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Motion State Detection Based Prediction Model for Body Parts Tracking of Volleyball Players

机译:基于运动状态检测的排球运动员身体零件追踪预测模型

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Among sports analysis, tracking of athletes' body parts becomes a popular theme. Marking positions of body parts on the videos which contributes to TV contents and concrete motion capture of athletes which helps promotion of sports technology make sports analysis a commercially-viable research theme. This paper proposes motion state detection based prediction model to predict the near future motions of players' arms, band-width sobel likelihood model to observe the shape of human body parts and cluster scoring based estimation to avoid huge error. The motion state detection based prediction model can realize the tracking of players' high-speed and random motions without templates. The band-width sobel likelihood model can fully express unique shape features of target player's body parts. And the cluster scoring based estimation utilizes k-means cluster method to divide particle into 3 clusters and evaluate each cluster by scoring in order to prevent huge error from similar noises. The experiments are based on videos of the Final Game of 2014 Japan Inter High School Games of Men's Volleyball in Tokyo. The tracking success rate reached over 97% for lower body and over 80% for upper body, achieving average 64% improvement of hands compared to conventional work [1].
机译:体育分析中,追踪运动员的身体部位成为一个受欢迎的主题。标记身体部位在视频中有助于电视内容和运动员的具体运动捕获的视频,这有助于促进体育技术使体育分析成为商业上可行的研究主题。本文提出了基于运动状态检测的预测模型,以预测玩家臂的近期动作,带宽Sobel似然模型观察人体部件的形状和基于群的群体估计,以避免巨大的误差。基于运动状态检测的预测模型可以实现玩家的高速和随机运动的跟踪,而没有模板。带宽Sobel似然模型可以完全表达目标播放器车身部件的独特形状特征。并且基于集群评分的估计利用K-means群集方法将粒子划分为3个集群,并通过评分评估每个集群,以防止类似的噪音的巨大错误。实验是基于2014年最终游戏的视频,日本在东京男子排球中间高中比赛。下半身的跟踪成功率达到97%,对上半身达到80%以上,与常规工作相比,双手的平均改善了64%[1]。

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