#!/usr/bin/env python3 # Copyright © 2020 NXP and Contributors. All rights reserved. # SPDX-License-Identifier: MIT import pyarmnn as ann import numpy as np import os from PIL import Image import example_utils as eu def preprocess_onnx(img: Image, width: int, height: int, data_type, scale: float, mean: list, stddev: list): """Preprocessing function for ONNX imagenet models based on: https://github.com/onnx/models/blob/master/vision/classification/imagenet_inference.ipynb Args: img (PIL.Image): Loaded PIL.Image width (int): Target image width height (int): Target image height data_type: Image datatype (np.uint8 or np.float32) scale (float): Scaling factor mean: RGB mean values stddev: RGB standard deviation Returns: np.array: Preprocess image as Numpy array """ img = img.resize((256, 256), Image.BILINEAR) # first rescale to 256,256 and then center crop left = (256 - width) / 2 top = (256 - height) / 2 right = (256 + width) / 2 bottom = (256 + height) / 2 img = img.crop((left, top, right, bottom)) img = img.convert('RGB') img = np.array(img) img = np.reshape(img, (-1, 3)) # reshape to [RGB][RGB]... img = ((img / scale) - mean) / stddev # NHWC to NCHW conversion, by default NHWC is expected # image is loaded as [RGB][RGB][RGB]... transposing it makes it [RRR...][GGG...][BBB...] img = np.transpose(img) img = img.flatten().astype(data_type) # flatten into a 1D tensor and convert to float32 return img if __name__ == "__main__": args = eu.parse_command_line() model_filename = 'mobilenetv2-1.0.onnx' labels_filename = 'synset.txt' archive_filename = 'mobilenetv2-1.0.zip' labels_url = 'https://s3.amazonaws.com/onnx-model-zoo/' + labels_filename model_url = 'https://s3.amazonaws.com/onnx-model-zoo/mobilenet/mobilenetv2-1.0/' + model_filename # Download resources image_filenames = eu.get_images(args.data_dir) model_filename, labels_filename = eu.get_model_and_labels(args.model_dir, model_filename, labels_filename, archive_filename, [model_url, labels_url]) # 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 a model file net_id, parser, runtime = eu.create_onnx_network(model_filename) # Load input information from the model and create input tensors input_binding_info = parser.GetNetworkInputBindingInfo("data") # Load output information from the model and create output tensors output_binding_info = parser.GetNetworkOutputBindingInfo("mobilenetv20_output_flatten0_reshape0") output_tensors = ann.make_output_tensors([output_binding_info]) # Load labels labels = eu.load_labels(labels_filename) # Load images and resize to expected size images = eu.load_images(image_filenames, 224, 224, np.float32, 255.0, [0.485, 0.456, 0.406], [0.229, 0.224, 0.225], preprocess_onnx) eu.run_inference(runtime, net_id, images, labels, input_binding_info, output_binding_info)