Accurate and Efficient 3D Human Pose Estimation Algorithm Using Single Depth Images for Pose Analysis in Golf

Soonchan Park, Ju Yong Chang, Hyuk Jeong, Jae-Ho Lee, Jiyoung Park
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引用次数: 16

Abstract

Human pose analysis has been known to be an effective means to evaluate athlete's performance. Marker-less 3D human pose estimation is one of the most practical methods to acquire human pose but lacks sufficient accuracy required to achieve precise performance analysis for sports. In this paper, we propose a human pose estimation algorithm that utilizes multiple types of random forests to enhance results for sports analysis. Random regression forest voting to localize joints of the athlete's anatomy is followed by random verification forests that evaluate and optimize the votes to improve the accuracy of clustering that determine the final position of anatomic joints. Experiential results show that the proposed algorithm enhances not only accuracy, but also efficiency of human pose estimation. We also conduct the field study to investigate feasibility of the algorithm for sports applications with developed golf swing analyzing system.
基于单深度图像的高尔夫姿态分析中准确高效的三维人体姿态估计算法
人体姿势分析是评价运动员运动表现的有效手段。无标记的三维人体姿态估计是获取人体姿态最实用的方法之一,但缺乏足够的精度来实现精确的运动性能分析。在本文中,我们提出了一种利用多种类型的随机森林来增强运动分析结果的人体姿态估计算法。随机回归森林投票定位运动员解剖关节,然后随机验证森林评估和优化投票,以提高聚类的准确性,确定解剖关节的最终位置。实验结果表明,该算法不仅提高了人体姿态估计的精度,而且提高了人体姿态估计的效率。我们还利用开发的高尔夫挥杆分析系统进行了实地研究,以探讨该算法在体育应用中的可行性。
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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