#!/usr/bin/env python3 # Copyright © 2020 NXP and Contributors. All rights reserved. # SPDX-License-Identifier: MIT import example_utils as eu import os if __name__ == "__main__": args = eu.parse_command_line() # names of the files in the archive labels_filename = 'labels_mobilenet_quant_v1_224.txt' model_filename = 'mobilenet_v1_1.0_224_quant.tflite' archive_filename = 'mobilenet_v1_1.0_224_quant_and_labels.zip' archive_url = \ 'https://storage.googleapis.com/download.tensorflow.org/models/tflite/mobilenet_v1_1.0_224_quant_and_labels.zip' model_filename, labels_filename = eu.get_model_and_labels(args.model_dir, model_filename, labels_filename, archive_filename, archive_url) image_filenames = eu.get_images(args.data_dir) # all 3 resources must exist to proceed further assert os.path.exists(labels_filename) assert os.path.exists(model_filename) assert image_filenames for im in image_filenames: assert(os.path.exists(im)) # Create a network from the model file net_id, graph_id, parser, runtime = eu.create_tflite_network(model_filename) # Load input information from the model # tflite has all the need information in the model unlike other formats input_names = parser.GetSubgraphInputTensorNames(graph_id) assert len(input_names) == 1 # there should be 1 input tensor in mobilenet input_binding_info = parser.GetNetworkInputBindingInfo(graph_id, input_names[0]) input_width = input_binding_info[1].GetShape()[1] input_height = input_binding_info[1].GetShape()[2] # Load output information from the model and create output tensors output_names = parser.GetSubgraphOutputTensorNames(graph_id) assert len(output_names) == 1 # and only one output tensor output_binding_info = parser.GetNetworkOutputBindingInfo(graph_id, output_names[0]) # Load labels file labels = eu.load_labels(labels_filename) # Load images and resize to expected size images = eu.load_images(image_filenames, input_width, input_height) eu.run_inference(runtime, net_id, images, labels, input_binding_info, output_binding_info)