Chen Chien-Chang, Lin Cheng-Shian, Chen Yen-Ting, Chen Wen-Her, Chen Chien-Hua, Chen I-Cheng
Department of Computer Science and Information Engineering, Tamkang University, New Taipei City 25137, Taiwan.
Office of Physical Education, Tamkang University, New Taipei City 25137, Taiwan.
J Imaging. 2023 Aug 31;9(9):181. doi: 10.3390/jimaging9090181.
Rowing competitions require consistent rowing strokes among crew members to achieve optimal performance. However, existing motion analysis techniques often rely on wearable sensors, leading to challenges in sporter inconvenience. The aim of our work is to use a graph-matching network to analyze the similarity in rowers' rowing posture and further pair rowers to improve the performance of their rowing team. This study proposed a novel video-based performance analysis system to analyze paired rowers using a graph-matching network. The proposed system first detected human joint points, as acquired from the OpenPose system, and then the graph embedding model and graph-matching network model were applied to analyze similarities in rowing postures between paired rowers. When analyzing the postures of the paired rowers, the proposed system detected the same starting point of their rowing postures to achieve more accurate pairing results. Finally, variations in the similarities were displayed using the proposed time-period similarity processing. The experimental results show that the proposed time-period similarity processing of the 2D graph-embedding model (GEM) had the best pairing results.
赛艇比赛要求船员之间的划桨动作保持一致,以实现最佳成绩。然而,现有的动作分析技术通常依赖于可穿戴传感器,这给运动员带来了不便。我们工作的目的是使用图匹配网络来分析赛艇运动员划桨姿势的相似性,并进一步将运动员配对,以提高他们赛艇队的成绩。本研究提出了一种新颖的基于视频的性能分析系统,使用图匹配网络来分析配对赛艇运动员。所提出的系统首先检测从OpenPose系统获取的人体关节点,然后应用图嵌入模型和图匹配网络模型来分析配对赛艇运动员之间划桨姿势的相似性。在分析配对赛艇运动员的姿势时,所提出的系统检测他们划桨姿势的相同起始点,以获得更准确的配对结果。最后,使用所提出的时间段相似性处理来显示相似性的变化。实验结果表明,所提出的二维图嵌入模型(GEM)的时间段相似性处理具有最佳的配对结果。