使用YOLOv3和YOLOv2图像处理行人和目标检测

Amar Lokesh Venkata Siva Sai Chatrasi, Anush Gupta Batchu, Leela Satya Kommareddy, Jyotsna Garikipati
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引用次数: 0

摘要

在数字照片和视频中检测特定类别的语义对象(如人类和其他事物)的实例是对象检测的目标,对象检测是计算机视觉和图像处理的一个分支。它经常用于包括图片注释、车辆计数和对象跟踪在内的活动,例如跟踪足球比赛中的球、板球棒的运动,或者主要是跟踪电影中的人物。在本研究中,OpenCV与YOLOv3神经网络一起用于从输入视频或实时网络摄像头中检测行人和物体。为了确定使用You Only Look Once (YOLO)算法识别行人和物体的准确性,沿着其边界生成一个带有其名称和Intersection Over Union (IOU)值的框,该框的值由公式Intersection/ area of Union确定。利用YOLOv3 tiny算法的预训练模型和COCO数据集的权值进行检测,并与YOLOv2算法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pedestrian and Object Detection using Image Processing by YOLOv3 and YOLOv2
Detecting instances of semantic objects of a specific class, such humans and other things, in digital photos and videos is the goal of object detection, a branch of computer vision and image processing. It is frequently used for activities including picture annotation, vehicle counting, and object tracking, such as tracing a ball during a football game, a cricket bat's movement, or primarily a person in a movie. In this study OpenCV is used with YOLOv3 neural network to detect pedestrians and objects from an input video or a real time webcam. In order to determine how accurately the pedestrians and objects are recognized using the You Only Look Once (YOLO) algorithm, a box is produced along its boundaries with its name and Intersection Over Union (IOU) value, which is determined using the formula area of Intersection/Area of Union. The pre-trained model and the weights of the COCO dataset of YOLOv3 tiny algorithm are used for the detection and compared with YOLOv2 algorithm.
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