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Éanna Ó Catháina4247d52019-05-08 14:00:45 +01001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
3// SPDX-License-Identifier: MIT
4//
5
SiCong Li39f46392019-06-21 12:00:04 +01006#include "../ImageTensorGenerator/ImageTensorGenerator.hpp"
7#include "../InferenceTest.hpp"
Éanna Ó Catháina4247d52019-05-08 14:00:45 +01008#include "ModelAccuracyChecker.hpp"
Éanna Ó Catháina4247d52019-05-08 14:00:45 +01009#include "armnnDeserializer/IDeserializer.hpp"
Francis Murtagh532a29d2020-06-29 11:50:01 +010010#include <Filesystem.hpp>
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010011
Matthew Sloyane7ba17e2020-10-06 10:03:21 +010012#include <cxxopts/cxxopts.hpp>
SiCong Li39f46392019-06-21 12:00:04 +010013#include <map>
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010014
15using namespace armnn::test;
16
SiCong Li898a3242019-06-24 16:03:33 +010017/** Load image names and ground-truth labels from the image directory and the ground truth label file
18 *
19 * @pre \p validationLabelPath exists and is valid regular file
20 * @pre \p imageDirectoryPath exists and is valid directory
21 * @pre labels in validation file correspond to images which are in lexicographical order with the image name
22 * @pre image index starts at 1
23 * @pre \p begIndex and \p endIndex are end-inclusive
24 *
25 * @param[in] validationLabelPath Path to validation label file
26 * @param[in] imageDirectoryPath Path to directory containing validation images
27 * @param[in] begIndex Begin index of images to be loaded. Inclusive
28 * @param[in] endIndex End index of images to be loaded. Inclusive
29 * @param[in] blacklistPath Path to blacklist file
30 * @return A map mapping image file names to their corresponding ground-truth labels
31 */
32map<std::string, std::string> LoadValidationImageFilenamesAndLabels(const string& validationLabelPath,
33 const string& imageDirectoryPath,
34 size_t begIndex = 0,
35 size_t endIndex = 0,
36 const string& blacklistPath = "");
37
38/** Load model output labels from file
39 *
40 * @pre \p modelOutputLabelsPath exists and is a regular file
41 *
42 * @param[in] modelOutputLabelsPath path to model output labels file
43 * @return A vector of labels, which in turn is described by a list of category names
44 */
45std::vector<armnnUtils::LabelCategoryNames> LoadModelOutputLabels(const std::string& modelOutputLabelsPath);
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010046
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010047int main(int argc, char* argv[])
48{
49 try
50 {
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010051 armnn::LogSeverity level = armnn::LogSeverity::Debug;
52 armnn::ConfigureLogging(true, true, level);
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010053
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010054 std::string modelPath;
SiCong Li39f46392019-06-21 12:00:04 +010055 std::string modelFormat;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +010056 std::vector<std::string> inputNames;
57 std::vector<std::string> outputNames;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010058 std::string dataDir;
SiCong Li898a3242019-06-24 16:03:33 +010059 std::string modelOutputLabelsPath;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010060 std::string validationLabelPath;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +010061 std::string inputLayout;
62 std::vector<armnn::BackendId> computeDevice;
SiCong Li898a3242019-06-24 16:03:33 +010063 std::string validationRange;
64 std::string blacklistPath;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010065
66 const std::string backendsMessage = "Which device to run layers on by default. Possible choices: "
67 + armnn::BackendRegistryInstance().GetBackendIdsAsString();
68
Éanna Ó Catháina4247d52019-05-08 14:00:45 +010069 try
70 {
Matthew Sloyane7ba17e2020-10-06 10:03:21 +010071 cxxopts::Options options("ModeAccuracyTool-Armnn","Options");
72
73 options.add_options()
74 ("h,help", "Display help messages")
75 ("m,model-path",
76 "Path to armnn format model file",
77 cxxopts::value<std::string>(modelPath))
78 ("f,model-format",
Nikhil Raj5d955cf2021-04-19 16:59:48 +010079 "The model format. Supported values: tflite",
Matthew Sloyane7ba17e2020-10-06 10:03:21 +010080 cxxopts::value<std::string>(modelFormat))
81 ("i,input-name",
82 "Identifier of the input tensors in the network separated by comma with no space.",
83 cxxopts::value<std::vector<std::string>>(inputNames))
84 ("o,output-name",
85 "Identifier of the output tensors in the network separated by comma with no space.",
86 cxxopts::value<std::vector<std::string>>(outputNames))
87 ("d,data-dir",
88 "Path to directory containing the ImageNet test data",
89 cxxopts::value<std::string>(dataDir))
90 ("p,model-output-labels",
91 "Path to model output labels file.",
92 cxxopts::value<std::string>(modelOutputLabelsPath))
93 ("v,validation-labels-path",
94 "Path to ImageNet Validation Label file",
95 cxxopts::value<std::string>(validationLabelPath))
96 ("l,data-layout",
97 "Data layout. Supported value: NHWC, NCHW. Default: NHWC",
98 cxxopts::value<std::string>(inputLayout)->default_value("NHWC"))
99 ("c,compute",
100 backendsMessage.c_str(),
101 cxxopts::value<std::vector<armnn::BackendId>>(computeDevice)->default_value("CpuAcc,CpuRef"))
102 ("r,validation-range",
103 "The range of the images to be evaluated. Specified in the form <begin index>:<end index>."
104 "The index starts at 1 and the range is inclusive."
105 "By default the evaluation will be performed on all images.",
106 cxxopts::value<std::string>(validationRange)->default_value("1:0"))
107 ("b,blacklist-path",
108 "Path to a blacklist file where each line denotes the index of an image to be "
109 "excluded from evaluation.",
110 cxxopts::value<std::string>(blacklistPath)->default_value(""));
111
112 auto result = options.parse(argc, argv);
113
114 if (result.count("help") > 0)
115 {
116 std::cout << options.help() << std::endl;
117 return EXIT_FAILURE;
118 }
119
120 // Check for mandatory single options.
121 std::string mandatorySingleParameters[] = { "model-path", "model-format", "input-name", "output-name",
122 "data-dir", "model-output-labels", "validation-labels-path" };
123 for (auto param : mandatorySingleParameters)
124 {
125 if (result.count(param) != 1)
126 {
127 std::cerr << "Parameter \'--" << param << "\' is required but missing." << std::endl;
128 return EXIT_FAILURE;
129 }
130 }
131 }
132 catch (const cxxopts::OptionException& e)
133 {
134 std::cerr << e.what() << std::endl << std::endl;
135 return EXIT_FAILURE;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100136 }
137 catch (const std::exception& e)
138 {
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +0100139 ARMNN_ASSERT_MSG(false, "Caught unexpected exception");
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100140 std::cerr << "Fatal internal error: " << e.what() << std::endl;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100141 return EXIT_FAILURE;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100142 }
143
144 // Check if the requested backend are all valid
145 std::string invalidBackends;
146 if (!CheckRequestedBackendsAreValid(computeDevice, armnn::Optional<std::string&>(invalidBackends)))
147 {
Derek Lamberti08446972019-11-26 16:38:31 +0000148 ARMNN_LOG(fatal) << "The list of preferred devices contains invalid backend IDs: "
149 << invalidBackends;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100150 return EXIT_FAILURE;
151 }
152 armnn::Status status;
153
154 // Create runtime
155 armnn::IRuntime::CreationOptions options;
156 armnn::IRuntimePtr runtime(armnn::IRuntime::Create(options));
157 std::ifstream file(modelPath);
158
159 // Create Parser
160 using IParser = armnnDeserializer::IDeserializer;
161 auto armnnparser(IParser::Create());
162
163 // Create a network
164 armnn::INetworkPtr network = armnnparser->CreateNetworkFromBinary(file);
165
166 // Optimizes the network.
167 armnn::IOptimizedNetworkPtr optimizedNet(nullptr, nullptr);
168 try
169 {
170 optimizedNet = armnn::Optimize(*network, computeDevice, runtime->GetDeviceSpec());
171 }
Pavel Macenauer855a47b2020-05-26 10:54:22 +0000172 catch (const armnn::Exception& e)
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100173 {
174 std::stringstream message;
175 message << "armnn::Exception (" << e.what() << ") caught from optimize.";
Derek Lamberti08446972019-11-26 16:38:31 +0000176 ARMNN_LOG(fatal) << message.str();
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100177 return EXIT_FAILURE;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100178 }
179
180 // Loads the network into the runtime.
181 armnn::NetworkId networkId;
182 status = runtime->LoadNetwork(networkId, std::move(optimizedNet));
183 if (status == armnn::Status::Failure)
184 {
Derek Lamberti08446972019-11-26 16:38:31 +0000185 ARMNN_LOG(fatal) << "armnn::IRuntime: Failed to load network";
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100186 return EXIT_FAILURE;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100187 }
188
189 // Set up Network
190 using BindingPointInfo = InferenceModelInternal::BindingPointInfo;
191
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100192 // Handle inputNames and outputNames, there can be multiple.
193 std::vector<BindingPointInfo> inputBindings;
194 for(auto& input: inputNames)
195 {
196 const armnnDeserializer::BindingPointInfo&
197 inputBindingInfo = armnnparser->GetNetworkInputBindingInfo(0, input);
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100198
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100199 std::pair<armnn::LayerBindingId, armnn::TensorInfo>
200 m_InputBindingInfo(inputBindingInfo.m_BindingId, inputBindingInfo.m_TensorInfo);
201 inputBindings.push_back(m_InputBindingInfo);
202 }
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100203
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100204 std::vector<BindingPointInfo> outputBindings;
205 for(auto& output: outputNames)
206 {
207 const armnnDeserializer::BindingPointInfo&
208 outputBindingInfo = armnnparser->GetNetworkOutputBindingInfo(0, output);
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100209
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100210 std::pair<armnn::LayerBindingId, armnn::TensorInfo>
211 m_OutputBindingInfo(outputBindingInfo.m_BindingId, outputBindingInfo.m_TensorInfo);
212 outputBindings.push_back(m_OutputBindingInfo);
213 }
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100214
SiCong Li898a3242019-06-24 16:03:33 +0100215 // Load model output labels
Francis Murtagh532a29d2020-06-29 11:50:01 +0100216 if (modelOutputLabelsPath.empty() || !fs::exists(modelOutputLabelsPath) ||
217 !fs::is_regular_file(modelOutputLabelsPath))
SiCong Li898a3242019-06-24 16:03:33 +0100218 {
Derek Lamberti08446972019-11-26 16:38:31 +0000219 ARMNN_LOG(fatal) << "Invalid model output labels path at " << modelOutputLabelsPath;
SiCong Li898a3242019-06-24 16:03:33 +0100220 }
221 const std::vector<armnnUtils::LabelCategoryNames> modelOutputLabels =
222 LoadModelOutputLabels(modelOutputLabelsPath);
223
224 // Parse begin and end image indices
225 std::vector<std::string> imageIndexStrs = armnnUtils::SplitBy(validationRange, ":");
226 size_t imageBegIndex;
227 size_t imageEndIndex;
228 if (imageIndexStrs.size() != 2)
229 {
Derek Lamberti08446972019-11-26 16:38:31 +0000230 ARMNN_LOG(fatal) << "Invalid validation range specification: Invalid format " << validationRange;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100231 return EXIT_FAILURE;
SiCong Li898a3242019-06-24 16:03:33 +0100232 }
233 try
234 {
235 imageBegIndex = std::stoul(imageIndexStrs[0]);
236 imageEndIndex = std::stoul(imageIndexStrs[1]);
237 }
238 catch (const std::exception& e)
239 {
Derek Lamberti08446972019-11-26 16:38:31 +0000240 ARMNN_LOG(fatal) << "Invalid validation range specification: " << validationRange;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100241 return EXIT_FAILURE;
SiCong Li898a3242019-06-24 16:03:33 +0100242 }
243
244 // Validate blacklist file if it's specified
245 if (!blacklistPath.empty() &&
Francis Murtagh532a29d2020-06-29 11:50:01 +0100246 !(fs::exists(blacklistPath) && fs::is_regular_file(blacklistPath)))
SiCong Li898a3242019-06-24 16:03:33 +0100247 {
Derek Lamberti08446972019-11-26 16:38:31 +0000248 ARMNN_LOG(fatal) << "Invalid path to blacklist file at " << blacklistPath;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100249 return EXIT_FAILURE;
SiCong Li898a3242019-06-24 16:03:33 +0100250 }
251
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100252 fs::path pathToDataDir(dataDir);
SiCong Li898a3242019-06-24 16:03:33 +0100253 const map<std::string, std::string> imageNameToLabel = LoadValidationImageFilenamesAndLabels(
254 validationLabelPath, pathToDataDir.string(), imageBegIndex, imageEndIndex, blacklistPath);
255 armnnUtils::ModelAccuracyChecker checker(imageNameToLabel, modelOutputLabels);
James Ward6d9f5c52020-09-28 11:56:35 +0100256 using TContainer = mapbox::util::variant<std::vector<float>, std::vector<int>, std::vector<uint8_t>>;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100257
SiCong Li39f46392019-06-21 12:00:04 +0100258 if (ValidateDirectory(dataDir))
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100259 {
Francis Murtaghbee4bc92019-06-18 12:30:37 +0100260 InferenceModel<armnnDeserializer::IDeserializer, float>::Params params;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100261
SiCong Li39f46392019-06-21 12:00:04 +0100262 params.m_ModelPath = modelPath;
263 params.m_IsModelBinary = true;
Francis Murtaghbee4bc92019-06-18 12:30:37 +0100264 params.m_ComputeDevices = computeDevice;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100265 // Insert inputNames and outputNames into params vector
266 params.m_InputBindings.insert(std::end(params.m_InputBindings),
267 std::begin(inputNames),
268 std::end(inputNames));
269 params.m_OutputBindings.insert(std::end(params.m_OutputBindings),
270 std::begin(outputNames),
271 std::end(outputNames));
Francis Murtaghbee4bc92019-06-18 12:30:37 +0100272
273 using TParser = armnnDeserializer::IDeserializer;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100274 // If dynamicBackends is empty it will be disabled by default.
275 InferenceModel<TParser, float> model(params, false, "");
276
SiCong Li39f46392019-06-21 12:00:04 +0100277 // Get input tensor information
278 const armnn::TensorInfo& inputTensorInfo = model.GetInputBindingInfo().second;
279 const armnn::TensorShape& inputTensorShape = inputTensorInfo.GetShape();
280 const armnn::DataType& inputTensorDataType = inputTensorInfo.GetDataType();
281 armnn::DataLayout inputTensorDataLayout;
282 if (inputLayout == "NCHW")
283 {
284 inputTensorDataLayout = armnn::DataLayout::NCHW;
285 }
286 else if (inputLayout == "NHWC")
287 {
288 inputTensorDataLayout = armnn::DataLayout::NHWC;
289 }
290 else
291 {
Derek Lamberti08446972019-11-26 16:38:31 +0000292 ARMNN_LOG(fatal) << "Invalid Data layout: " << inputLayout;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100293 return EXIT_FAILURE;
SiCong Li39f46392019-06-21 12:00:04 +0100294 }
295 const unsigned int inputTensorWidth =
296 inputTensorDataLayout == armnn::DataLayout::NCHW ? inputTensorShape[3] : inputTensorShape[2];
297 const unsigned int inputTensorHeight =
298 inputTensorDataLayout == armnn::DataLayout::NCHW ? inputTensorShape[2] : inputTensorShape[1];
SiCong Lic0ed7ba2019-06-21 16:02:40 +0100299 // Get output tensor info
300 const unsigned int outputNumElements = model.GetOutputSize();
SiCong Li898a3242019-06-24 16:03:33 +0100301 // Check output tensor shape is valid
302 if (modelOutputLabels.size() != outputNumElements)
303 {
Derek Lamberti08446972019-11-26 16:38:31 +0000304 ARMNN_LOG(fatal) << "Number of output elements: " << outputNumElements
SiCong Li898a3242019-06-24 16:03:33 +0100305 << " , mismatches the number of output labels: " << modelOutputLabels.size();
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100306 return EXIT_FAILURE;
SiCong Li898a3242019-06-24 16:03:33 +0100307 }
SiCong Lic0ed7ba2019-06-21 16:02:40 +0100308
SiCong Li39f46392019-06-21 12:00:04 +0100309 const unsigned int batchSize = 1;
310 // Get normalisation parameters
311 SupportedFrontend modelFrontend;
Nikhil Raj5d955cf2021-04-19 16:59:48 +0100312 if (modelFormat == "tflite")
SiCong Li39f46392019-06-21 12:00:04 +0100313 {
314 modelFrontend = SupportedFrontend::TFLite;
315 }
316 else
317 {
Derek Lamberti08446972019-11-26 16:38:31 +0000318 ARMNN_LOG(fatal) << "Unsupported frontend: " << modelFormat;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100319 return EXIT_FAILURE;
SiCong Li39f46392019-06-21 12:00:04 +0100320 }
321 const NormalizationParameters& normParams = GetNormalizationParameters(modelFrontend, inputTensorDataType);
SiCong Li898a3242019-06-24 16:03:33 +0100322 for (const auto& imageEntry : imageNameToLabel)
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100323 {
SiCong Li898a3242019-06-24 16:03:33 +0100324 const std::string imageName = imageEntry.first;
325 std::cout << "Processing image: " << imageName << "\n";
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100326
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100327 vector<TContainer> inputDataContainers;
Francis Murtaghbee4bc92019-06-18 12:30:37 +0100328 vector<TContainer> outputDataContainers;
329
Francis Murtagh532a29d2020-06-29 11:50:01 +0100330 auto imagePath = pathToDataDir / fs::path(imageName);
SiCong Li39f46392019-06-21 12:00:04 +0100331 switch (inputTensorDataType)
Francis Murtaghbee4bc92019-06-18 12:30:37 +0100332 {
SiCong Li39f46392019-06-21 12:00:04 +0100333 case armnn::DataType::Signed32:
334 inputDataContainers.push_back(
SiCong Li898a3242019-06-24 16:03:33 +0100335 PrepareImageTensor<int>(imagePath.string(),
SiCong Li39f46392019-06-21 12:00:04 +0100336 inputTensorWidth, inputTensorHeight,
337 normParams,
338 batchSize,
339 inputTensorDataLayout));
SiCong Lic0ed7ba2019-06-21 16:02:40 +0100340 outputDataContainers = { vector<int>(outputNumElements) };
SiCong Li39f46392019-06-21 12:00:04 +0100341 break;
Derek Lambertif90c56d2020-01-10 17:14:08 +0000342 case armnn::DataType::QAsymmU8:
SiCong Li39f46392019-06-21 12:00:04 +0100343 inputDataContainers.push_back(
SiCong Li898a3242019-06-24 16:03:33 +0100344 PrepareImageTensor<uint8_t>(imagePath.string(),
SiCong Li39f46392019-06-21 12:00:04 +0100345 inputTensorWidth, inputTensorHeight,
346 normParams,
347 batchSize,
348 inputTensorDataLayout));
SiCong Lic0ed7ba2019-06-21 16:02:40 +0100349 outputDataContainers = { vector<uint8_t>(outputNumElements) };
SiCong Li39f46392019-06-21 12:00:04 +0100350 break;
351 case armnn::DataType::Float32:
352 default:
353 inputDataContainers.push_back(
SiCong Li898a3242019-06-24 16:03:33 +0100354 PrepareImageTensor<float>(imagePath.string(),
SiCong Li39f46392019-06-21 12:00:04 +0100355 inputTensorWidth, inputTensorHeight,
356 normParams,
357 batchSize,
358 inputTensorDataLayout));
SiCong Lic0ed7ba2019-06-21 16:02:40 +0100359 outputDataContainers = { vector<float>(outputNumElements) };
SiCong Li39f46392019-06-21 12:00:04 +0100360 break;
Francis Murtaghbee4bc92019-06-18 12:30:37 +0100361 }
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100362
363 status = runtime->EnqueueWorkload(networkId,
364 armnnUtils::MakeInputTensors(inputBindings, inputDataContainers),
365 armnnUtils::MakeOutputTensors(outputBindings, outputDataContainers));
366
367 if (status == armnn::Status::Failure)
368 {
Derek Lamberti08446972019-11-26 16:38:31 +0000369 ARMNN_LOG(fatal) << "armnn::IRuntime: Failed to enqueue workload for image: " << imageName;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100370 }
371
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100372 checker.AddImageResult<TContainer>(imageName, outputDataContainers);
373 }
374 }
375 else
376 {
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100377 return EXIT_SUCCESS;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100378 }
379
380 for(unsigned int i = 1; i <= 5; ++i)
381 {
382 std::cout << "Top " << i << " Accuracy: " << checker.GetAccuracy(i) << "%" << "\n";
383 }
384
Derek Lamberti08446972019-11-26 16:38:31 +0000385 ARMNN_LOG(info) << "Accuracy Tool ran successfully!";
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100386 return EXIT_SUCCESS;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100387 }
Pavel Macenauer855a47b2020-05-26 10:54:22 +0000388 catch (const armnn::Exception& e)
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100389 {
390 // Coverity fix: BOOST_LOG_TRIVIAL (typically used to report errors) may throw an
391 // exception of type std::length_error.
392 // Using stderr instead in this context as there is no point in nesting try-catch blocks here.
393 std::cerr << "Armnn Error: " << e.what() << std::endl;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100394 return EXIT_FAILURE;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100395 }
Pavel Macenauer855a47b2020-05-26 10:54:22 +0000396 catch (const std::exception& e)
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100397 {
398 // Coverity fix: various boost exceptions can be thrown by methods called by this test.
399 std::cerr << "WARNING: ModelAccuracyTool-Armnn: An error has occurred when running the "
400 "Accuracy Tool: " << e.what() << std::endl;
Matthew Sloyane7ba17e2020-10-06 10:03:21 +0100401 return EXIT_FAILURE;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100402 }
403}
404
SiCong Li898a3242019-06-24 16:03:33 +0100405map<std::string, std::string> LoadValidationImageFilenamesAndLabels(const string& validationLabelPath,
406 const string& imageDirectoryPath,
407 size_t begIndex,
408 size_t endIndex,
409 const string& blacklistPath)
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100410{
SiCong Li898a3242019-06-24 16:03:33 +0100411 // Populate imageFilenames with names of all .JPEG, .PNG images
412 std::vector<std::string> imageFilenames;
Matthew Sloyan2b428032020-10-06 10:45:32 +0100413 for (const auto& imageEntry : fs::directory_iterator(fs::path(imageDirectoryPath)))
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100414 {
Francis Murtagh532a29d2020-06-29 11:50:01 +0100415 fs::path imagePath = imageEntry.path();
Matthew Sloyan2b428032020-10-06 10:45:32 +0100416
417 // Get extension and convert to uppercase
418 std::string imageExtension = imagePath.extension().string();
419 std::transform(imageExtension.begin(), imageExtension.end(), imageExtension.begin(), ::toupper);
420
Francis Murtagh532a29d2020-06-29 11:50:01 +0100421 if (fs::is_regular_file(imagePath) && (imageExtension == ".JPEG" || imageExtension == ".PNG"))
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100422 {
SiCong Li898a3242019-06-24 16:03:33 +0100423 imageFilenames.push_back(imagePath.filename().string());
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100424 }
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100425 }
SiCong Li898a3242019-06-24 16:03:33 +0100426 if (imageFilenames.empty())
427 {
428 throw armnn::Exception("No image file (JPEG, PNG) found at " + imageDirectoryPath);
429 }
430
431 // Sort the image filenames lexicographically
432 std::sort(imageFilenames.begin(), imageFilenames.end());
433
434 std::cout << imageFilenames.size() << " images found at " << imageDirectoryPath << std::endl;
435
436 // Get default end index
437 if (begIndex < 1 || endIndex > imageFilenames.size())
438 {
439 throw armnn::Exception("Invalid image index range");
440 }
441 endIndex = endIndex == 0 ? imageFilenames.size() : endIndex;
442 if (begIndex > endIndex)
443 {
444 throw armnn::Exception("Invalid image index range");
445 }
446
447 // Load blacklist if there is one
448 std::vector<unsigned int> blacklist;
449 if (!blacklistPath.empty())
450 {
451 std::ifstream blacklistFile(blacklistPath);
452 unsigned int index;
453 while (blacklistFile >> index)
454 {
455 blacklist.push_back(index);
456 }
457 }
458
459 // Load ground truth labels and pair them with corresponding image names
460 std::string classification;
461 map<std::string, std::string> imageNameToLabel;
462 ifstream infile(validationLabelPath);
463 size_t imageIndex = begIndex;
464 size_t blacklistIndexCount = 0;
465 while (std::getline(infile, classification))
466 {
467 if (imageIndex > endIndex)
468 {
469 break;
470 }
471 // If current imageIndex is included in blacklist, skip the current image
472 if (blacklistIndexCount < blacklist.size() && imageIndex == blacklist[blacklistIndexCount])
473 {
474 ++imageIndex;
475 ++blacklistIndexCount;
476 continue;
477 }
478 imageNameToLabel.insert(std::pair<std::string, std::string>(imageFilenames[imageIndex - 1], classification));
479 ++imageIndex;
480 }
481 std::cout << blacklistIndexCount << " images blacklisted" << std::endl;
482 std::cout << imageIndex - begIndex - blacklistIndexCount << " images to be loaded" << std::endl;
483 return imageNameToLabel;
Éanna Ó Catháina4247d52019-05-08 14:00:45 +0100484}
SiCong Li898a3242019-06-24 16:03:33 +0100485
486std::vector<armnnUtils::LabelCategoryNames> LoadModelOutputLabels(const std::string& modelOutputLabelsPath)
487{
488 std::vector<armnnUtils::LabelCategoryNames> modelOutputLabels;
489 ifstream modelOutputLablesFile(modelOutputLabelsPath);
490 std::string line;
491 while (std::getline(modelOutputLablesFile, line))
492 {
493 armnnUtils::LabelCategoryNames tokens = armnnUtils::SplitBy(line, ":");
494 armnnUtils::LabelCategoryNames predictionCategoryNames = armnnUtils::SplitBy(tokens.back(), ",");
495 std::transform(predictionCategoryNames.begin(), predictionCategoryNames.end(), predictionCategoryNames.begin(),
496 [](const std::string& category) { return armnnUtils::Strip(category); });
497 modelOutputLabels.push_back(predictionCategoryNames);
498 }
499 return modelOutputLabels;
500}