ArmNN
 20.05
YoloInferenceTest.hpp
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1 //
2 // Copyright © 2017 Arm Ltd. All rights reserved.
3 // SPDX-License-Identifier: MIT
4 //
5 #pragma once
6 
7 #include "InferenceTest.hpp"
8 #include "YoloDatabase.hpp"
9 
10 #include <armnn/utility/Assert.hpp>
12 
13 #include <algorithm>
14 #include <array>
15 #include <utility>
16 
17 #include <boost/multi_array.hpp>
18 #include <boost/test/tools/floating_point_comparison.hpp>
19 
20 constexpr size_t YoloOutputSize = 1470;
21 
22 template <typename Model>
23 class YoloTestCase : public InferenceModelTestCase<Model>
24 {
25 public:
26  YoloTestCase(Model& model,
27  unsigned int testCaseId,
28  YoloTestCaseData& testCaseData)
29  : InferenceModelTestCase<Model>(model, testCaseId, { std::move(testCaseData.m_InputImage) }, { YoloOutputSize })
30  , m_FloatComparer(boost::math::fpc::percent_tolerance(1.0f))
31  , m_TopObjectDetections(std::move(testCaseData.m_TopObjectDetections))
32  {
33  }
34 
36  {
37  armnn::IgnoreUnused(options);
38 
39  using Boost3dArray = boost::multi_array<float, 3>;
40 
41  const std::vector<float>& output = boost::get<std::vector<float>>(this->GetOutputs()[0]);
42  ARMNN_ASSERT(output.size() == YoloOutputSize);
43 
44  constexpr Boost3dArray::index gridSize = 7;
45  constexpr Boost3dArray::index numClasses = 20;
46  constexpr Boost3dArray::index numScales = 2;
47 
48  const float* outputPtr = output.data();
49 
50  // Range 0-980. Class probabilities. 7x7x20
51  Boost3dArray classProbabilities(boost::extents[gridSize][gridSize][numClasses]);
52  for (Boost3dArray::index y = 0; y < gridSize; ++y)
53  {
54  for (Boost3dArray::index x = 0; x < gridSize; ++x)
55  {
56  for (Boost3dArray::index c = 0; c < numClasses; ++c)
57  {
58  classProbabilities[y][x][c] = *outputPtr++;
59  }
60  }
61  }
62 
63  // Range 980-1078. Scales. 7x7x2
64  Boost3dArray scales(boost::extents[gridSize][gridSize][numScales]);
65  for (Boost3dArray::index y = 0; y < gridSize; ++y)
66  {
67  for (Boost3dArray::index x = 0; x < gridSize; ++x)
68  {
69  for (Boost3dArray::index s = 0; s < numScales; ++s)
70  {
71  scales[y][x][s] = *outputPtr++;
72  }
73  }
74  }
75 
76  // Range 1078-1469. Bounding boxes. 7x7x2x4
77  constexpr float imageWidthAsFloat = static_cast<float>(YoloImageWidth);
78  constexpr float imageHeightAsFloat = static_cast<float>(YoloImageHeight);
79 
80  boost::multi_array<float, 4> boxes(boost::extents[gridSize][gridSize][numScales][4]);
81  for (Boost3dArray::index y = 0; y < gridSize; ++y)
82  {
83  for (Boost3dArray::index x = 0; x < gridSize; ++x)
84  {
85  for (Boost3dArray::index s = 0; s < numScales; ++s)
86  {
87  float bx = *outputPtr++;
88  float by = *outputPtr++;
89  float bw = *outputPtr++;
90  float bh = *outputPtr++;
91 
92  boxes[y][x][s][0] = ((bx + static_cast<float>(x)) / 7.0f) * imageWidthAsFloat;
93  boxes[y][x][s][1] = ((by + static_cast<float>(y)) / 7.0f) * imageHeightAsFloat;
94  boxes[y][x][s][2] = bw * bw * static_cast<float>(imageWidthAsFloat);
95  boxes[y][x][s][3] = bh * bh * static_cast<float>(imageHeightAsFloat);
96  }
97  }
98  }
99  ARMNN_ASSERT(output.data() + YoloOutputSize == outputPtr);
100 
101  std::vector<YoloDetectedObject> detectedObjects;
102  detectedObjects.reserve(gridSize * gridSize * numScales * numClasses);
103 
104  for (Boost3dArray::index y = 0; y < gridSize; ++y)
105  {
106  for (Boost3dArray::index x = 0; x < gridSize; ++x)
107  {
108  for (Boost3dArray::index s = 0; s < numScales; ++s)
109  {
110  for (Boost3dArray::index c = 0; c < numClasses; ++c)
111  {
112  // Resolved confidence: class probabilities * scales.
113  const float confidence = classProbabilities[y][x][c] * scales[y][x][s];
114 
115  // Resolves bounding box and stores.
116  YoloBoundingBox box;
117  box.m_X = boxes[y][x][s][0];
118  box.m_Y = boxes[y][x][s][1];
119  box.m_W = boxes[y][x][s][2];
120  box.m_H = boxes[y][x][s][3];
121 
122  detectedObjects.emplace_back(c, box, confidence);
123  }
124  }
125  }
126  }
127 
128  // Sorts detected objects by confidence.
129  std::sort(detectedObjects.begin(), detectedObjects.end(),
130  [](const YoloDetectedObject& a, const YoloDetectedObject& b)
131  {
132  // Sorts by largest confidence first, then by class.
133  return a.m_Confidence > b.m_Confidence
134  || (a.m_Confidence == b.m_Confidence && a.m_Class > b.m_Class);
135  });
136 
137  // Checks the top N detections.
138  auto outputIt = detectedObjects.begin();
139  auto outputEnd = detectedObjects.end();
140 
141  for (const YoloDetectedObject& expectedDetection : m_TopObjectDetections)
142  {
143  if (outputIt == outputEnd)
144  {
145  // Somehow expected more things to check than detections found by the model.
146  return TestCaseResult::Abort;
147  }
148 
149  const YoloDetectedObject& detectedObject = *outputIt;
150  if (detectedObject.m_Class != expectedDetection.m_Class)
151  {
152  ARMNN_LOG(error) << "Prediction for test case " << this->GetTestCaseId() <<
153  " is incorrect: Expected (" << expectedDetection.m_Class << ")" <<
154  " but predicted (" << detectedObject.m_Class << ")";
155  return TestCaseResult::Failed;
156  }
157 
158  if (!m_FloatComparer(detectedObject.m_Box.m_X, expectedDetection.m_Box.m_X) ||
159  !m_FloatComparer(detectedObject.m_Box.m_Y, expectedDetection.m_Box.m_Y) ||
160  !m_FloatComparer(detectedObject.m_Box.m_W, expectedDetection.m_Box.m_W) ||
161  !m_FloatComparer(detectedObject.m_Box.m_H, expectedDetection.m_Box.m_H) ||
162  !m_FloatComparer(detectedObject.m_Confidence, expectedDetection.m_Confidence))
163  {
164  ARMNN_LOG(error) << "Detected bounding box for test case " << this->GetTestCaseId() <<
165  " is incorrect";
166  return TestCaseResult::Failed;
167  }
168 
169  ++outputIt;
170  }
171 
172  return TestCaseResult::Ok;
173  }
174 
175 private:
176  boost::math::fpc::close_at_tolerance<float> m_FloatComparer;
177  std::vector<YoloDetectedObject> m_TopObjectDetections;
178 };
179 
180 template <typename Model>
182 {
183 public:
184  template <typename TConstructModelCallable>
185  explicit YoloTestCaseProvider(TConstructModelCallable constructModel)
186  : m_ConstructModel(constructModel)
187  {
188  }
189 
190  virtual void AddCommandLineOptions(boost::program_options::options_description& options) override
191  {
192  namespace po = boost::program_options;
193 
194  options.add_options()
195  ("data-dir,d", po::value<std::string>(&m_DataDir)->required(),
196  "Path to directory containing test data");
197 
198  Model::AddCommandLineOptions(options, m_ModelCommandLineOptions);
199  }
200 
201  virtual bool ProcessCommandLineOptions(const InferenceTestOptions &commonOptions) override
202  {
203  if (!ValidateDirectory(m_DataDir))
204  {
205  return false;
206  }
207 
208  m_Model = m_ConstructModel(commonOptions, m_ModelCommandLineOptions);
209  if (!m_Model)
210  {
211  return false;
212  }
213 
214  m_Database = std::make_unique<YoloDatabase>(m_DataDir.c_str());
215  if (!m_Database)
216  {
217  return false;
218  }
219 
220  return true;
221  }
222 
223  virtual std::unique_ptr<IInferenceTestCase> GetTestCase(unsigned int testCaseId) override
224  {
225  std::unique_ptr<YoloTestCaseData> testCaseData = m_Database->GetTestCaseData(testCaseId);
226  if (!testCaseData)
227  {
228  return nullptr;
229  }
230 
231  return std::make_unique<YoloTestCase<Model>>(*m_Model, testCaseId, *testCaseData);
232  }
233 
234 private:
235  typename Model::CommandLineOptions m_ModelCommandLineOptions;
236  std::function<std::unique_ptr<Model>(const InferenceTestOptions&,
237  typename Model::CommandLineOptions)> m_ConstructModel;
238  std::unique_ptr<Model> m_Model;
239 
240  std::string m_DataDir;
241  std::unique_ptr<YoloDatabase> m_Database;
242 };
constexpr unsigned int YoloImageHeight
virtual TestCaseResult ProcessResult(const InferenceTestOptions &options) override
const std::vector< TContainer > & GetOutputs() const
#define ARMNN_LOG(severity)
Definition: Logging.hpp:163
void IgnoreUnused(Ts &&...)
YoloBoundingBox m_Box
#define ARMNN_ASSERT(COND)
Definition: Assert.hpp:14
virtual void AddCommandLineOptions(boost::program_options::options_description &options) override
constexpr size_t YoloOutputSize
YoloTestCase(Model &model, unsigned int testCaseId, YoloTestCaseData &testCaseData)
virtual std::unique_ptr< IInferenceTestCase > GetTestCase(unsigned int testCaseId) override
virtual bool ProcessCommandLineOptions(const InferenceTestOptions &commonOptions) override
std::vector< float > m_InputImage
YoloTestCaseProvider(TConstructModelCallable constructModel)
constexpr unsigned int YoloImageWidth
bool ValidateDirectory(std::string &dir)
unsigned int m_Class
armnn::Runtime::CreationOptions::ExternalProfilingOptions options