Automatic Detection of Faults in Simulated Race Walking from a Fixed Smartphone Camera

Q2 Computer Science
Tomohiro Suzuki, K. Takeda, Keisuke Fujii
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引用次数: 0

Abstract

Automatic fault detection is a major challenge in many sports. In race walking, judges visually detect faults according to the rules. Hence, automatic fault detection systems will help a training of race walking without experts’ visual judgement. Some studies have attempted to use sensors and machine learning to automatically detect faults. However, there are problems associated with sensor attachments and equipment such as a high-speed camera, which conflict with the visual judgement of judges, and the interpretability of the fault detection models. In this study, we proposed an automatic fault detection system for non-contact measurement. We used pose estimation and machine learning models trained based on the judgements of multiple qualified judges to realize fair fault judgement. We verified them using smartphone videos of normal race walking and walking with intentional faults in several athletes including the medalist of the Tokyo Olympics. The results show that the proposed system detected faults with an average accuracy of over 90%. We also revealed that the machine learning model detects faults according to the rules. In addition, the intentional faulty walking movement of the medalist was different from that of other walkers. This finding informs realization of a more general fault detection model.
从固定智能手机摄像头自动检测模拟竞走中的故障
自动检测故障是许多运动项目面临的一大挑战。在竞走比赛中,裁判会根据规则目测错误。因此,自动故障检测系统将有助于在没有专家视觉判断的情况下进行竞走训练。一些研究尝试使用传感器和机器学习来自动检测故障。然而,传感器附件和设备(如高速摄像机)与裁判的视觉判断以及故障检测模型的可解释性存在冲突。在本研究中,我们提出了一种用于非接触测量的自动故障检测系统。我们使用姿态估计和根据多名合格评委的判断训练的机器学习模型来实现公平的故障判断。我们使用智能手机视频对包括东京奥运会奖牌获得者在内的几名运动员的正常竞走和故意犯错的竞走进行了验证。结果表明,所提出的系统检测出故障的平均准确率超过 90%。我们还发现,机器学习模型能根据规则检测到错误。此外,奖牌获得者的故意错误行走动作与其他行走者不同。这一发现为实现更通用的故障检测模型提供了依据。
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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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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