# Copyright © 2020 Arm Ltd and Contributors. All rights reserved. # SPDX-License-Identifier: MIT """ Object detection demo that takes a video stream from a device, runs inference on each frame producing bounding boxes and labels around detected objects, and displays a window with the latest processed frame. """ import os import sys script_dir = os.path.dirname(__file__) sys.path.insert(1, os.path.join(script_dir, '..', 'common')) import cv2 from argparse import ArgumentParser from ssd import ssd_processing, ssd_resize_factor from yolo import yolo_processing, yolo_resize_factor from utils import dict_labels from cv_utils import init_video_stream_capture, preprocess, draw_bounding_boxes from network_executor import ArmnnNetworkExecutor def get_model_processing(model_name: str, video: cv2.VideoCapture, input_binding_info: tuple): """ Gets model-specific information such as model labels and decoding and processing functions. The user can include their own network and functions by adding another statement. Args: model_name: Name of type of supported model. video: Video capture object, contains information about data source. input_binding_info: Contains shape of model input layer, used for scaling bounding boxes. Returns: Model labels, decoding and processing functions. """ if model_name == 'ssd_mobilenet_v1': return ssd_processing, ssd_resize_factor(video) elif model_name == 'yolo_v3_tiny': return yolo_processing, yolo_resize_factor(video, input_binding_info) else: raise ValueError(f'{model_name} is not a valid model name') def main(args): video = init_video_stream_capture(args.video_source) executor = ArmnnNetworkExecutor(args.model_file_path, args.preferred_backends) model_name = args.model_name process_output, resize_factor = get_model_processing(args.model_name, video, executor.input_binding_info) labels = dict_labels(args.label_path, include_rgb=True) while True: frame_present, frame = video.read() frame = cv2.flip(frame, 1) # Horizontally flip the frame if not frame_present: raise RuntimeError('Error reading frame from video stream') if model_name == "ssd_mobilenet_v1": input_tensors = preprocess(frame, executor.input_binding_info, True) else: input_tensors = preprocess(frame, executor.input_binding_info, False) print("Running inference...") output_result = executor.run(input_tensors) detections = process_output(output_result) draw_bounding_boxes(frame, detections, resize_factor, labels) cv2.imshow('PyArmNN Object Detection Demo', frame) if cv2.waitKey(1) == 27: print('\nExit key activated. Closing video...') break video.release(), cv2.destroyAllWindows() if __name__ == '__main__': parser = ArgumentParser() parser.add_argument('--video_source', type=int, default=0, help='Device index to access video stream. Defaults to primary device camera at index 0') parser.add_argument('--model_file_path', required=True, type=str, help='Path to the Object Detection model to use') parser.add_argument('--model_name', required=True, type=str, help='The name of the model being used. Accepted options: ssd_mobilenet_v1, yolo_v3_tiny') parser.add_argument('--label_path', required=True, type=str, help='Path to the labelset for the provided model file') parser.add_argument('--preferred_backends', type=str, nargs='+', default=['CpuAcc', 'CpuRef'], help='Takes the preferred backends in preference order, separated by whitespace, ' 'for example: CpuAcc GpuAcc CpuRef. Accepted options: [CpuAcc, CpuRef, GpuAcc]. ' 'Defaults to [CpuAcc, CpuRef]') args = parser.parse_args() main(args)