// // Copyright © 2017 Arm Ltd. All rights reserved. // SPDX-License-Identifier: MIT // #include "../InferenceTest.hpp" #include "../ImagePreprocessor.hpp" #include "armnnTfLiteParser/ITfLiteParser.hpp" using namespace armnnTfLiteParser; int main(int argc, char* argv[]) { int retVal = EXIT_FAILURE; try { // Coverity fix: The following code may throw an exception of type std::length_error. std::vector imageSet = { {"Dog.jpg", 209}, // top five predictions in tensorflow: // ----------------------------------- // 209:Labrador retriever 0.949995 // 160:Rhodesian ridgeback 0.0270182 // 208:golden retriever 0.0192866 // 853:tennis ball 0.000470382 // 239:Greater Swiss Mountain dog 0.000464451 {"Cat.jpg", 283}, // top five predictions in tensorflow: // ----------------------------------- // 283:tiger cat 0.579016 // 286:Egyptian cat 0.319676 // 282:tabby, tabby cat 0.0873346 // 288:lynx, catamount 0.011163 // 289:leopard, Panthera pardus 0.000856755 {"shark.jpg", 3}, // top five predictions in tensorflow: // ----------------------------------- // 3:great white shark, white shark, ... 0.996926 // 4:tiger shark, Galeocerdo cuvieri 0.00270528 // 149:killer whale, killer, orca, ... 0.000121848 // 395:sturgeon 7.78977e-05 // 5:hammerhead, hammerhead shark 6.44127e-055 }; armnn::TensorShape inputTensorShape({ 1, 224, 224, 3 }); using DataType = uint8_t; using DatabaseType = ImagePreprocessor; using ParserType = armnnTfLiteParser::ITfLiteParser; using ModelType = InferenceModel; // Coverity fix: ClassifierInferenceTestMain() may throw uncaught exceptions. retVal = armnn::test::ClassifierInferenceTestMain( argc, argv, "mobilenet_v1_1.0_224_quant.tflite", // model name true, // model is binary "input", // input tensor name "MobilenetV1/Predictions/Reshape_1", // output tensor name { 0, 1, 2 }, // test images to test with as above [&imageSet](const char* dataDir, const ModelType & model) { // we need to get the input quantization parameters from // the parsed model auto inputBinding = model.GetInputBindingInfo(); return DatabaseType( dataDir, 224, 224, imageSet, inputBinding.second.GetQuantizationScale(), inputBinding.second.GetQuantizationOffset()); }, &inputTensorShape); } catch (const std::exception& e) { // Coverity fix: BOOST_LOG_TRIVIAL (typically used to report errors) may throw an // exception of type std::length_error. // Using stderr instead in this context as there is no point in nesting try-catch blocks here. std::cerr << "WARNING: " << *argv << ": An error has occurred when running " "the classifier inference tests: " << e.what() << std::endl; } return retVal; }