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Ferran Balaguerd73d14f2019-06-10 10:29:54 +01001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
3// SPDX-License-Identifier: MIT
4//
5
6#include "RefL2NormalizationWorkload.hpp"
Ferran Balaguerd73d14f2019-06-10 10:29:54 +01007#include "RefWorkloadUtils.hpp"
8#include "Decoders.hpp"
9#include "Encoders.hpp"
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010010
Matteo Martincighe011d202019-11-28 11:35:47 +000011#include <Profiling.hpp>
12
13#include <armnnUtils/DataLayoutIndexed.hpp>
Matthew Sloyan171214c2020-09-09 09:07:37 +010014#include <armnn/utility/NumericCast.hpp>
Matthew Jackson82b15ed2019-07-25 16:14:30 +010015
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010016#include <cmath>
17
18using namespace armnnUtils;
19
20namespace armnn
21{
22RefL2NormalizationWorkload::RefL2NormalizationWorkload(
Matteo Martincighe011d202019-11-28 11:35:47 +000023 const L2NormalizationQueueDescriptor& descriptor,
24 const WorkloadInfo& info)
25 : BaseWorkload<L2NormalizationQueueDescriptor>(descriptor, info) {}
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010026
Matteo Martincighe011d202019-11-28 11:35:47 +000027void RefL2NormalizationWorkload::Execute() const
28{
29 ARMNN_SCOPED_PROFILING_EVENT(Compute::CpuRef, "RefL2NormalizationWorkload_Execute");
30
31 const TensorInfo& inputInfo = GetTensorInfo(m_Data.m_Inputs[0]);
32 const TensorInfo& outputInfo = GetTensorInfo(m_Data.m_Outputs[0]);
33
34 auto inputDecoder = MakeDecoder<float>(inputInfo, m_Data.m_Inputs[0]->Map());
35 auto outputEncoder = MakeEncoder<float>(outputInfo, m_Data.m_Outputs[0]->Map());
36
37 DataLayoutIndexed dataLayout(m_Data.m_Parameters.m_DataLayout);
38
39 const TensorShape& shape = inputInfo.GetShape();
40 unsigned int paddedShapeArray[4];
Matthew Sloyan171214c2020-09-09 09:07:37 +010041 const int idxShift = 4 - armnn::numeric_cast<int>(shape.GetNumDimensions());
Matteo Martincighe011d202019-11-28 11:35:47 +000042
43 const unsigned int batches = (idxShift == 0) ? shape[0] : 1;
44 paddedShapeArray[0] = batches;
45
Matthew Sloyan171214c2020-09-09 09:07:37 +010046 const int channelsIdx = armnn::numeric_cast<int>(dataLayout.GetChannelsIndex());
Matteo Martincighe011d202019-11-28 11:35:47 +000047 const unsigned int channels = (channelsIdx - idxShift >= 0)
Matthew Sloyan171214c2020-09-09 09:07:37 +010048 ? shape[armnn::numeric_cast<unsigned int>(channelsIdx - idxShift)]
Matteo Martincighe011d202019-11-28 11:35:47 +000049 : 1;
50 paddedShapeArray[channelsIdx] = channels;
51
Matthew Sloyan171214c2020-09-09 09:07:37 +010052 const int heightIdx = armnn::numeric_cast<int>(dataLayout.GetHeightIndex());
Matteo Martincighe011d202019-11-28 11:35:47 +000053 const unsigned int height = (heightIdx - idxShift >= 0)
Matthew Sloyan171214c2020-09-09 09:07:37 +010054 ? shape[armnn::numeric_cast<unsigned int>(heightIdx - idxShift)]
Matteo Martincighe011d202019-11-28 11:35:47 +000055 : 1;
56 paddedShapeArray[heightIdx] = height;
57
Matthew Sloyan171214c2020-09-09 09:07:37 +010058 const int widthIdx = armnn::numeric_cast<int>(dataLayout.GetWidthIndex());
Matteo Martincighe011d202019-11-28 11:35:47 +000059 const unsigned int width = (widthIdx - idxShift >= 0)
Matthew Sloyan171214c2020-09-09 09:07:37 +010060 ? shape[armnn::numeric_cast<unsigned int>(widthIdx - idxShift)]
Matteo Martincighe011d202019-11-28 11:35:47 +000061 : 1;
62 paddedShapeArray[widthIdx] = width;
63
64 const TensorShape& paddedShape = TensorShape(4, paddedShapeArray);
65
66 for (unsigned int n = 0; n < batches; ++n)
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010067 {
Matteo Martincighe011d202019-11-28 11:35:47 +000068 for (unsigned int c = 0; c < channels; ++c)
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010069 {
Matteo Martincighe011d202019-11-28 11:35:47 +000070 for (unsigned int h = 0; h < height; ++h)
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010071 {
Matteo Martincighe011d202019-11-28 11:35:47 +000072 for (unsigned int w = 0; w < width; ++w)
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010073 {
Matteo Martincighe011d202019-11-28 11:35:47 +000074 float reduction = 0.0;
75 for (unsigned int d = 0; d < channels; ++d)
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010076 {
Matteo Martincighe011d202019-11-28 11:35:47 +000077 unsigned int inputIndex = dataLayout.GetIndex(paddedShape, n, d, h, w);
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010078
Matteo Martincighe011d202019-11-28 11:35:47 +000079 (*inputDecoder)[inputIndex];
80 const float value = inputDecoder->Get();
81 reduction += value * value;
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010082 }
Matteo Martincighe011d202019-11-28 11:35:47 +000083
84 unsigned int index = dataLayout.GetIndex(paddedShape, n, c, h, w);
85
86 float maximum = reduction < m_Data.m_Parameters.m_Eps ? m_Data.m_Parameters.m_Eps : reduction;
87
88 const float scale = 1.0f / sqrtf(maximum);
89
90 (*inputDecoder)[index];
91 (*outputEncoder)[index];
92 outputEncoder->Set(inputDecoder->Get() * scale);
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010093 }
94 }
95 }
96 }
Matteo Martincighe011d202019-11-28 11:35:47 +000097}
Ferran Balaguerd73d14f2019-06-10 10:29:54 +010098
99} //namespace armnn