blob: 4cac12ad131c45c61d8a0d6ace6a8caa81468b25 [file] [log] [blame]
Mike Kellyb5fdf382019-06-11 16:35:25 +01001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
3// SPDX-License-Identifier: MIT
4//
5
6#include "HalPolicy.hpp"
7
Aron Virginas-Tarf03fcf02019-07-09 17:44:24 +01008#include "OutputShapeUtils.hpp"
9
Mike Kellyb5fdf382019-06-11 16:35:25 +010010#include "../1.0/HalPolicy.hpp"
11#include "../1.1/HalPolicy.hpp"
12
Aron Virginas-Tar7a6d11b2019-07-03 15:27:08 +010013#include <DataLayoutIndexed.hpp>
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +010014#include <Half.hpp>
Aron Virginas-Tar7a6d11b2019-07-03 15:27:08 +010015
16#include <cmath>
17
Mike Kellyb5fdf382019-06-11 16:35:25 +010018namespace armnn_driver
19{
20namespace hal_1_2
21{
22
23bool HandledByV1_0(V1_2::OperationType operationType)
24{
25 switch (static_cast<V1_0::OperationType>(operationType))
26 {
27 case V1_0::OperationType::ADD:
28 case V1_0::OperationType::AVERAGE_POOL_2D:
29 case V1_0::OperationType::CONCATENATION:
30 case V1_0::OperationType::DEPTH_TO_SPACE:
31 case V1_0::OperationType::DEQUANTIZE:
32 case V1_0::OperationType::EMBEDDING_LOOKUP:
33 case V1_0::OperationType::FLOOR:
34 case V1_0::OperationType::FULLY_CONNECTED:
35 case V1_0::OperationType::HASHTABLE_LOOKUP:
36 case V1_0::OperationType::L2_NORMALIZATION:
37 case V1_0::OperationType::L2_POOL_2D:
38 case V1_0::OperationType::LOCAL_RESPONSE_NORMALIZATION:
39 case V1_0::OperationType::LOGISTIC:
40 case V1_0::OperationType::LSH_PROJECTION:
41 case V1_0::OperationType::LSTM:
42 case V1_0::OperationType::MAX_POOL_2D:
43 case V1_0::OperationType::MUL:
44 case V1_0::OperationType::RELU:
45 case V1_0::OperationType::RELU1:
46 case V1_0::OperationType::RELU6:
47 case V1_0::OperationType::RESHAPE:
Mike Kellyb5fdf382019-06-11 16:35:25 +010048 case V1_0::OperationType::RNN:
49 case V1_0::OperationType::SOFTMAX:
50 case V1_0::OperationType::SPACE_TO_DEPTH:
51 case V1_0::OperationType::SVDF:
52 case V1_0::OperationType::TANH:
53 case V1_0::OperationType::OEM_OPERATION:
54 return true;
55 default:
56 return false;
57 }
58}
59
60bool HandledByV1_1(V1_2::OperationType operationType)
61{
62 if (HandledByV1_0(operationType))
63 {
64 return true;
65 }
66 switch (static_cast<V1_1::OperationType>(operationType))
67 {
68 case V1_1::OperationType::BATCH_TO_SPACE_ND:
69 case V1_1::OperationType::DIV:
70 case V1_1::OperationType::MEAN:
71 case V1_1::OperationType::PAD:
72 case V1_1::OperationType::SPACE_TO_BATCH_ND:
73 case V1_1::OperationType::SQUEEZE:
74 case V1_1::OperationType::STRIDED_SLICE:
75 case V1_1::OperationType::SUB:
76 case V1_1::OperationType::TRANSPOSE:
77 return true;
78 default:
79 return false;
80 }
81}
82
83bool HandledByV1_0(const V1_2::Operation& operation)
84{
85 return HandledByV1_0(operation.type);
86}
87
88bool HandledByV1_1(const V1_2::Operation& operation)
89{
90 return HandledByV1_1(operation.type);
91}
92
93V1_0::OperationType CastToV1_0(V1_2::OperationType type)
94{
95 return static_cast<V1_0::OperationType>(type);
96}
97
98V1_1::OperationType CastToV1_1(V1_2::OperationType type)
99{
100 return static_cast<V1_1::OperationType>(type);
101}
102
103V1_0::Operation ConvertToV1_0(const V1_2::Operation& operation)
104{
105 V1_0::Operation op;
106 op.type = CastToV1_0(operation.type);
107 op.inputs = operation.inputs;
108 op.outputs = operation.outputs;
109 return op;
110}
111
112V1_1::Operation ConvertToV1_1(const V1_2::Operation& operation)
113{
114 V1_1::Operation op;
115 op.type = CastToV1_1(operation.type);
116 op.inputs = operation.inputs;
117 op.outputs = operation.outputs;
118 return op;
119}
120
121bool HalPolicy::ConvertOperation(const Operation& operation, const Model& model, ConversionData& data)
122{
123 if (HandledByV1_0(operation) && compliantWithV1_0(model))
124 {
125 hal_1_0::HalPolicy::Operation v10Operation = ConvertToV1_0(operation);
126 hal_1_0::HalPolicy::Model v10Model = convertToV1_0(model);
127
128 return hal_1_0::HalPolicy::ConvertOperation(v10Operation, v10Model, data);
129 }
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100130
131 if (HandledByV1_1(operation) && compliantWithV1_1(model))
Mike Kellyb5fdf382019-06-11 16:35:25 +0100132 {
133 hal_1_1::HalPolicy::Operation v11Operation = ConvertToV1_1(operation);
134 hal_1_1::HalPolicy::Model v11Model = convertToV1_1(model);
135
136 return hal_1_1::HalPolicy::ConvertOperation(v11Operation, v11Model, data);
137 }
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100138
Mike Kellyb5fdf382019-06-11 16:35:25 +0100139 switch (operation.type)
140 {
141 case V1_2::OperationType::CONV_2D:
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100142 return ConvertConv2d(operation, model, data);
Mike Kellyb5fdf382019-06-11 16:35:25 +0100143 case V1_2::OperationType::DEPTHWISE_CONV_2D:
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100144 return ConvertDepthwiseConv2d(operation, model, data);
Narumol Prangnawarat95b1ef62019-07-15 12:02:20 +0100145 case V1_2::OperationType::MAXIMUM:
146 return ConvertMaximum(operation, model, data);
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +0100147 case V1_2::OperationType::PAD_V2:
148 return ConvertPadV2(operation, model, data);
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100149 case V1_2::OperationType::PRELU:
150 return ConvertPrelu(operation, model, data);
Aron Virginas-Tarfb2fa292019-07-04 11:59:48 +0100151 case V1_2::OperationType::RESIZE_BILINEAR:
152 return ConvertResize(operation, model, data, armnn::ResizeMethod::Bilinear);
Aron Virginas-Tar7a6d11b2019-07-03 15:27:08 +0100153 case V1_2::OperationType::RESIZE_NEAREST_NEIGHBOR:
Aron Virginas-Tarfb2fa292019-07-04 11:59:48 +0100154 return ConvertResize(operation, model, data, armnn::ResizeMethod::NearestNeighbor);
Mike Kellyb5fdf382019-06-11 16:35:25 +0100155 default:
156 return Fail("%s: Operation type %s not supported in ArmnnDriver",
157 __func__, toString(operation.type).c_str());
158 }
159}
160
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100161bool HalPolicy::ConvertConv2d(const Operation& operation, const Model& model, ConversionData& data)
162{
163 LayerInputHandle input = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
164 if (!input.IsValid())
165 {
166 return Fail("%s: Operation has invalid inputs", __func__);
167 }
168
169 const Operand* output = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
170 if (!output)
171 {
172 return Fail("%s: Could not read output 0", __func__);
173 }
174
175 const armnn::TensorInfo& inputInfo = input.GetTensorInfo();
176 const armnn::TensorInfo& outputInfo = GetTensorInfoForOperand(*output);
177
Aron Virginas-Tar366e0a62019-07-10 13:01:41 +0100178 if (IsDynamicOutput(outputInfo))
179 {
180 return Fail("%s: Dynamic output not supported", __func__);
181 }
182
Mike Kellye1d60bb2019-07-11 11:44:52 +0100183 armnn::Convolution2dDescriptor desc;
184 desc.m_DataLayout = armnn::DataLayout::NHWC;
185
186 // Determine whether padding is implicit or explicit
187 bool implicitPadding = operation.inputs.size() == 7 ||
188 (operation.inputs.size() >= 8 &&
189 GetInputOperand<hal_1_2::HalPolicy>(operation, 7, model)->type == OperandType::BOOL);
190
191 if (implicitPadding)
192 {
193 desc.m_DataLayout = OptionalDataLayout<hal_1_2::HalPolicy>(operation, 7, model, data);
194 }
195 else if (operation.inputs.size() >= 10)
196 {
197 desc.m_DataLayout = OptionalDataLayout<hal_1_2::HalPolicy>(operation, 10, model, data);
198 }
199
200 const armnn::PermutationVector OHWIToOIHW = {0, 2, 3, 1};
201
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100202 // ArmNN does not currently support non-fixed weights or bias
Mike Kellye1d60bb2019-07-11 11:44:52 +0100203 // The NNAPI filter is always OHWI [depth_out, filter_height, filter_width, depth_in] but ArmNN expects the
204 // filter's height and width indices to match the input's height and width indices so we permute it to OIHW if
205 // the DataLayout is NCHW
206 const ConstTensorPin weightsPin = (desc.m_DataLayout == armnn::DataLayout::NCHW) ?
207 ConvertOperationInputToConstTensorPin<hal_1_2::HalPolicy>(operation, 1, model, data, OHWIToOIHW) :
208 ConvertOperationInputToConstTensorPin<hal_1_2::HalPolicy>(operation, 1, model, data);
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100209 const ConstTensorPin biasPin =
Mike Kellye1d60bb2019-07-11 11:44:52 +0100210 ConvertOperationInputToConstTensorPin<hal_1_2::HalPolicy>(operation, 2, model, data);
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100211
212 if (!weightsPin.IsValid())
213 {
214 return Fail("%s: Operation has invalid weights", __func__);
215 }
216
217 if (!biasPin.IsValid())
218 {
219 return Fail("%s: Operation has invalid biases", __func__);
220 }
221
222 armnn::ConstTensor weights = weightsPin.GetConstTensor();
223 armnn::ConstTensor bias = biasPin.GetConstTensor();
224 SanitizeBiasQuantizationScale(bias.GetInfo(), weights.GetInfo(), inputInfo);
225
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100226 ActivationFn activation;
227
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100228 if (implicitPadding)
229 {
230 android::nn::PaddingScheme paddingScheme;
231 if (!GetInputPaddingScheme<hal_1_2::HalPolicy>(operation, 3, paddingScheme, model, data) ||
232 !GetInputScalar<hal_1_2::HalPolicy>(operation, 4, OperandType::INT32, desc.m_StrideX, model, data) ||
233 !GetInputScalar<hal_1_2::HalPolicy>(operation, 5, OperandType::INT32, desc.m_StrideY, model, data) ||
234 !GetInputActivationFunction<hal_1_2::HalPolicy>(operation, 6, activation, model, data) ||
235 !GetOptionalConvolutionDilationParams<hal_1_2::HalPolicy>(operation, 8, desc, model, data))
236 {
237 return Fail("%s: Operation has invalid inputs (implicit padding)", __func__);
238 }
239
Mike Kellye1d60bb2019-07-11 11:44:52 +0100240 armnnUtils::DataLayoutIndexed dataLayoutIndexed(desc.m_DataLayout);
241 unsigned int widthIndex = dataLayoutIndexed.GetWidthIndex();
242 unsigned int heightIndex = dataLayoutIndexed.GetHeightIndex();
243 const uint32_t kernelX = weights.GetShape()[widthIndex];
244 const uint32_t kernelY = weights.GetShape()[heightIndex];
245 const uint32_t inputX = inputInfo.GetShape()[widthIndex];
246 const uint32_t inputY = inputInfo.GetShape()[heightIndex];
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100247
Mike Kelly86b36d42019-07-12 16:39:33 +0100248 CalcPadding(inputX, kernelX, desc.m_StrideX, desc.m_DilationX, desc.m_PadLeft, desc.m_PadRight, paddingScheme);
249 CalcPadding(inputY, kernelY, desc.m_StrideY, desc.m_DilationY, desc.m_PadTop, desc.m_PadBottom, paddingScheme);
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100250
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100251 }
252 else if (operation.inputs.size() >= 10)
253 {
254 // explicit padding
255 if (!GetInputScalar<hal_1_2::HalPolicy>(operation, 3, OperandType::INT32, desc.m_PadLeft, model, data) ||
256 !GetInputScalar<hal_1_2::HalPolicy>(operation, 4, OperandType::INT32, desc.m_PadRight, model, data) ||
257 !GetInputScalar<hal_1_2::HalPolicy>(operation, 5, OperandType::INT32, desc.m_PadTop, model, data) ||
258 !GetInputScalar<hal_1_2::HalPolicy>(operation, 6, OperandType::INT32, desc.m_PadBottom, model, data) ||
259 !GetInputScalar<hal_1_2::HalPolicy>(operation, 7, OperandType::INT32, desc.m_StrideX, model, data) ||
260 !GetInputScalar<hal_1_2::HalPolicy>(operation, 8, OperandType::INT32, desc.m_StrideY, model, data) ||
261 !GetInputActivationFunction<hal_1_2::HalPolicy>(operation, 9, activation, model, data) ||
262 !GetOptionalConvolutionDilationParams<hal_1_2::HalPolicy>(operation, 11, desc, model, data))
263 {
264 return Fail("%s: Operation has invalid inputs (explicit padding)", __func__);
265 }
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100266 }
267 else
268 {
269 return Fail("%s: Unsupported number of operation inputs", __func__);
270 }
271
272 desc.m_BiasEnabled = true;
273 armnn::Optional<armnn::TensorInfo> biases(bias.GetInfo());
274
Ferran Balaguerd30093c2019-07-09 17:04:47 +0100275 bool isSupported = false;
276 FORWARD_LAYER_SUPPORT_FUNC(__func__,
277 IsConvolution2dSupported,
278 data.m_Backends,
279 isSupported,
280 inputInfo,
281 outputInfo,
282 desc,
283 weights.GetInfo(),
284 biases);
285 if (!isSupported)
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100286 {
287 return false;
288 }
289
290 armnn::IConnectableLayer* startLayer =
291 data.m_Network->AddConvolution2dLayer(desc, weights, armnn::Optional<armnn::ConstTensor>(bias));
292
293 if (!startLayer)
294 {
295 return Fail("%s: AddConvolution2dLayer failed", __func__);
296 }
297
298 armnn::IConnectableLayer* endLayer = ProcessActivation(outputInfo, activation, startLayer, data);
299
300 if (!endLayer)
301 {
302 return Fail("%s: ProcessActivation failed", __func__);
303 }
304
305 input.Connect(startLayer->GetInputSlot(0));
306
307 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation, 0, *endLayer, model, data);
308}
309
310bool HalPolicy::ConvertDepthwiseConv2d(const Operation& operation, const Model& model, ConversionData& data)
311{
312 LayerInputHandle input = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
313
314 if (!input.IsValid())
315 {
316 return Fail("%s: Operation has invalid inputs", __func__);
317 }
318
319 const Operand* output = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
320
321 if (!output)
322 {
323 return Fail("%s: Could not read output 0", __func__);
324 }
325
326 const armnn::TensorInfo& inputInfo = input.GetTensorInfo();
327 const armnn::TensorInfo& outputInfo = GetTensorInfoForOperand(*output);
328
329 // ArmNN does not currently support non-fixed weights or bias
330 // Find the shape of the weights tensor. In AndroidNN this will be [ 1, H, W, I * M ]
331 const Operand* weightsOperand = GetInputOperand<hal_1_2::HalPolicy>(operation, 1, model);
332
333 if (weightsOperand == nullptr)
334 {
335 return Fail("%s: Operand is invalid", __func__);
336 }
337 armnn::DepthwiseConvolution2dDescriptor desc;
338 desc.m_DataLayout = armnn::DataLayout::NHWC;
339
340 // Determine whether padding is implicit or explicit
341 bool implicitPadding = operation.inputs.size() == 8 ||
342 (operation.inputs.size() >= 9 &&
343 GetInputOperand<hal_1_2::HalPolicy>(operation, 8, model)->type == OperandType::BOOL);
344
345 // Look ahead to find the optional DataLayout, if present
346 const uint32_t dataLayoutFlagIndex = implicitPadding ? 8 : 11;
347 desc.m_DataLayout = OptionalDataLayout<hal_1_2::HalPolicy>(operation, dataLayoutFlagIndex, model, data);
348
349 armnnUtils::DataLayoutIndexed dataLayoutIndexed(desc.m_DataLayout);
350 unsigned int channelsIndex = dataLayoutIndexed.GetChannelsIndex();
351 unsigned int widthIndex = dataLayoutIndexed.GetWidthIndex();
352 unsigned int heightIndex = dataLayoutIndexed.GetHeightIndex();
353
354 // Reinterpret weight data as [ H, W, I, M ]
355 armnn::TensorShape weightsShape({ weightsOperand->dimensions[1],
356 weightsOperand->dimensions[2],
357 inputInfo.GetShape()[channelsIndex],
358 weightsOperand->dimensions[3] / inputInfo.GetShape()[channelsIndex] });
359
360 // Swizzle weight data [ H, W, I, M ] -> [ M, I, H, W ]
361 const armnn::PermutationVector HWIMToMIHW = { 2U, 3U, 1U, 0U };
362
363 const ConstTensorPin weightsPin =
364 ConvertOperationInputToConstTensorPin<hal_1_2::HalPolicy>(operation,
365 1,
366 model,
367 data,
368 HWIMToMIHW,
369 &weightsShape);
370
371 // Bias is a 1D tensor
372 const ConstTensorPin biasPin =
373 ConvertOperationInputToConstTensorPin<hal_1_2::HalPolicy>(operation, 2, model, data);
374
375 if (!weightsPin.IsValid())
376 {
377 return Fail("%s: Operation has invalid weights", __func__);
378 }
379
380 if (!biasPin.IsValid())
381 {
382 return Fail("%s: Operation has invalid biases", __func__);
383 }
384
385 armnn::ConstTensor weights = weightsPin.GetConstTensor();
386 armnn::ConstTensor bias = biasPin.GetConstTensor();
387 SanitizeBiasQuantizationScale(bias.GetInfo(), weights.GetInfo(), inputInfo);
388
389 ActivationFn activation;
390
391 if (implicitPadding)
392 {
393 android::nn::PaddingScheme paddingScheme;
394 if (!GetInputPaddingScheme<hal_1_2::HalPolicy>(operation, 3, paddingScheme, model, data) ||
395 !GetInputScalar<hal_1_2::HalPolicy>(operation, 4, OperandType::INT32, desc.m_StrideX, model, data) ||
396 !GetInputScalar<hal_1_2::HalPolicy>(operation, 5, OperandType::INT32, desc.m_StrideY, model, data) ||
397 !GetInputActivationFunction<hal_1_2::HalPolicy>(operation, 7, activation, model, data) ||
398 !GetOptionalConvolutionDilationParams<hal_1_2::HalPolicy>(operation, 9, desc, model, data))
399 {
400 return Fail("%s: Operation has invalid inputs (implicit padding)", __func__);
401 }
402
403 const uint32_t kernelX = weights.GetShape()[3];
404 const uint32_t kernelY = weights.GetShape()[2];
405 const uint32_t inputX = inputInfo.GetShape()[widthIndex];
406 const uint32_t inputY = inputInfo.GetShape()[heightIndex];
407
Mike Kelly86b36d42019-07-12 16:39:33 +0100408 CalcPadding(inputX, kernelX, desc.m_StrideX, desc.m_DilationX, desc.m_PadLeft, desc.m_PadRight, paddingScheme);
409 CalcPadding(inputY, kernelY, desc.m_StrideY, desc.m_DilationY, desc.m_PadTop, desc.m_PadBottom, paddingScheme);
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100410 }
411 else if (operation.inputs.size() >= 11)
412 {
413 // explicit padding
414 if (!GetInputScalar<hal_1_2::HalPolicy>(operation, 3, OperandType::INT32, desc.m_PadLeft, model, data) ||
415 !GetInputScalar<hal_1_2::HalPolicy>(operation, 4, OperandType::INT32, desc.m_PadRight, model, data) ||
416 !GetInputScalar<hal_1_2::HalPolicy>(operation, 5, OperandType::INT32, desc.m_PadTop, model, data) ||
417 !GetInputScalar<hal_1_2::HalPolicy>(operation, 6, OperandType::INT32, desc.m_PadBottom, model, data) ||
418 !GetInputScalar<hal_1_2::HalPolicy>(operation, 7, OperandType::INT32, desc.m_StrideX, model, data) ||
419 !GetInputScalar<hal_1_2::HalPolicy>(operation, 8, OperandType::INT32, desc.m_StrideY, model, data) ||
420 !GetInputActivationFunction<hal_1_2::HalPolicy>(operation, 10, activation, model, data) ||
421 !GetOptionalConvolutionDilationParams<hal_1_2::HalPolicy>(operation, 12, desc, model, data))
422 {
423 return Fail("%s: Operation has invalid inputs (explicit padding)", __func__);
424 }
425 }
426 else
427 {
428 return Fail("%s: Unsupported number of operation inputs", __func__);
429 }
430
431 desc.m_BiasEnabled = true;
432 armnn::Optional<armnn::TensorInfo> biases(bias.GetInfo());
433
Ferran Balaguerd30093c2019-07-09 17:04:47 +0100434 bool isSupported = false;
435 FORWARD_LAYER_SUPPORT_FUNC(__func__,
436 IsDepthwiseConvolutionSupported,
437 data.m_Backends,
438 isSupported,
439 inputInfo,
440 outputInfo,
441 desc,
442 weights.GetInfo(),
443 biases);
444 if (!isSupported)
Aron Virginas-Tar24e699d2019-06-17 14:47:46 +0100445 {
446 return false;
447 }
448
449 armnn::IConnectableLayer* startLayer =
450 data.m_Network->AddDepthwiseConvolution2dLayer(desc, weights, armnn::Optional<armnn::ConstTensor>(bias));
451 if (!startLayer)
452 {
453 return Fail("%s: AddDepthwiseConvolution2dLayer failed", __func__);
454 }
455
456 armnn::IConnectableLayer* endLayer = ProcessActivation(outputInfo, activation, startLayer, data);
457 if (!endLayer)
458 {
459 return Fail("%s: ProcessActivation failed", __func__);
460 }
461
462 input.Connect(startLayer->GetInputSlot(0));
463
464 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation, 0, *endLayer, model, data);
465}
466
Narumol Prangnawarat95b1ef62019-07-15 12:02:20 +0100467bool HalPolicy::ConvertMaximum(const Operation& operation, const Model& model, ConversionData& data)
468{
469 LayerInputHandle input0 = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
470 LayerInputHandle input1 = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 1, model, data);
471
472 if (!input0.IsValid() || !input1.IsValid())
473 {
474 return Fail("%s: Operation has invalid inputs", __func__);
475 }
476
477 const Operand* outputOperand = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
478 if (!outputOperand)
479 {
480 return Fail("%s: Could not read output", __func__);
481 }
482
483 const armnn::TensorInfo& outInfo = GetTensorInfoForOperand(*outputOperand);
484 if (IsDynamicOutput(outInfo))
485 {
486 ALOGD("Output shape not set, will infer from inputs");
487 outInfo.SetShape(InferMaximumOutputShape(input0.GetTensorInfo().GetShape(), input1.GetTensorInfo().GetShape()));
488 }
489
490 if (!IsLayerSupportedForAnyBackend(__func__,
491 armnn::IsMaximumSupported,
492 data.m_Backends,
493 input0.GetTensorInfo(),
494 input1.GetTensorInfo(),
495 outInfo))
496 {
497 return false;
498 }
499
500 armnn::IConnectableLayer* layer = data.m_Network->AddMaximumLayer();
501 assert(layer != nullptr);
502 BroadcastTensor(input0, input1, layer, *data.m_Network);
503
504 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation,
505 0,
506 *layer,
507 model,
508 data,
509 armnn::Optional<armnn::TensorInfo>(outInfo));
510}
511
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +0100512bool HalPolicy::ConvertPadV2(const Operation& operation, const Model& model, ConversionData& data)
513{
514 LayerInputHandle input = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
515 if (!input.IsValid())
516 {
517 return Fail("%s: Could not read input 0", __func__);
518 }
519
Aron Virginas-Tar366e0a62019-07-10 13:01:41 +0100520 const Operand* output = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
521 if (!output)
522 {
523 return Fail("%s: Could not read output", __func__);
524 }
525
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +0100526 const armnn::TensorInfo& inputInfo = input.GetTensorInfo();
527 unsigned int rank = inputInfo.GetNumDimensions();
528
529 armnn::PadDescriptor descriptor;
530 if (!ConvertPaddings<hal_1_2::HalPolicy>(operation, model, data, rank, descriptor))
531 {
532 return Fail("%s: Could not convert paddings", __func__);
533 }
534
Sadik Armagan310d8ff2019-07-11 10:53:38 +0100535 armnn::TensorInfo outputInfo = GetTensorInfoForOperand(*output);
536 if (IsDynamicOutput(outputInfo))
537 {
538 ALOGD("Output shape not set, will infer from inputs");
539 outputInfo.SetShape(InferPadOutputShape(inputInfo.GetShape(), descriptor.m_PadList));
540 }
541
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +0100542 // Determine type of padding value
543 OperandType operandType0;
544 OperandType operandType2;
545
546 if (!GetOperandType<hal_1_2::HalPolicy>(operation, 0, model, operandType0) ||
547 !GetOperandType<hal_1_2::HalPolicy>(operation, 2, model, operandType2))
548 {
549 return Fail("%s: Operation has invalid inputs", __func__);
550 }
551
552 // Read value to use for padding
553 if (operandType0 == OperandType::TENSOR_FLOAT16 && operandType2 == OperandType::FLOAT16)
554 {
555 armnn::Half f16PadValue;
556 if (!GetInputScalar<hal_1_2::HalPolicy>(operation, 2, operandType2, f16PadValue, model, data))
557 {
558 return Fail("%s: Could not read input 2 (FLOAT16)", __func__);
559 }
560
561 descriptor.m_PadValue = f16PadValue;
562 }
563 else if (operandType0 == OperandType::TENSOR_FLOAT32 && operandType2 == OperandType::FLOAT32)
564 {
565 if (!GetInputFloat32<hal_1_2::HalPolicy>(operation, 2, descriptor.m_PadValue, model, data))
566 {
567 return Fail("%s: Could not read input 2 (FLOAT32)", __func__);
568 }
569 }
570 else if (operandType0 == OperandType::TENSOR_QUANT8_ASYMM && operandType2 == OperandType::INT32)
571 {
572 int32_t quantizedPadValue = 0;
573 if (!GetInputInt32<hal_1_2::HalPolicy>(operation, 2, quantizedPadValue, model, data))
574 {
575 return Fail("%s: Could not read input 2 (INT32)", __func__);
576 }
577
578 descriptor.m_PadValue = armnn::Dequantize(quantizedPadValue,
579 inputInfo.GetQuantizationScale(),
580 inputInfo.GetQuantizationOffset());
581 }
582 else
583 {
584 return Fail("%s: Operation has invalid inputs: type mismatch", __func__);
585 }
586
Ferran Balaguerd30093c2019-07-09 17:04:47 +0100587 bool isSupported = false;
588 FORWARD_LAYER_SUPPORT_FUNC(__func__,
589 IsPadSupported,
590 data.m_Backends,
591 isSupported,
592 inputInfo,
593 outputInfo,
594 descriptor);
595 if (!isSupported)
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +0100596 {
597 return false;
598 }
599
600 armnn::IConnectableLayer* const layer = data.m_Network->AddPadLayer(descriptor);
601 assert(layer != nullptr);
602 input.Connect(layer->GetInputSlot(0));
603 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
604
Sadik Armagan310d8ff2019-07-11 10:53:38 +0100605 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation,
606 0,
607 *layer,
608 model,
609 data,
610 armnn::Optional<armnn::TensorInfo>(outputInfo));
Aron Virginas-Tarcb8ac842019-07-05 15:47:07 +0100611}
612
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100613bool HalPolicy::ConvertPrelu(const Operation& operation, const Model& model, ConversionData& data)
614{
615 LayerInputHandle input = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
616 LayerInputHandle alpha = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 1, model, data);
617
618 if (!input.IsValid() || !alpha.IsValid())
619 {
620 return Fail("%s: Operation has invalid inputs", __func__);
621 }
622
623 const Operand* output = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
624
625 if (!output)
626 {
Matteo Martincigh0bd89a82019-07-02 16:53:10 +0100627 return Fail("%s: Could not read output", __func__);
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100628 }
629
630 const armnn::TensorInfo& inputInfo = input.GetTensorInfo();
631 const armnn::TensorInfo& alphaInfo = alpha.GetTensorInfo();
Aron Virginas-Tarf03fcf02019-07-09 17:44:24 +0100632
633 armnn::TensorInfo outputInfo = GetTensorInfoForOperand(*output);
Aron Virginas-Tar366e0a62019-07-10 13:01:41 +0100634 if (IsDynamicOutput(outputInfo))
Aron Virginas-Tarf03fcf02019-07-09 17:44:24 +0100635 {
636 ALOGD("Output shape not set, will infer from inputs");
637 outputInfo.SetShape(InferPreluOutputShape(inputInfo.GetShape(), alphaInfo.GetShape()));
638 }
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100639
Ferran Balaguerd30093c2019-07-09 17:04:47 +0100640 bool isSupported = false;
641 FORWARD_LAYER_SUPPORT_FUNC(__func__,
642 IsPreluSupported,
643 data.m_Backends,
644 isSupported,
645 inputInfo,
646 alphaInfo,
647 outputInfo);
648 if (!isSupported)
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100649 {
650 return false;
651 }
652
653 armnn::IConnectableLayer* const layer = data.m_Network->AddPreluLayer();
654
655 if (!layer)
656 {
657 return Fail("%s: AddPreluLayer failed", __func__);
658 }
659
Matteo Martincigh0bd89a82019-07-02 16:53:10 +0100660 BroadcastTensor(input, alpha, layer, *data.m_Network);
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100661
Aron Virginas-Tarf03fcf02019-07-09 17:44:24 +0100662 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation,
663 0,
664 *layer,
665 model,
666 data,
667 armnn::Optional<armnn::TensorInfo>(outputInfo));
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100668}
669
Aron Virginas-Tarfb2fa292019-07-04 11:59:48 +0100670bool HalPolicy::ConvertResize(const Operation& operation,
671 const Model& model,
672 ConversionData& data,
673 armnn::ResizeMethod resizeMethod)
Aron Virginas-Tar7a6d11b2019-07-03 15:27:08 +0100674{
675 LayerInputHandle input = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
676 if (!input.IsValid())
677 {
678 return Fail("%s: Could not read input 0", __func__);
679 }
680
681 const Operand* output = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
682 if (!output)
683 {
684 return Fail("%s: Could not read output 0", __func__);
685 }
686
687 const armnn::TensorInfo& inputInfo = input.GetTensorInfo();
688 const armnn::TensorInfo& outputInfo = GetTensorInfoForOperand(*output);
689
690 armnn::ResizeDescriptor descriptor;
Aron Virginas-Tarfb2fa292019-07-04 11:59:48 +0100691 descriptor.m_Method = resizeMethod;
Aron Virginas-Tar7a6d11b2019-07-03 15:27:08 +0100692 descriptor.m_DataLayout = OptionalDataLayout<hal_1_2::HalPolicy>(operation, 3, model, data);
693
694 OperandType operandType1;
695 OperandType operandType2;
696
697 if (!GetOperandType<hal_1_2::HalPolicy>(operation, 1, model, operandType1) ||
698 !GetOperandType<hal_1_2::HalPolicy>(operation, 2, model, operandType2))
699 {
700 return Fail("%s: Operation has invalid inputs", __func__);
701 }
702
703 if (operandType1 != operandType2)
704 {
705 return Fail("%s: Operation has invalid inputs. Type of input 1 and 2 should be the same", __func__);
706 }
707
708 if (operandType1 == OperandType::INT32)
709 {
710 // Case 1: resizing by shape
711 int32_t targetWidth = 0;
712 int32_t targetHeight = 0;
713
714 if (!GetInputInt32<hal_1_2::HalPolicy>(operation, 1, targetWidth, model, data) ||
715 !GetInputInt32<hal_1_2::HalPolicy>(operation, 2, targetHeight, model, data))
716 {
717 return Fail("%s: Operation has invalid inputs for resizing by shape", __func__);
718 }
719
720 if (targetWidth < 0 || targetHeight < 0)
721 {
722 return Fail("%s: Operation has invalid inputs for resizing by shape. "
723 "Target width/height cannot be < 0", __func__);
724 }
725
726 descriptor.m_TargetWidth = static_cast<uint32_t>(targetWidth);
727 descriptor.m_TargetWidth = static_cast<uint32_t>(targetHeight);
728 }
729 else if (operandType1 == OperandType::FLOAT32)
730 {
731 // Case 2: resizing by scale
732 float widthScale = 1.0f;
733 float heightScale = 1.0f;
734
735 if (!GetInputFloat32<hal_1_2::HalPolicy>(operation, 1, widthScale, model, data) ||
736 !GetInputFloat32<hal_1_2::HalPolicy>(operation, 2, heightScale, model, data))
737 {
738 return Fail("%s: Operation has invalid inputs for resizing by scale", __func__);
739 }
740
741 const armnn::TensorShape& inputShape = inputInfo.GetShape();
742 armnnUtils::DataLayoutIndexed dataLayoutIndexed(descriptor.m_DataLayout);
743
744 float width = inputShape[dataLayoutIndexed.GetWidthIndex()];
745 float height = inputShape[dataLayoutIndexed.GetHeightIndex()];
746
747 descriptor.m_TargetWidth = std::floor(width * widthScale);
748 descriptor.m_TargetHeight = std::floor(height * heightScale);
749 }
750 else
751 {
752 // NOTE: FLOAT16 scales are not supported
753 return false;
754 }
755
Ferran Balaguerd30093c2019-07-09 17:04:47 +0100756 bool isSupported = false;
757 FORWARD_LAYER_SUPPORT_FUNC(__func__,
758 IsResizeSupported,
759 data.m_Backends,
760 isSupported,
761 inputInfo,
762 outputInfo,
763 descriptor);
764 if (!isSupported)
Aron Virginas-Tar7a6d11b2019-07-03 15:27:08 +0100765 {
766 return false;
767 }
768
769 armnn::IConnectableLayer* layer = data.m_Network->AddResizeLayer(descriptor);
770
771 assert(layer != nullptr);
772
773 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
774 input.Connect(layer->GetInputSlot(0));
775
776 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation, 0, *layer, model, data);
777}
778
Keith Davisa6bc52f2019-06-26 09:39:49 +0100779bool HalPolicy::ConvertSpaceToDepth(const Operation& operation, const Model& model, ConversionData& data)
780{
781 LayerInputHandle input = ConvertToLayerInputHandle<hal_1_2::HalPolicy>(operation, 0, model, data);
782
783 if (!input.IsValid() )
784 {
785 return Fail("%s: Operation has invalid inputs", __func__);
786 }
787
788 const armnn::TensorInfo& inputInfo = input.GetTensorInfo();
789 unsigned int rank = inputInfo.GetNumDimensions();
790
791 if (rank != 4)
792 {
793 return Fail("%s: Only inputs with rank 4 are supported", __func__);
794 }
795
796 armnn::SpaceToDepthDescriptor desc;
797
798 GetInputScalar<hal_1_2::HalPolicy>(operation, 1, OperandType::INT32, desc.m_BlockSize, model, data);
799
800 if (desc.m_BlockSize <= 1)
801 {
802 return Fail("%s: Block size must be at least 1 in all dimensions");
803 }
804
805 desc.m_DataLayout = OptionalDataLayout<hal_1_2::HalPolicy>(operation, 2, model, data);
806
807 const Operand* output = GetOutputOperand<hal_1_2::HalPolicy>(operation, 0, model);
808 if (!output)
809 {
810 return Fail("%s: Could not read output 0", __func__);
811 }
812
813 const armnn::TensorInfo& outputInfo = GetTensorInfoForOperand(*output);
Ferran Balaguerd30093c2019-07-09 17:04:47 +0100814
815 bool isSupported = false;
816 FORWARD_LAYER_SUPPORT_FUNC(__func__,
817 IsSpaceToDepthSupported,
818 data.m_Backends,
819 isSupported,
820 inputInfo,
821 outputInfo,
822 desc);
823 if (!isSupported)
Keith Davisa6bc52f2019-06-26 09:39:49 +0100824 {
825 return false;
826 }
827
828 armnn::IConnectableLayer* const layer = data.m_Network->AddSpaceToDepthLayer(desc);
829 assert(layer != nullptr);
830 input.Connect(layer->GetInputSlot(0));
831
832 return SetupAndTrackLayerOutputSlot<hal_1_2::HalPolicy>(operation, 0, *layer, model, data);
833}
834
Mike Kellyb5fdf382019-06-11 16:35:25 +0100835} // namespace hal_1_2
Matteo Martincigh17ffff32019-06-27 14:12:55 +0100836} // namespace armnn_driver