用于识别运动员动作的计算机视觉系统和深度学习:综述文章

K. I. Alsaif, A. S. Abdullah
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引用次数: 0

摘要

检测视频中的人物,然后跟踪他们的行动是非常重要的课题之一。跟踪人并研究其行为的过程可以产生大量信息,帮助研究人员研究反应。检测和跟踪人员移动的技术被应用于体育领域,对运动员在比赛中的移动进行研究和分析。根据跟踪运动员运动过程中获得的信息,可以提高比赛成绩,避免受伤和选择最佳比赛策略。在一些游戏中,运动员表现的准确性是衡量运动员得分的标准,如体操。本研究回顾了在区分和分析运动员动作的过程中依赖计算机视觉和深度学习的一系列文章。这些文章仅限于 2015 年至 2022 年,涉及不同的室内和室外运动。当然,对室内运动的研究效果更好,因为与室外运动相比,室内运动受天气条件的影响较小。回顾这些文章可以发现,依靠计算机视觉系统要比依靠人类标尺更有效,因为人类更容易出错。至于依靠深度学习技术来检测物体,由于能正确检测出物体,结果是非常积极的。对该物体的分析结果将更加准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer vision systems and deep learning for the recognition of athlete's movement: A review article
The process of detecting people in videos and then tracking their movement is one of the very important topics. The process of tracking people and studying their behaviour could result in a large set of information that can help researchers in studying reactions. The techniques of detection and tracking the movement of people are used in the sports field, where the athlete's movement is studied and analyzed within the game. Based on the information obtained from the process of tracking the athlete's movement, it is possible to improve the playing performance as well as avoid injuries and choose the best playing strategy. In some games, the accuracy of athlete's performance is a measure of the points given to the athlete's like gymnastics. This study reviews a set of articles that relied on computer vision as well as deep learning in the process of distinguishing and analysing the athlete's movement. The articles are confined to the years from 2015 to 2022, dealing with different indoor and outdoor sports. Certainly, the study of indoor games is better because the influence of weather conditions is less than that of outdoor ones. Reviewing the articles demonstrates that relying on computer vision systems is more effective than relying on human rulers, as humans are more prone to error. As for relying on the deep learning techniques for detecting the object, the results are very positive, due to the correct detection of the object. The results of the analysis of this object will be more accurate.
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