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Start and End Point Detection of Weightlifting Motion using CHLAC and MRA

机译:使用CHLAC和MRA的举重运动的开始和终点检测

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Extracting human motion segments of interest in image sequences is essential for quantitative analysis and effective video browsing, although it requires laborious human efforts. In analysis of sport motion such as weightlifting, it is required to detect the start and end of each weightlifting" motion in an automated manner and hopefully even for different camera angle-views. This paper describes a weightlifting motion detection method employing cubic higher-order local auto-correlation (CHLAC) and multiple regression analysis (MRA). This method extracts spatio-temporal motion features and leans the relationship between the features and specific motion, without prior knowledge about objects. To demonstrate the effectiveness of our method, the experiment was conducted on data captured from eight different viewpoints in practical situations. The detection rates for the start and end motions were more than 94% for 140 data in total even for different angle views, 100% for some angles.
机译:提取对图像序列的人类运动段对定量分析和有效的视频浏览至关重要,尽管它需要艰苦的人类努力。在分析诸如举重的运动运动中,需要以自动化方式检测每个举重的运动的开始和结束,并且希望甚至用于不同的相机角度视图。本文介绍了采用立方高阶的举重运动检测方法局部自相关(CHLAC)和多元回归分析(MRA)。该方法提取了时空运动特征,并倾向于特征和特定运动之间的关系,而无需现有对象的知识。为了证明我们方法的有效性,实验在实际情况下,在八个不同的观点捕获的数据上进行。即使对于不同的角度视图,140个数据的开始和结束运动的检测速率也超过94%,对于不同的角度,为某种角度为100%。

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