A Sport Athlete Object Tracking Based on Deep Sort and Yolo V4 in Case of Camera Movement

Yao Zhang, Zhiyong Chen, Bohan Wei
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引用次数: 13

Abstract

Object tracking task has always been a major problem in the CV field. It is different from object detection. Object detection only needs to identify the type of object, while tracking task needs to identify its unique identity when a specific object is detected, such as REID problem. In sports-related fields, object tracking technology also has huge applications. For example, in football matches, camera tracking of footballs and tracking of athletes require this technology. This paper takes NBA and World Cup related scenes as the identification object, and aims to establish a tracking system for all players in the game, complete the realtime tracking of each athlete, so as to obtain relevant track information. In addition, the system can also help teachers review the competition in related education links and find the shortcomings of each student. Unlike most of filtering algorithms in past, this paper used the more cutting-edge deep learning technology in recent years, the YoloV4 and Sort's advanced version Deep Sort.
摄像机运动情况下基于深度排序和Yolo V4的运动员目标跟踪
目标跟踪任务一直是自动驾驶领域的一个主要问题。它不同于目标检测。对象检测只需要识别对象的类型,而跟踪任务则需要在检测到特定对象时识别其唯一身份,如REID问题。在体育相关领域,目标跟踪技术也有着巨大的应用。例如,在足球比赛中,摄像机对足球的跟踪和对运动员的跟踪都需要这项技术。本文以NBA和世界杯相关场景为识别对象,旨在建立一个针对比赛中所有球员的跟踪系统,完成对每个运动员的实时跟踪,从而获得相关的跟踪信息。此外,该系统还可以帮助教师回顾相关教育环节的竞争情况,发现每个学生的不足之处。与以往的大多数过滤算法不同,本文使用了近年来更前沿的深度学习技术,即YoloV4和Sort的高级版本deep Sort。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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