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基于 Kinect 传感器提取的骨骼节点的时间和相对分析来识别和评分体育锻炼。

Recognition and Scoring Physical Exercises via Temporal and Relative Analysis of Skeleton Nodes Extracted from the Kinect Sensor.

机构信息

Department of Photogrammetry and Remote Sensing, Faculty of Surveying Engineering, K. N. Toosi University of Technology, Tehran 19967-15443, Iran.

Department of Geodesy and Surveying Engineering, Tafresh University, Tafresh 39518-79611, Iran.

出版信息

Sensors (Basel). 2024 Oct 18;24(20):6713. doi: 10.3390/s24206713.

Abstract

Human activity recognition is known as the backbone of the development of interactive systems, such as computer games. This process is usually performed by either vision-based or depth sensors. So far, various solutions have been developed for this purpose; however, all the challenges of this process have not been completely resolved. In this paper, a solution based on pattern recognition has been developed for labeling and scoring physical exercises performed in front of the Kinect sensor. Extracting the features from human skeletal joints and then generating relative descriptors among them is the first step of our method. This has led to quantification of the meaningful relationships between different parts of the skeletal joints during exercise performance. In this method, the discriminating descriptors of each exercise motion are used to identify the adaptive kernels of the Constrained Energy Minimization method as a target detector operator. The results indicated an accuracy of 95.9% in the labeling process of physical exercise motions. Scoring the exercise motions was the second step after the labeling process, in which a geometric method was used to interpolate numerical quantities extracted from descriptor vectors to transform into semantic scores. The results demonstrated the scoring process coincided with the scores derived by the sports coach by a 99.5 grade in the R index.

摘要

人体活动识别是交互式系统(如电脑游戏)发展的关键技术。这个过程通常通过基于视觉或深度传感器来实现。目前,已经为实现这一目标开发了各种解决方案;然而,这一过程的所有挑战尚未完全解决。在本文中,我们开发了一种基于模式识别的解决方案,用于对 Kinect 传感器前进行的物理运动进行标记和评分。我们方法的第一步是从人体骨骼关节中提取特征,然后在它们之间生成相关描述符。这导致了量化运动过程中骨骼关节不同部分之间的有意义关系。在该方法中,每个运动的判别描述符用于识别受限能量最小化方法的自适应核作为目标检测算子。结果表明,在物理运动的标记过程中,准确率达到 95.9%。在标记过程之后,是评分过程,在该过程中,使用几何方法对从描述符向量中提取的数值进行内插,以转换为语义评分。结果表明,评分过程与体育教练的评分相吻合,R 指数得分为 99.5 级。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b66d/11511515/7cded89878d2/sensors-24-06713-g001.jpg

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