Markerless motion capture of hands and fingers in high-speed throwing task and its accuracy verification

IF 0.4 Q4 ENGINEERING, MECHANICAL Mechanical Engineering Journal Pub Date : 2023-01-01 DOI:10.1299/mej.23-00220
Ayane KUSAFUKA, Naoki TSUKAMOTO, Kohei MIYATA, Kazutoshi KUDO
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Abstract

In human motion capture systems, reflective markers attached to the body have been widely used to track motion using optical cameras. However, when the speed of motion increases, because the brightness and angle of view of the camera are limited, and the markers often fall off, particularly of detailed body parts such as fingers in full-body movements, other parts of the body (palms) have been investigated. This study attempted to acquire finger movements during a high-speed throwing task without attaching markers using automatic image recognition technology based on deep learning (DeepLabCut) and verified its accuracy compared to conventional methods. As a result, the absolute distance between the 3D coordinates obtained from the two motion capture systems was an average of 15.5 to 29.4 mm depending on tracked points, and the correlation coefficients between them ranged from 0.932 to 0.999. Therefore, the shapes of the time-series profiles of the 3D coordinates obtained from the two motion- capture systems were similar. These results suggest that motion measurement using markerless motion capture is possible in environments where conventional motion capture systems are difficult to use.
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高速投掷动作中手和手指的无标记动作捕捉及其准确性验证
在人体运动捕捉系统中,附着在身体上的反射标记已被广泛用于使用光学摄像机跟踪运动。然而,当运动速度增加时,由于相机的亮度和视角是有限的,并且标记经常会脱落,特别是身体的详细部位,如全身运动中的手指,身体的其他部位(手掌)已经被研究过了。本研究尝试使用基于深度学习的自动图像识别技术(DeepLabCut)在不附加标记的情况下获取高速投掷任务中的手指运动,并与传统方法相比验证了其准确性。根据跟踪点的不同,两种运动捕捉系统获得的三维坐标之间的绝对距离平均为15.5 ~ 29.4 mm,相关系数为0.932 ~ 0.999。因此,两种运动捕捉系统获得的三维坐标的时间序列轮廓的形状是相似的。这些结果表明,在传统运动捕捉系统难以使用的环境中,使用无标记运动捕捉的运动测量是可能的。
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来源期刊
Mechanical Engineering Journal
Mechanical Engineering Journal ENGINEERING, MECHANICAL-
自引率
20.00%
发文量
42
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