# Copyright © 2020 Arm Ltd and Contributors. All rights reserved. # SPDX-License-Identifier: MIT """ Contains functions specific to decoding and processing inference results for YOLO V3 Tiny models. """ import cv2 import numpy as np def iou(box1: list, box2: list): """ Calculates the intersection-over-union (IoU) value for two bounding boxes. Args: box1: Array of positions for first bounding box in the form [x_min, y_min, x_max, y_max]. box2: Array of positions for second bounding box. Returns: Calculated intersection-over-union (IoU) value for two bounding boxes. """ area_box1 = (box1[2] - box1[0]) * (box1[3] - box1[1]) area_box2 = (box2[2] - box2[0]) * (box2[3] - box2[1]) if area_box1 <= 0 or area_box2 <= 0: iou_value = 0 else: y_min_intersection = max(box1[1], box2[1]) x_min_intersection = max(box1[0], box2[0]) y_max_intersection = min(box1[3], box2[3]) x_max_intersection = min(box1[2], box2[2]) area_intersection = max(0, y_max_intersection - y_min_intersection) *\ max(0, x_max_intersection - x_min_intersection) area_union = area_box1 + area_box2 - area_intersection try: iou_value = area_intersection / area_union except ZeroDivisionError: iou_value = 0 return iou_value def yolo_processing(output: np.ndarray, confidence_threshold=0.40, iou_threshold=0.40): """ Performs non-maximum suppression on input detections. Any detections with IOU value greater than given threshold are suppressed. Args: output: Vector of outputs from network. confidence_threshold: Selects only strong detections above this value. iou_threshold: Filters out boxes with IOU values above this value. Returns: A list of detected objects in the form [class, [box positions], confidence] """ if len(output) != 1: raise RuntimeError('Number of outputs from YOLO model does not equal 1') # Find the array index of detections with confidence value above threshold confidence_det = output[0][:, :, 4][0] detections = list(np.where(confidence_det > confidence_threshold)[0]) all_det, nms_det = [], [] # Create list of all detections above confidence threshold for d in detections: box_positions = list(output[0][:, d, :4][0]) confidence_score = output[0][:, d, 4][0] class_idx = np.argmax(output[0][:, d, 5:]) all_det.append((class_idx, box_positions, confidence_score)) # Suppress detections with IOU value above threshold while all_det: element = int(np.argmax([all_det[i][2] for i in range(len(all_det))])) nms_det.append(all_det.pop(element)) all_det = [*filter(lambda x: (iou(x[1], nms_det[-1][1]) <= iou_threshold), [det for det in all_det])] return nms_det def yolo_resize_factor(video: cv2.VideoCapture, input_data_shape: tuple): """ Gets a multiplier to scale the bounding box positions to their correct position in the frame. Args: video: Video capture object, contains information about data source. input_data_shape: Contains shape of model input layer. Returns: Resizing factor to scale box coordinates to output frame size. """ frame_height = video.get(cv2.CAP_PROP_FRAME_HEIGHT) frame_width = video.get(cv2.CAP_PROP_FRAME_WIDTH) _, model_height, model_width, _= input_data_shape return max(frame_height, frame_width) / max(model_height, model_width)