ArmNN
 20.05
OptimizerTests.cpp
Go to the documentation of this file.
1 //
2 // Copyright © 2017 Arm Ltd. All rights reserved.
3 // SPDX-License-Identifier: MIT
4 //
5 
6 #include "TestUtils.hpp"
7 
8 #include <BackendSettings.hpp>
9 #include <Graph.hpp>
10 #include <Network.hpp>
11 #include <Optimizer.hpp>
12 
14 #include <armnn/INetwork.hpp>
16 
19 
23 
24 #include <boost/test/unit_test.hpp>
25 
26 using namespace armnn;
27 
28 namespace
29 {
30 
31 void CreateLSTMLayerHelper(Graph &graph, bool CifgEnabled)
32 {
33  LstmDescriptor layerDesc;
34  layerDesc.m_ActivationFunc = 4;
35  layerDesc.m_ClippingThresCell = 0.2f;
36  layerDesc.m_ClippingThresProj = 0.4f;
37  layerDesc.m_CifgEnabled = CifgEnabled;
38  layerDesc.m_PeepholeEnabled = false;
39  layerDesc.m_ProjectionEnabled = false;
40 
41  LstmLayer* const layer = graph.AddLayer<LstmLayer>(layerDesc, "layer");
42  unsigned int batchSize = 3;
43  unsigned int inputSize = 2;
44  unsigned int numUnits = 4;
45  unsigned int outputSize = 4;
46 
47  layer->m_BasicParameters.m_InputToForgetWeights = std::make_unique<ScopedCpuTensorHandle>
48  (TensorInfo({ numUnits, inputSize }, DataType::Float32));
49  layer->m_BasicParameters.m_InputToCellWeights = std::make_unique<ScopedCpuTensorHandle>
50  (TensorInfo({ numUnits, inputSize }, DataType::Float32));
51  layer->m_BasicParameters.m_InputToOutputWeights = std::make_unique<ScopedCpuTensorHandle>
52  (TensorInfo({ numUnits, inputSize }, DataType::Float32));
53  layer->m_BasicParameters.m_RecurrentToForgetWeights = std::make_unique<ScopedCpuTensorHandle>
54  (TensorInfo({ numUnits, outputSize }, DataType::Float32));
55  layer->m_BasicParameters.m_RecurrentToCellWeights = std::make_unique<ScopedCpuTensorHandle>
56  (TensorInfo({ numUnits, outputSize }, DataType::Float32));
57  layer->m_BasicParameters.m_RecurrentToOutputWeights = std::make_unique<ScopedCpuTensorHandle>
58  (TensorInfo({ numUnits, outputSize }, DataType::Float32));
59  layer->m_BasicParameters.m_ForgetGateBias = std::make_unique<ScopedCpuTensorHandle>
60  (TensorInfo({ numUnits }, DataType::Float32));
61  layer->m_BasicParameters.m_CellBias = std::make_unique<ScopedCpuTensorHandle>
62  (TensorInfo({ numUnits }, DataType::Float32));
63  layer->m_BasicParameters.m_OutputGateBias = std::make_unique<ScopedCpuTensorHandle>
64  (TensorInfo({ numUnits }, DataType::Float32));
65 
66  layer->m_BasicParameters.m_InputToForgetWeights->Allocate();
67  layer->m_BasicParameters.m_InputToCellWeights->Allocate();
68  layer->m_BasicParameters.m_InputToOutputWeights->Allocate();
72  layer->m_BasicParameters.m_ForgetGateBias->Allocate();
73  layer->m_BasicParameters.m_CellBias->Allocate();
74  layer->m_BasicParameters.m_OutputGateBias->Allocate();
75 
76  if (!layerDesc.m_CifgEnabled)
77  {
78  layer->m_CifgParameters.m_InputToInputWeights = std::make_unique<ScopedCpuTensorHandle>
79  (TensorInfo({ numUnits, inputSize }, DataType::Float32));
80  layer->m_CifgParameters.m_RecurrentToInputWeights = std::make_unique<ScopedCpuTensorHandle>
81  (TensorInfo({ numUnits, outputSize }, DataType::Float32));
82  layer->m_CifgParameters.m_InputGateBias = std::make_unique<ScopedCpuTensorHandle>
83  (TensorInfo({ numUnits }, DataType::Float32));
84  layer->m_CifgParameters.m_InputToInputWeights->Allocate();
86  layer->m_CifgParameters.m_InputGateBias->Allocate();
87  }
88 
89  if (layerDesc.m_ProjectionEnabled)
90  {
91  layer->m_ProjectionParameters.m_ProjectionWeights = std::make_unique<ScopedCpuTensorHandle>
92  (TensorInfo({ outputSize, numUnits }, DataType::Float32));
93  layer->m_ProjectionParameters.m_ProjectionBias = std::make_unique<ScopedCpuTensorHandle>
94  (TensorInfo({ outputSize }, DataType::Float32));
96  layer->m_ProjectionParameters.m_ProjectionBias->Allocate();
97  }
98 
99  if (layerDesc.m_PeepholeEnabled)
100  {
101  if (!layerDesc.m_CifgEnabled)
102  {
103  layer->m_PeepholeParameters.m_CellToInputWeights = std::make_unique<ScopedCpuTensorHandle>
104  (TensorInfo({ numUnits }, DataType::Float32));
105  layer->m_PeepholeParameters.m_CellToInputWeights->Allocate();
106  }
107  layer->m_PeepholeParameters.m_CellToForgetWeights = std::make_unique<ScopedCpuTensorHandle>
108  (TensorInfo({ numUnits }, DataType::Float32));
109  layer->m_PeepholeParameters.m_CellToOutputWeights = std::make_unique<ScopedCpuTensorHandle>
110  (TensorInfo({ numUnits }, DataType::Float32));
111  layer->m_PeepholeParameters.m_CellToForgetWeights->Allocate();
112  layer->m_PeepholeParameters.m_CellToOutputWeights->Allocate();
113  }
114 
115  // create input and output layers
116  Layer* const input = graph.AddLayer<InputLayer>(0, "input");
117  Layer* const outputStateIn = graph.AddLayer<InputLayer>(1, "outputStateIn");
118  Layer* const cellStateIn = graph.AddLayer<InputLayer>(2, "cellStateIn");
119  Layer* const scratchBuffer = graph.AddLayer<OutputLayer>(0, "scratchBuffer");
120  Layer* const outputStateOut = graph.AddLayer<OutputLayer>(1, "outputStateOut");
121  Layer* const cellStateOut = graph.AddLayer<OutputLayer>(2, "cellStateOut");
122  Layer* const output = graph.AddLayer<OutputLayer>(3, "output");
123 
124  // connect up
125  armnn::TensorInfo lstmTensorInfo1({ batchSize, inputSize }, DataType::Float32);
126  armnn::TensorInfo lstmTensorInfo2({ batchSize, numUnits}, DataType::Float32);
127  armnn::TensorInfo lstmTensorInfo3({ batchSize, outputSize }, DataType::Float32);
128  armnn::TensorInfo lstmTensorInfoScratchBuff({ batchSize, numUnits * (layerDesc.m_CifgEnabled ? 3 : 4) },
130 
131  Connect(input, layer, lstmTensorInfo1, 0, 0);
132  Connect(cellStateIn, layer, lstmTensorInfo2, 0, 1);
133  Connect(outputStateIn, layer, lstmTensorInfo3, 0, 2);
134  Connect(layer, scratchBuffer, lstmTensorInfoScratchBuff, 0, 0);
135  Connect(layer, outputStateOut, lstmTensorInfo3, 1, 0);
136  Connect(layer, cellStateOut, lstmTensorInfo2, 2, 0);
137  Connect(layer, output, lstmTensorInfo3, 3, 0);
138 }
139 
140 }
141 
143 using namespace armnn::optimizations;
144 
145 BOOST_AUTO_TEST_CASE(LSTMValidateTensorShapesFromInputsCIFGDisabledTest)
146 {
147  Graph graph;
148 
149  //Helper function creates graph containing LSTM layer with required input and output layers
150  CreateLSTMLayerHelper(graph, false);
151 
152  //This function used to call ValidateShapesFromInputs();
153  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
154 }
155 
156 BOOST_AUTO_TEST_CASE(LSTMValidateTensorShapesFromInputsCIFGEnabledTest)
157 {
158  Graph graph;
159 
160  //Helper function creates graph containing LSTM layer with required input and output layers
161  CreateLSTMLayerHelper(graph, true);
162 
163  //This function used to call ValidateShapesFromInputs();
164  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
165 }
166 
167 BOOST_AUTO_TEST_CASE(InsertConvertersTest)
168 {
169  const armnn::TensorInfo info({ 1, 5, 2, 3 }, armnn::DataType::Float16);
170 
171  armnn::Graph graph;
172 
173  armnn::LayerBindingId inputId = 0;
174 
175  armnn::Layer* head = graph.AddLayer<armnn::OutputLayer>(0, "output");
176 
177  head = graph.InsertNewLayer<armnn::AdditionLayer>(head->GetInputSlot(0), "");
179 
180  graph.InsertNewLayer<armnn::InputLayer>(head->GetInputSlot(1), inputId++, "")
181  ->GetOutputHandler().SetTensorInfo(info);
182 
183  head = graph.InsertNewLayer<armnn::FloorLayer>(head->GetInputSlot(0), "");
185 
186  head = graph.InsertNewLayer<armnn::MemCopyLayer>(head->GetInputSlot(0), "");
188 
189  graph.InsertNewLayer<armnn::InputLayer>(head->GetInputSlot(0), inputId++, "")
190  ->GetOutputHandler().SetTensorInfo(info);
191 
192  // Check graph layer sequence before inserting convert layers
193  BOOST_TEST(CheckSequence(graph.cbegin(),
194  graph.cend(),
195  &IsLayerOfType<armnn::InputLayer>,
196  &IsLayerOfType<armnn::InputLayer>,
197  &IsLayerOfType<armnn::MemCopyLayer>,
198  &IsLayerOfType<armnn::FloorLayer>,
199  &IsLayerOfType<armnn::AdditionLayer>,
200  &IsLayerOfType<armnn::OutputLayer>));
201 
202  // Check layers have Float16 DataType
203  for (auto& layer : graph)
204  {
205  if(layer->GetType()==LayerType::Floor || layer->GetType() == LayerType::Addition)
206  {
209  }
210  }
211 
212  // Insert convert layers either side of unsupported layer
213  for (auto& layer : graph)
214  {
215  if(layer->GetType()==LayerType::Floor || layer->GetType() == LayerType::Addition)
216  {
218  InsertConvertFp32ToFp16LayersAfter(graph, *layer);
219  }
220  }
221 
222  // Check layers have correct DataType after inserting convert layers
223  for (auto& layer : graph)
224  {
225  if (layer->GetType()==LayerType::Floor || layer->GetType() == LayerType::Addition)
226  {
229  }
230  else if (layer->GetType() == LayerType::ConvertFp16ToFp32)
231  {
234  }
235  else if (layer->GetType() == LayerType::ConvertFp32ToFp16)
236  {
239  }
240  }
241 
242  // Check sequence of layers after inserting convert layers
243  BOOST_TEST(CheckSequence(graph.cbegin(),
244  graph.cend(),
245  &IsLayerOfType<armnn::InputLayer>,
246  &IsLayerOfType<armnn::InputLayer>,
247  &IsLayerOfType<armnn::ConvertFp16ToFp32Layer>,
248  &IsLayerOfType<armnn::MemCopyLayer>,
249  &IsLayerOfType<armnn::ConvertFp16ToFp32Layer>,
250  &IsLayerOfType<armnn::FloorLayer>,
251  &IsLayerOfType<armnn::ConvertFp32ToFp16Layer>,
252  &IsLayerOfType<armnn::ConvertFp16ToFp32Layer>,
253  &IsLayerOfType<armnn::AdditionLayer>,
254  &IsLayerOfType<armnn::ConvertFp32ToFp16Layer>,
255  &IsLayerOfType<armnn::OutputLayer>));
256 }
257 
258 
259 
260 void CreateConvolution2dGraph(Graph &graph, const unsigned int* inputShape,
261  const unsigned int* weightsShape, const unsigned int* outputShape,
262  DataLayout dataLayout = DataLayout::NCHW)
263 {
264  armnn::TensorInfo inputInfo(4, inputShape, DataType::Float32);
265  armnn::TensorInfo outputInfo(4, outputShape, DataType::Float32);
266 
267  std::vector<float> weightsVector(90);
268  armnn::ConstTensor weights(armnn::TensorInfo(4, weightsShape, armnn::DataType::Float32), weightsVector);
269 
271  desc.m_BiasEnabled = false;
272  desc.m_StrideX = 1;
273  desc.m_StrideY = 1;
274  desc.m_DataLayout = dataLayout;
275 
276  Layer* input = graph.AddLayer<InputLayer>(0, "input");
277  input->GetOutputSlot().SetTensorInfo(inputInfo);
278 
279  Convolution2dLayer* layer = graph.AddLayer<Convolution2dLayer>(desc, "conv2d");
280  layer->m_Weight = std::make_unique<armnn::ScopedCpuTensorHandle>(weights);
281  layer->GetOutputSlot().SetTensorInfo(outputInfo);
282 
283  Layer* output = graph.AddLayer<OutputLayer>(0, "output");
284  input->GetOutputSlot().Connect(layer->GetInputSlot(0));
285  layer->GetOutputSlot().Connect(output->GetInputSlot(0));
286 }
287 
288 BOOST_AUTO_TEST_CASE(Conv2dValidateTensorShapesFromInputs)
289 {
290  Graph graph;
291  const unsigned int inputShape[] = { 1, 3, 8, 16 };
292  const unsigned int weightsShape[] = { 2, 3, 5, 3 };
293  const unsigned int outputShape[] = { 1, 2, 4, 14 };
294  CreateConvolution2dGraph(graph, inputShape, weightsShape, outputShape);
295 
296  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
297 }
298 
299 BOOST_AUTO_TEST_CASE(Conv2dValidateTensorShapesFromInputsNhwc)
300 {
301  Graph graph;
302  const unsigned int inputShape[] = { 1, 8, 16, 3 };
303  const unsigned int weightsShape[] = { 2, 5, 3, 3 };
304  const unsigned int outputShape[] = { 1, 4, 14, 2 };
305  CreateConvolution2dGraph(graph, inputShape, weightsShape, outputShape, DataLayout::NHWC);
306 
307  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
308 }
309 
310 void CreateDepthwiseConvolution2dGraph(Graph &graph, const unsigned int* inputShape,
311  const unsigned int* weightsShape, const unsigned int* outputShape,
312  DataLayout dataLayout = DataLayout::NCHW)
313 {
314  armnn::TensorInfo inputInfo(4, inputShape, DataType::Float32);
315  armnn::TensorInfo outputInfo(4, outputShape, DataType::Float32);
316 
317  std::vector<float> weightsVector(18);
318  armnn::ConstTensor weights(armnn::TensorInfo(4, weightsShape, armnn::DataType::Float32), weightsVector);
319 
321  desc.m_BiasEnabled = false;
322  desc.m_StrideX = 1;
323  desc.m_StrideY = 1;
324  desc.m_DataLayout = dataLayout;
325 
326  Layer* input = graph.AddLayer<InputLayer>(0, "input");
327  input->GetOutputSlot().SetTensorInfo(inputInfo);
328 
329  DepthwiseConvolution2dLayer* layer = graph.AddLayer<DepthwiseConvolution2dLayer>(desc, "depthwiseConv2d");
330  layer->m_Weight = std::make_unique<armnn::ScopedCpuTensorHandle>(weights);
331  layer->GetOutputSlot().SetTensorInfo(outputInfo);
332 
333  Layer* output = graph.AddLayer<OutputLayer>(0, "output");
334  input->GetOutputSlot().Connect(layer->GetInputSlot(0));
335  layer->GetOutputSlot().Connect(output->GetInputSlot(0));
336 }
337 
338 BOOST_AUTO_TEST_CASE(DepthwiseConv2dValidateTensorShapesFromInputs)
339 {
340  Graph graph;
341  const unsigned int inputShape[] = { 1, 2, 3, 3 };
342  const unsigned int weightsShape[] = { 1, 2, 3, 3 };
343  const unsigned int outputShape[] = { 1, 2, 1, 1 };
344  CreateDepthwiseConvolution2dGraph(graph, inputShape, weightsShape, outputShape);
345 
346  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
347 }
348 
349 BOOST_AUTO_TEST_CASE(DepthwiseConv2dValidateTensorShapesFromInputsNhwc)
350 {
351  Graph graph;
352  const unsigned int inputShape[] = { 1, 3, 3, 2 };
353  const unsigned int weightsShape[] = { 1, 2, 3, 3 };
354  const unsigned int outputShape[] = { 1, 1, 1, 2 };
355  CreateDepthwiseConvolution2dGraph(graph, inputShape, weightsShape, outputShape, DataLayout::NHWC);
356 
357  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
358 }
359 
360 void CreatePooling2dGraph(Graph &graph, const unsigned int* inputShape, const unsigned int* outputShape,
361  DataLayout dataLayout = DataLayout::NCHW)
362 {
363  armnn::TensorInfo inputInfo(4, inputShape, DataType::Float32);
364  armnn::TensorInfo outputInfo(4, outputShape, DataType::Float32);
365 
366  Pooling2dDescriptor desc;
368  desc.m_PoolWidth = desc.m_PoolHeight = 100;
369  desc.m_StrideX = desc.m_StrideY = 5;
370  desc.m_PadLeft = 50;
371  desc.m_PadRight = 50;
372  desc.m_PadTop = 50;
373  desc.m_PadBottom = 50;
375  desc.m_DataLayout = dataLayout;
376 
377  Layer* input = graph.AddLayer<InputLayer>(0, "input");
378  input->GetOutputSlot().SetTensorInfo(inputInfo);
379 
380  Pooling2dLayer* layer = graph.AddLayer<Pooling2dLayer>(desc, "pooling2d");
381  layer->GetOutputSlot().SetTensorInfo(outputInfo);
382 
383  Layer* output = graph.AddLayer<OutputLayer>(0, "output");
384  input->GetOutputSlot().Connect(layer->GetInputSlot(0));
385  layer->GetOutputSlot().Connect(output->GetInputSlot(0));
386 }
387 
388 BOOST_AUTO_TEST_CASE(Pooling2dValidateTensorShapesFromInputs)
389 {
390  Graph graph;
391  const unsigned int inputShape[] = { 5, 3, 52, 60 };
392  const unsigned int outputShape[] = { 5, 3, 11, 13 };
393  CreatePooling2dGraph(graph, inputShape, outputShape, DataLayout::NCHW);
394 
395  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
396 }
397 
398 BOOST_AUTO_TEST_CASE(Pooling2dValidateTensorShapesFromInputsNhwc)
399 {
400  Graph graph;
401  const unsigned int inputShape[] = { 5, 52, 60, 3 };
402  const unsigned int outputShape[] = { 5, 11, 13, 3 };
403  CreatePooling2dGraph(graph, inputShape, outputShape, DataLayout::NHWC);
404 
405  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
406 }
407 
408 void CreateResizeBilinearGraph(Graph &graph, const unsigned int* inputShape, const unsigned int* outputShape,
409  DataLayout dataLayout = DataLayout::NCHW)
410 {
411  TensorInfo inputInfo(4, inputShape, DataType::Float32);
412  TensorInfo outputInfo(4, outputShape, DataType::Float32);
413 
414  ResizeDescriptor desc;
416  desc.m_TargetHeight = 3;
417  desc.m_TargetWidth = 4;
418  desc.m_DataLayout = dataLayout;
419 
420  Layer* input = graph.AddLayer<InputLayer>(0, "input");
421  input->GetOutputSlot().SetTensorInfo(inputInfo);
422 
423  ResizeLayer* layer = graph.AddLayer<ResizeLayer>(desc, "resizeBilinear");
424  layer->GetOutputSlot().SetTensorInfo(outputInfo);
425 
426  Layer* output = graph.AddLayer<OutputLayer>(0, "output");
427  input->GetOutputSlot().Connect(layer->GetInputSlot(0));
428  layer->GetOutputSlot().Connect(output->GetInputSlot(0));
429 }
430 
431 BOOST_AUTO_TEST_CASE(ResizeBilinearValidateTensorShapesFromInputs)
432 {
433  Graph graph;
434  const unsigned int inputShape[] = { 1, 2, 4, 5 };
435  const unsigned int outputShape[] = { 1, 2, 3, 4 };
436  CreateResizeBilinearGraph(graph, inputShape, outputShape);
437 
438  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
439 }
440 
441 BOOST_AUTO_TEST_CASE(ResizeBilinearValidateTensorShapesFromInputsNhwc)
442 {
443  Graph graph;
444  const unsigned int inputShape[] = { 1, 4, 5, 2 };
445  const unsigned int outputShape[] = { 1, 3, 4, 2 };
446  CreateResizeBilinearGraph(graph, inputShape, outputShape, DataLayout::NHWC);
447 
448  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
449 }
450 
451 
452 void CreateGatherGraph(Graph& graph, const armnn::TensorInfo& paramsInfo, const armnn::TensorInfo& indicesInfo,
453  const armnn::TensorInfo& outputInfo)
454 {
455  Layer* input0 = graph.AddLayer<InputLayer>(0, "params");
456  input0->GetOutputSlot().SetTensorInfo(paramsInfo);
457 
458  Layer* input1 = graph.AddLayer<InputLayer>(1, "indices");
459  input1->GetOutputSlot().SetTensorInfo(indicesInfo);
460 
461  GatherLayer* layer = graph.AddLayer<GatherLayer>("gather");
462  layer->GetOutputSlot().SetTensorInfo(outputInfo);
463 
464  Layer* output = graph.AddLayer<OutputLayer>(0, "output");
465  input0->GetOutputSlot().Connect(layer->GetInputSlot(0));
466  input1->GetOutputSlot().Connect(layer->GetInputSlot(1));
467  layer->GetOutputSlot().Connect(output->GetInputSlot(0));
468 }
469 
470 BOOST_AUTO_TEST_CASE(GatherValidateTensorShapesFromInputs)
471 {
472  Graph graph;
473  armnn::TensorInfo paramsInfo({10, 5}, DataType::Float32);
474  armnn::TensorInfo indicesInfo({3}, DataType::Signed32);
475  armnn::TensorInfo outputInfo({3, 5}, DataType::Float32);
476 
477  CreateGatherGraph(graph, paramsInfo, indicesInfo, outputInfo);
478 
479  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
480 }
481 
482 BOOST_AUTO_TEST_CASE(GatherValidateTensorShapesFromInputs1DParams)
483 {
484  Graph graph;
485  armnn::TensorInfo paramsInfo({8}, DataType::Float32);
486  armnn::TensorInfo indicesInfo({5}, DataType::Signed32);
487  armnn::TensorInfo outputInfo( {5}, DataType::Float32);
488 
489  CreateGatherGraph(graph, paramsInfo, indicesInfo, outputInfo);
490 
491  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
492 }
493 
494 BOOST_AUTO_TEST_CASE(GatherValidateTensorShapesFromInputsMultiDimIndices)
495 {
496  Graph graph;
497  armnn::TensorInfo paramsInfo({3, 2, 5}, DataType::Float32);
498  armnn::TensorInfo indicesInfo({2, 2}, DataType::Signed32);
499  armnn::TensorInfo outputInfo({2, 2, 2, 5}, DataType::Float32);
500 
501  CreateGatherGraph(graph, paramsInfo, indicesInfo, outputInfo);
502 
503  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
504 }
505 
506 BOOST_AUTO_TEST_CASE(DetectionPostProcessValidateTensorShapes)
507 {
508  Graph graph;
509  armnn::TensorInfo boxEncodingsInfo({1, 10, 4}, DataType::QAsymmU8);
511  std::vector<uint8_t> anchorsVector(40);
513 
514  armnn::TensorInfo detectionBoxesInfo({1, 3, 4}, DataType::QAsymmU8);
515  armnn::TensorInfo detectionScoresInfo({1, 3}, DataType::QAsymmU8);
516  armnn::TensorInfo detectionClassesInfo({1, 3}, DataType::QAsymmU8);
517  armnn::TensorInfo numDetectionInfo({1}, DataType::QAsymmU8);
518 
519  Layer* input0 = graph.AddLayer<InputLayer>(0, "boxEncodings");
520  input0->GetOutputSlot().SetTensorInfo(boxEncodingsInfo);
521 
522  Layer* input1 = graph.AddLayer<InputLayer>(1, "score");
524 
526  descriptor.m_MaxDetections = 3;
527 
528  DetectionPostProcessLayer* layer = graph.AddLayer<DetectionPostProcessLayer>(descriptor, "detectionPostProcess");
529  layer->m_Anchors = std::make_unique<armnn::ScopedCpuTensorHandle>(anchors);
530  layer->GetOutputSlot(0).SetTensorInfo(detectionBoxesInfo);
531  layer->GetOutputSlot(1).SetTensorInfo(detectionScoresInfo);
532  layer->GetOutputSlot(2).SetTensorInfo(detectionClassesInfo);
533  layer->GetOutputSlot(3).SetTensorInfo(numDetectionInfo);
534 
535  input0->GetOutputSlot().Connect(layer->GetInputSlot(0));
536  input1->GetOutputSlot().Connect(layer->GetInputSlot(1));
537 
538  BOOST_CHECK_NO_THROW(graph.InferTensorInfos());
539 }
540 
541 BOOST_AUTO_TEST_CASE(FoldPadLayerIntoConvolution2dLayer)
542 {
543  Graph graph;
544  const unsigned int inputShape[] = { 1, 2, 2, 3 };
545  const unsigned int paddedShape[] = { 1, 6, 6, 3 };
546  const unsigned int weightsShape[] = { 1, 2, 3, 3 };
547  const unsigned int outputShape[] = { 1, 2, 1, 1 };
548 
549 
550  armnn::TensorInfo inputInfo(4, inputShape, DataType::Float32);
551  armnn::TensorInfo paddedInfo(4, paddedShape, DataType::Float32);
552  armnn::TensorInfo outputInfo(4, outputShape, DataType::Float32);
553 
554  Layer* input = graph.AddLayer<InputLayer>(0, "input");
555  input->GetOutputSlot().SetTensorInfo(inputInfo);
556 
557  PadDescriptor padDescriptor({{ 0, 0 }, { 2, 2 }, { 2, 2 }, { 0, 0 }});
558 
559  PadLayer* padLayer = graph.AddLayer<PadLayer>(padDescriptor, "pad");
560  padLayer->GetOutputSlot().SetTensorInfo(paddedInfo);
561 
562  Convolution2dDescriptor convolution2dDescriptor;
563  convolution2dDescriptor.m_BiasEnabled = false;
564  convolution2dDescriptor.m_StrideX = 1;
565  convolution2dDescriptor.m_StrideY = 1;
566  convolution2dDescriptor.m_DataLayout = DataLayout::NHWC;
567 
568  std::vector<float> weightsVector(18);
569  armnn::ConstTensor weights(armnn::TensorInfo(4, weightsShape, armnn::DataType::Float32), weightsVector);
570 
571  Convolution2dLayer* conv2dLayer = graph.AddLayer<Convolution2dLayer>(convolution2dDescriptor,"conv2d");
572  conv2dLayer->m_Weight = std::make_unique<armnn::ScopedCpuTensorHandle>(weights);
573  conv2dLayer->GetOutputSlot().SetTensorInfo(outputInfo);
574 
575  Layer* output = graph.AddLayer<OutputLayer>(0, "output");
576 
577  // Connect up layers - input -> pad -> conv2d -> output
578  input->GetOutputSlot().Connect(padLayer->GetInputSlot(0));
579  padLayer->GetOutputSlot().Connect(conv2dLayer->GetInputSlot(0));
580  conv2dLayer->GetOutputSlot().Connect(output->GetInputSlot(0));
581 
582  auto checkSimpleConv2d = [ ](const armnn::Layer* const layer) -> bool
583  {
584  const auto conv2dLayer = static_cast<const armnn::Convolution2dLayer*>(layer);
585  const auto conv2dLayerParams = conv2dLayer->GetParameters();
586  return IsLayerOfType<armnn::Convolution2dLayer>(layer) &&
587  (layer->GetNameStr() == "conv2d") &&
588  (conv2dLayerParams.m_PadLeft == 0) &&
589  (conv2dLayerParams.m_PadRight == 0) &&
590  (conv2dLayerParams.m_PadTop == 0) &&
591  (conv2dLayerParams.m_PadBottom == 0) &&
592  (conv2dLayerParams.m_BiasEnabled == false) &&
593  (conv2dLayerParams.m_StrideX == 1) &&
594  (conv2dLayerParams.m_StrideY == 1) &&
595  (conv2dLayerParams.m_DataLayout == DataLayout::NHWC);
596  };
597 
598  BOOST_TEST(CheckSequence(graph.cbegin(),
599  graph.cend(),
600  &IsLayerOfType<armnn::InputLayer>,
601  &IsLayerOfType<armnn::PadLayer>,
602  checkSimpleConv2d,
603  &IsLayerOfType<armnn::OutputLayer>));
604 
606 
607  auto checkPadFoldedIntoConv2d = [ ](const armnn::Layer* const layer) -> bool
608  {
609  const auto conv2dLayer = static_cast<const armnn::Convolution2dLayer*>(layer);
610  const auto conv2dLayerParams = conv2dLayer->GetParameters();
611  return IsLayerOfType<armnn::Convolution2dLayer>(layer) &&
612  (layer->GetNameStr() == "folded-pad-into-conv2d") &&
613  (conv2dLayerParams.m_PadLeft == 2) &&
614  (conv2dLayerParams.m_PadRight == 2) &&
615  (conv2dLayerParams.m_PadTop == 2) &&
616  (conv2dLayerParams.m_PadBottom == 2) &&
617  (conv2dLayerParams.m_BiasEnabled == false) &&
618  (conv2dLayerParams.m_StrideX == 1) &&
619  (conv2dLayerParams.m_StrideY == 1) &&
620  (conv2dLayerParams.m_DataLayout == DataLayout::NHWC);
621  };
622 
623  BOOST_TEST(CheckSequence(graph.cbegin(),
624  graph.cend(),
625  &IsLayerOfType<armnn::InputLayer>,
626  checkPadFoldedIntoConv2d,
627  &IsLayerOfType<armnn::OutputLayer>));
628 }
629 
630 
631 
632 
633 class MockLayerSupport : public LayerSupportBase {
634 public:
635  bool IsInputSupported(const TensorInfo& /*input*/,
636  Optional<std::string&> /*reasonIfUnsupported = EmptyOptional()*/) const override
637  {
638  return true;
639  }
640 
641  bool IsOutputSupported(const TensorInfo& /*input*/,
642  Optional<std::string&> /*reasonIfUnsupported = EmptyOptional()*/) const override
643  {
644  return true;
645  }
646 
647  bool IsActivationSupported(const TensorInfo& /*input0*/,
648  const TensorInfo& /*output*/,
649  const ActivationDescriptor& /*descriptor*/,
650  Optional<std::string&> /*reasonIfUnsupported = EmptyOptional()*/) const override
651  {
652  return true;
653  }
654 };
655 
656 template<typename NamePolicy>
657 class MockBackend : public IBackendInternal
658 {
659 public:
660  MockBackend() = default;
661  ~MockBackend() = default;
662 
663  static const BackendId& GetIdStatic() { return NamePolicy::GetIdStatic(); }
664  const BackendId& GetId() const override { return GetIdStatic(); }
665 
666  IBackendInternal::IMemoryManagerUniquePtr CreateMemoryManager() const override { return nullptr; };
667 
668  IBackendInternal::IWorkloadFactoryPtr CreateWorkloadFactory(
669  const IBackendInternal::IMemoryManagerSharedPtr&) const override { return nullptr; }
670 
671  IBackendInternal::IBackendContextPtr CreateBackendContext(const IRuntime::CreationOptions&) const override
672  {
673  return nullptr;
674  }
675 
676  IBackendInternal::Optimizations GetOptimizations() const override { return {}; }
677  IBackendInternal::ILayerSupportSharedPtr GetLayerSupport() const override
678  {
679  return std::make_shared<MockLayerSupport>();
680  }
681 
682  OptimizationViews OptimizeSubgraphView(const SubgraphView&) const override
683  {
684  return {};
685  };
686 };
687 
688 
689 BOOST_AUTO_TEST_CASE(BackendHintTest)
690 {
691  class TestBackendAssignment : public LayerVisitorBase<VisitorNoThrowPolicy>
692  {
693  public:
694  void VisitInputLayer(const IConnectableLayer* layer,
695  LayerBindingId id,
696  const char* name = nullptr) override
697  {
698  IgnoreUnused(id, name);
699  auto inputLayer = PolymorphicDowncast<const InputLayer*>(layer);
700  BOOST_TEST((inputLayer->GetBackendId() == "MockBackend"));
701  }
702 
703  void VisitOutputLayer(const IConnectableLayer* layer,
704  LayerBindingId id,
705  const char* name = nullptr) override
706  {
707  IgnoreUnused(id, name);
708  auto outputLayer = PolymorphicDowncast<const OutputLayer*>(layer);
709  BOOST_TEST((outputLayer->GetBackendId() == "MockBackend"));
710  }
711 
712  void VisitActivationLayer(const IConnectableLayer* layer,
713  const ActivationDescriptor& activationDescriptor,
714  const char* name = nullptr) override
715  {
716  IgnoreUnused(activationDescriptor, name);
717  auto activation = PolymorphicDowncast<const ActivationLayer*>(layer);
718  BOOST_TEST((activation->GetBackendId() == "CustomBackend"));
719  }
720  };
721 
722  struct CustomPolicy
723  {
724  static const BackendId& GetIdStatic()
725  {
726  static BackendId id="CustomBackend";
727  return id;
728  }
729  };
730 
731  struct MockPolicy
732  {
733  static const BackendId& GetIdStatic()
734  {
735  static BackendId id="MockBackend";
736  return id;
737  }
738  };
739 
740  auto& backendRegistry = BackendRegistryInstance();
741 
742  backendRegistry.Register("MockBackend", [](){
743  return std::make_unique<MockBackend<MockPolicy>>();
744  });
745 
746  backendRegistry.Register("CustomBackend", [](){
747  return std::make_unique<MockBackend<CustomPolicy>>();
748  });
749 
750  // Define the network
751  auto network = INetwork::Create();
754 
755  std::unique_ptr<Graph> graph = std::make_unique<Graph>();
756  auto input = graph->AddLayer<InputLayer>(0, "input");
757  auto act = graph->AddLayer<ActivationLayer>(desc, "activation");
758  auto output = graph->AddLayer<OutputLayer>(0, "output");
759 
760  BackendId customBackendId("CustomBackend");
761  act->BackendSelectionHint(customBackendId);
762 
763  input->GetOutputSlot(0).Connect(act->GetInputSlot(0));
764  act->GetOutputSlot(0).Connect(output->GetInputSlot(0));
765 
766 
767  auto optNet = IOptimizedNetworkPtr(new OptimizedNetwork(std::move(graph)), &IOptimizedNetwork::Destroy);
768 
769  OptimizedNetwork* optNetObjPtr = PolymorphicDowncast<OptimizedNetwork*>(optNet.get());
770 
771  // Get the optimized graph
772  Graph& optGraph = optNetObjPtr->GetGraph();
773 
774 
775  std::vector<BackendId> prefs{"MockBackend", "CustomBackend"};
776 
777  BackendIdSet availableBackends = {"CustomBackend", "MockBackend"};
778  DeviceSpec spec(availableBackends);
779 
780  BackendSettings backendSettings(prefs, spec);
781 
782  // Assign an available backend to each layer
783  Graph::Iterator firstLayer = optGraph.begin();
784  Graph::Iterator lastLayer = optGraph.end();
785  OptimizationResult res = AssignBackends(optNetObjPtr,
786  backendSettings,
787  firstLayer,
788  lastLayer,
789  EmptyOptional());
790 
791  BOOST_TEST(res.IsOk());
792 
793  TestBackendAssignment visitor;
794  for (auto it =firstLayer; it != lastLayer; ++it)
795  {
796  (*it)->Accept(visitor);
797  }
798 }
799 
BOOST_AUTO_TEST_SUITE(TensorflowLiteParser)
std::unique_ptr< ScopedCpuTensorHandle > m_ForgetGateBias
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:69
bool m_BiasEnabled
Enable/disable bias.
std::unique_ptr< ScopedCpuTensorHandle > m_InputToOutputWeights
A unique pointer to represent 2D weights tensor with dimensions [input_size, num_units].
Definition: LstmLayer.hpp:61
std::unique_ptr< ScopedCpuTensorHandle > m_RecurrentToCellWeights
A unique pointer to represent 2D weights tensor with dimensions [output_size, num_units].
Definition: LstmLayer.hpp:65
bool m_ProjectionEnabled
Enable/disable the projection layer.
DataLayout m_DataLayout
The data layout to be used (NCHW, NHWC).
LstmBasicParameters m_BasicParameters
Definition: LstmLayer.hpp:81
std::unique_ptr< IWorkloadFactory > IWorkloadFactoryPtr
Interface for a layer that is connectable to other layers via InputSlots and OutputSlots.
Definition: INetwork.hpp:61
uint32_t m_PadBottom
Padding bottom value in the height dimension.
std::vector< ConvertFp32ToFp16Layer * > InsertConvertFp32ToFp16LayersAfter(Graph &graph, Layer &layer)
bool m_BiasEnabled
Enable/disable bias.
std::vector< OptimizationPtr > Optimizations
const Parameters & GetParameters() const
DataLayout
Definition: Types.hpp:49
std::vector< ConvertFp16ToFp32Layer * > InsertConvertFp16ToFp32LayersBefore(Graph &graph, Layer &layer, bool expectCorrectInputType)
std::unique_ptr< ScopedCpuTensorHandle > m_InputToInputWeights
A unique pointer to represent 2D weights tensor with dimensions [input_size, num_units].
Definition: LstmLayer.hpp:29
uint32_t m_PadLeft
Padding left value in the width dimension.
Optimizer::Optimizations MakeOptimizations(Args &&... args)
Definition: Optimizer.hpp:43
float m_ClippingThresProj
Clipping threshold value for the projection.
std::unordered_set< BackendId > BackendIdSet
Definition: BackendId.hpp:191
void BackendSelectionHint(Optional< BackendId > backend) final
Provide a hint for the optimizer as to which backend to prefer for this layer.
Definition: Layer.hpp:324
DataLayout m_DataLayout
The data layout to be used (NCHW, NHWC).
This layer represents a depthwise convolution 2d operation.
LayerT * AddLayer(Args &&... args)
Adds a new layer, of type LayerType, to the graph constructed with the arguments passed.
Definition: Graph.hpp:398
uint32_t m_PoolWidth
Pooling width value.
ConstIterator cbegin() const
Returns const iterator pointing to the beginning of the list. Lowercase for range-based for loops...
Definition: Graph.hpp:169
A Convolution2dDescriptor for the Convolution2dLayer.
void CreateResizeBilinearGraph(Graph &graph, const unsigned int *inputShape, const unsigned int *outputShape, DataLayout dataLayout=DataLayout::NCHW)
std::unique_ptr< ScopedCpuTensorHandle > m_RecurrentToForgetWeights
A unique pointer to represent 2D weights tensor with dimensions [output_size, num_units].
Definition: LstmLayer.hpp:63
int Connect(InputSlot &destination)
Definition: Layer.cpp:79
ResizeMethod m_Method
The Interpolation method to use (Bilinear, NearestNeighbor).
static void Pass(Graph &graph, const Optimizations &optimizations)
Definition: Optimizer.cpp:16
The padding fields don&#39;t count and are ignored.
PaddingMethod m_PaddingMethod
The padding method to be used. (Exclude, IgnoreValue).
std::unique_ptr< ScopedCpuTensorHandle > m_OutputGateBias
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:73
This layer represents an activation operation with the specified activation function.
BackendRegistry & BackendRegistryInstance()
uint32_t m_PadTop
Padding top value in the height dimension.
This layer represents a detection postprocess operator.
void CreatePooling2dGraph(Graph &graph, const unsigned int *inputShape, const unsigned int *outputShape, DataLayout dataLayout=DataLayout::NCHW)
Copyright (c) 2020 ARM Limited.
std::unique_ptr< IMemoryManager > IMemoryManagerUniquePtr
This layer represents a pad operation.
Definition: PadLayer.hpp:14
This layer represents a LSTM operation.
Definition: LstmLayer.hpp:77
void IgnoreUnused(Ts &&...)
OptimizeForConnection< PadLayer, Convolution2dLayer, FoldPadIntoConvolution2dImpl > FoldPadIntoConvolution2d
LayerList::const_iterator Iterator
Definition: Graph.hpp:51
uint32_t m_StrideX
Stride value when proceeding through input for the width dimension.
std::unique_ptr< ScopedCpuTensorHandle > m_CellBias
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:71
int LayerBindingId
Type of identifiers for bindable layers (inputs, outputs).
Definition: Types.hpp:171
A ResizeDescriptor for the ResizeLayer.
bool IsInputSupported(const BackendId &backend, const TensorInfo &input, char *reasonIfUnsupported=nullptr, size_t reasonIfUnsupportedMaxLength=1024)
Deprecated in favor of IBackend and ILayerSupport interfaces.
The SubgraphView class represents a subgraph of a Graph.
uint32_t m_PoolHeight
Pooling height value.
uint32_t m_MaxDetections
Maximum numbers of detections.
A PadDescriptor for the PadLayer.
std::unique_ptr< ScopedCpuTensorHandle > m_CellToForgetWeights
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:49
const InputSlot & GetInputSlot(unsigned int index) const override
Get a const input slot handle by slot index.
Definition: Layer.hpp:310
uint32_t m_StrideX
Stride value when proceeding through input for the width dimension.
uint32_t m_StrideX
Stride value when proceeding through input for the width dimension.
A layer user-provided data can be bound to (e.g. inputs, outputs).
Definition: OutputLayer.hpp:13
This layer represents a Gather operator.
Definition: GatherLayer.hpp:14
std::unique_ptr< ScopedCpuTensorHandle > m_Anchors
A unique pointer to store Anchor values.
An LstmDescriptor for the LstmLayer.
uint32_t m_PadRight
Padding right value in the width dimension.
void CreateGatherGraph(Graph &graph, const armnn::TensorInfo &paramsInfo, const armnn::TensorInfo &indicesInfo, const armnn::TensorInfo &outputInfo)
std::shared_ptr< IMemoryManager > IMemoryManagerSharedPtr
bool IsOutputSupported(const BackendId &backend, const TensorInfo &output, char *reasonIfUnsupported=nullptr, size_t reasonIfUnsupportedMaxLength=1024)
Deprecated in favor of IBackend and ILayerSupport interfaces.
DataType GetDataType() const
Definition: Tensor.hpp:95
std::unique_ptr< ScopedCpuTensorHandle > m_CellToInputWeights
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:47
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:199
const std::string & GetNameStr() const
Definition: Layer.hpp:216
uint32_t m_TargetWidth
Target width value.
bool m_PeepholeEnabled
Enable/disable peephole.
std::unique_ptr< IOptimizedNetwork, void(*)(IOptimizedNetwork *network)> IOptimizedNetworkPtr
Definition: INetwork.hpp:573
This layer represents a memory copy operation.
#define ARMNN_ASSERT(COND)
Definition: Assert.hpp:14
BOOST_AUTO_TEST_CASE(CheckConvolution2dLayer)
bool IsActivationSupported(const BackendId &backend, const TensorInfo &input, const TensorInfo &output, const ActivationDescriptor &descriptor, char *reasonIfUnsupported=nullptr, size_t reasonIfUnsupportedMaxLength=1024)
Deprecated in favor of IBackend and ILayerSupport interfaces.
An ActivationDescriptor for the ActivationLayer.
Definition: Descriptors.hpp:20
This layer represents a floor operation.
Definition: FloorLayer.hpp:13
std::unique_ptr< ScopedCpuTensorHandle > m_RecurrentToInputWeights
A unique pointer to represent 2D weights tensor with dimensions [input_size, num_units].
Definition: LstmLayer.hpp:31
uint32_t m_TargetHeight
Target height value.
uint32_t m_ActivationFunc
The activation function to use.
Visitor base class with empty implementations.
uint32_t m_StrideY
Stride value when proceeding through input for the height dimension.
This layer represents a pooling 2d operation.
float m_ClippingThresCell
Clipping threshold value for the cell state.
DataLayout m_DataLayout
The data layout to be used (NCHW, NHWC).
This layer represents an addition operation.
std::unique_ptr< ScopedCpuTensorHandle > m_RecurrentToOutputWeights
A unique pointer to represent 2D weights tensor with dimensions [output_size, num_units].
Definition: LstmLayer.hpp:67
LstmOptPeepholeParameters m_PeepholeParameters
Definition: LstmLayer.hpp:84
void SetTensorInfo(const TensorInfo &tensorInfo)
Sets the TensorInfo used by this output handler.
std::shared_ptr< ILayerSupport > ILayerSupportSharedPtr
LstmOptProjectionParameters m_ProjectionParameters
Definition: LstmLayer.hpp:83
OptimizationResult AssignBackends(OptimizedNetwork *optNetObjPtr, BackendSettings &backendSettings, Graph::Iterator &firstLayer, Graph::Iterator &lastLayer, Optional< std::vector< std::string > &> errMessages)
Definition: Network.cpp:382
std::unique_ptr< ScopedCpuTensorHandle > m_ProjectionBias
A unique pointer to represent 1D weights tensor with dimensions [output_size].
Definition: LstmLayer.hpp:41
BOOST_AUTO_TEST_SUITE_END()
bool m_CifgEnabled
Enable/disable cifg (coupled input & forget gate).
std::unique_ptr< ScopedCpuTensorHandle > m_InputToCellWeights
A unique pointer to represent 2D weights tensor with dimensions [input_size, num_units].
Definition: LstmLayer.hpp:59
EmptyOptional is used to initialize the Optional class in case we want to have default value for an O...
Definition: Optional.hpp:32
PoolingAlgorithm m_PoolType
The pooling algorithm to use (Max. Average, L2).
uint32_t m_StrideY
Stride value when proceeding through input for the height dimension.
void InferTensorInfos()
Definition: Graph.cpp:492
const OutputHandler & GetOutputHandler(unsigned int i=0) const
Definition: Layer.hpp:221
A layer user-provided data can be bound to (e.g. inputs, outputs).
Definition: InputLayer.hpp:13
bool CheckSequence(const armnn::Graph::ConstIterator first, const armnn::Graph::ConstIterator last)
Definition: TestUtils.hpp:21
void CreateConvolution2dGraph(Graph &graph, const unsigned int *inputShape, const unsigned int *weightsShape, const unsigned int *outputShape, DataLayout dataLayout=DataLayout::NCHW)
void SetTensorInfo(const TensorInfo &tensorInfo) override
Definition: Layer.cpp:58
armnn::TensorInfo scoresInfo({ 1, 6, 3 }, armnn::DataType::Float32)
std::unique_ptr< ScopedCpuTensorHandle > m_CellToOutputWeights
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:51
DataType GetDataType() const
Definition: Layer.cpp:274
LayerType GetType() const
Definition: Layer.hpp:259
const OutputSlot & GetOutputSlot(unsigned int index=0) const override
Get the const output slot handle by slot index.
Definition: Layer.hpp:312
std::unique_ptr< ScopedCpuTensorHandle > m_ProjectionWeights
A unique pointer to represent 2D weights tensor with dimensions [output_size, num_units].
Definition: LstmLayer.hpp:39
LstmOptCifgParameters m_CifgParameters
Definition: LstmLayer.hpp:82
ConstIterator cend() const
Returns const iterator pointing to the end of the list. Lowercase for range-based for loops...
Definition: Graph.hpp:171
This layer represents a convolution 2d operation.
void Connect(armnn::IConnectableLayer *from, armnn::IConnectableLayer *to, const armnn::TensorInfo &tensorInfo, unsigned int fromIndex, unsigned int toIndex)
Definition: TestUtils.cpp:12
std::unique_ptr< ScopedCpuTensorHandle > m_Weight
A unique pointer to store Weight values.
A Pooling2dDescriptor for the Pooling2dLayer.
DataLayout m_DataLayout
The data layout to be used (NCHW, NHWC).
void CreateDepthwiseConvolution2dGraph(Graph &graph, const unsigned int *inputShape, const unsigned int *weightsShape, const unsigned int *outputShape, DataLayout dataLayout=DataLayout::NCHW)
const TensorInfo & GetTensorInfo() const override
Definition: Layer.cpp:63
static void Destroy(IOptimizedNetwork *network)
Definition: Network.cpp:60
std::unique_ptr< ScopedCpuTensorHandle > m_InputToForgetWeights
A unique pointer to represent 2D weights tensor with dimensions [input_size, num_units].
Definition: LstmLayer.hpp:57
static INetworkPtr Create()
Definition: Network.cpp:50
ActivationFunction m_Function
The activation function to use (Sigmoid, TanH, Linear, ReLu, BoundedReLu, SoftReLu, LeakyReLu, Abs, Sqrt, Square, Elu).
Definition: Descriptors.hpp:43
std::unique_ptr< ScopedCpuTensorHandle > m_InputGateBias
A unique pointer to represent 1D weights tensor with dimensions [num_units].
Definition: LstmLayer.hpp:33
uint32_t m_StrideY
Stride value when proceeding through input for the height dimension.
A DepthwiseConvolution2dDescriptor for the DepthwiseConvolution2dLayer.
This layer represents a resize operation.
Definition: ResizeLayer.hpp:13
std::vector< float > anchors({ 0.5f, 0.5f, 1.0f, 1.0f, 0.5f, 0.5f, 1.0f, 1.0f, 0.5f, 0.5f, 1.0f, 1.0f, 0.5f, 10.5f, 1.0f, 1.0f, 0.5f, 10.5f, 1.0f, 1.0f, 0.5f, 100.5f, 1.0f, 1.0f })
std::unique_ptr< IBackendContext > IBackendContextPtr