = kernelShape[0];
82 
84  TensorShape( { batches, hOutput, wOutput, cOutput } ) :
85  TensorShape( { batches, cOutput, hOutput, wOutput });
86 
87  return std::vector<TensorShape>({ tensorShape });
88 }
TransposeConvolution2dDescriptor m_Param
The parameters for the layer (not including tensor-valued weights etc.).
uint32_t m_PadBottom
Padding bottom 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...
uint32_t m_PadTop
Padding top value in the height dimension.
#define ARMNN_ASSERT(COND)
Definition: Assert.hpp:14
DataLayout m_DataLayout
The data layout to be used (NCHW, NHWC).
uint32_t m_PadLeft
Padding left value in the width dimension.
uint32_t m_StrideX
Stride value when proceeding through input for the width dimension.
uint32_t m_StrideY
Stride value when proceeding through input for the height dimension.
uint32_t m_PadRight
Padding right value in the width dimension.

◆ ValidateTensorShapesFromInputs()

void ValidateTensorShapesFromInputs ( )
overridevirtual

Check if the input tensor shape(s) will lead to a valid configuration of TransposeConvolution2dLayer.

Parameters
[in]shapeInferenceMethodIndicates if output shape shall be overwritten or just validated.

Implements Layer.

Definition at line 90 of file TransposeConvolution2dLayer.cpp.

References ARMNN_ASSERT, ARMNN_ASSERT_MSG, CHECK_LOCATION, InputSlot::GetConnection(), Layer::GetInputSlot(), Layer::GetOutputSlot(), TensorInfo::GetShape(), IOutputSlot::GetTensorInfo(), OutputSlot::GetTensorInfo(), TransposeConvolution2dLayer::InferOutputShapes(), TransposeConvolution2dDescriptor::m_OutputShape, TransposeConvolution2dDescriptor::m_OutputShapeEnabled, LayerWithParameters< TransposeConvolution2dDescriptor >::m_Param, Layer::m_ShapeInferenceMethod, TransposeConvolution2dLayer::m_Weight, Layer::ValidateAndCopyShape(), Layer::VerifyLayerConnections(), and Layer::VerifyShapeInferenceType().

91 {
93 
94  const TensorShape& outputShape = GetOutputSlot(0).GetTensorInfo().GetShape();
95 
97 
98  ARMNN_ASSERT_MSG(m_Weight != nullptr, "TransposeConvolution2dLayer: Weight data cannot be null.");
99 
100  std::vector<TensorShape> expectedOutputShape;
101  // If output_shape was specified then use it rather than calculate an inferred output shape.
103  {
104  TensorShape shapeAsTensorShape(static_cast<unsigned int>(m_Param.m_OutputShape.size()),
105  m_Param.m_OutputShape.data());
106  expectedOutputShape.push_back(shapeAsTensorShape);
107  }
108  else
109  {
110  expectedOutputShape = InferOutputShapes({GetInputSlot(0).GetConnection()->GetTensorInfo().GetShape(),
111  m_Weight->GetTensorInfo().GetShape() });
112  }
113 
114  ARMNN_ASSERT(expectedOutputShape.size() == 1);
115 
116  ValidateAndCopyShape(outputShape, expectedOutputShape[0], m_ShapeInferenceMethod, "TransposeConvolution2dLayer");
117 }
TransposeConvolution2dDescriptor m_Param
The parameters for the layer (not including tensor-valued weights etc.).
const TensorShape & GetShape() const
Definition: Tensor.hpp:187
std::vector< unsigned int > m_OutputShape
bool m_OutputShapeEnabled
Output shape if it has been specified.
void VerifyShapeInferenceType(const TensorShape &outputShape, ShapeInferenceMethod shapeInferenceMethod)
Definition: Layer.cpp:432
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store weight values.
const IOutputSlot * GetConnection() const override
Definition: Layer.hpp:199
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 VerifyLayerConnections(unsigned int expectedConnections, const CheckLocation &location) const
Definition: Layer.cpp:348
const InputSlot & GetInputSlot(unsigned int index) const override
Get a const input slot handle by slot index.
Definition: Layer.hpp:316
#define ARMNN_ASSERT_MSG(COND, MSG)
Definition: Assert.hpp:15
#define ARMNN_ASSERT(COND)
Definition: Assert.hpp:14
#define CHECK_LOCATION()
Definition: Exceptions.hpp:197
const OutputSlot & GetOutputSlot(unsigned int index=0) const override
Get the const output slot handle by slot index.
Definition: Layer.hpp:318
virtual const TensorInfo & GetTensorInfo() const =0
std::vector< TensorShape > InferOutputShapes(const std::vector< TensorShape > &inputShapes) const override
Infers the output shapes from given input shapes and layer properties.
const TensorInfo & GetTensorInfo() const override
Definition: Layer.cpp:63
ShapeInferenceMethod m_ShapeInferenceMethod
Definition: Layer.hpp:408

Member Data Documentation

◆ m_Bias

◆ m_Weight


The documentation for this class was generated from the following files: