基于最小二乘拟合预测的粒子滤波和基于空间关系的多视点消除方法用于三维排球运动员跟踪

Shuyi Huang, X. Zhuang, N. Ikoma, M. Honda, T. Ikenaga
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引用次数: 10

摘要

排球视频分析中的多人跟踪对战术分析系统等应用的开发具有重要意义。为了获得高的跟踪成功率,球员之间频繁的遮挡是一个需要解决的问题。提出了三维空间中基于粒子滤波的最小二乘拟合预测模型和基于空间关系的多视图消除方法。该预测模型对前几个时间步的位置进行最小二乘拟合,可以准确预测遮挡期间球员的位置。该消除方法基于摄像机和球员位置之间的距离来消除其他球员的区域,这样可以单独区分球员,避免严重遮挡下的特征丢失。在东京大都会体育馆进行的2014年日本高中男子排球比赛决赛视频实验表明,该多人跟踪算法的平均跟踪成功率为97.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle filter with least square fitting prediction and spatial relationship based multi-view elimination for 3D Volleyball players tracking
Multiple players tracking in volleyball video analysis is very important for developing applications such as tactical analysis system. To obtain a high success rate of tracking, frequent occlusion among players is a problem to be solved. This paper proposes a least square fitting prediction model and a spatial relationship based multi-view elimination method based on a particle filter scheme in 3D space. The prediction model applies a least square fitting to positions in several previous time steps, which can predict player's position during occlusion accurately. The elimination method eliminates other players' regions based on distances between camera and players' positions, which distinguishes players separately and avoids feature loss in severe occlusion. Experiments conducted on videos of the Final Game of 2014 Japan Inter High School Games of Men's Volleyball in Tokyo Metropolitan Gymnasium show that this multiple players tracking algorithm achieves an average tracking success rate of 97.05%.
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