Influence of Forearm Postures on Hand-Wrist Gesture Recognition With Forearm Deformation Measurements

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Sung-Gwi Cho;Muhammad Akmal Bin Mohammed Zaffir;Masahiro Yoshikawa;Jun Takamatsu;Takahiro Wada
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Abstract

In hand-wrist gesture recognition based on biosignal, the negative influence of forearm posture variation on recognition accuracy is a common problem. Although the elbow/forearm-rotation angle influence has been investigated in several previous studies, the combined influence of these angles is still unclear. Therefore, we investigated the influence of forearm postures (both elbow and forearm rotation angles) by comparing the accuracies under various data configurations in which the posture combinations used for training the recognition model were different. We collected forearm deformation as biosignal for seven hand-wrist gestures under nine different forearm postures (combinations of three elbow and forearm rotation angles). The accuracy comparison results showed that the forearm rotation angle strongly affected recognition compared with the elbow angle, and the complex combination of elbow and forearm rotation angles had a stronger influence. The results of this study suggest that data collection can be made efficient by considering variations in the forearm postures. If time is available for data collection, it is effective to focus on the interpolation of forearm deformation to the untrained forearm postures based on those of the trained posture. If the time for data collection is limited, it is preferable to focus on variations in forearm rotation angle.
利用前臂形变测量前臂姿势对手腕手势识别的影响
在基于生物信号的手腕手势识别中,前臂姿势变化对识别准确率的负面影响是一个常见问题。虽然之前的一些研究已经调查了肘部/前臂旋转角度的影响,但这些角度的综合影响仍不清楚。因此,我们研究了前臂姿势(肘部和前臂旋转角度)的影响,比较了各种数据配置下的准确率,其中用于训练识别模型的姿势组合各不相同。我们收集了九种不同前臂姿势(三种肘关节和前臂旋转角度的组合)下的七种手腕手势的前臂变形作为生物信号。准确率比较结果表明,与肘部角度相比,前臂旋转角度对识别有很大影响,而肘部和前臂旋转角度的复杂组合影响更大。这项研究的结果表明,考虑到前臂姿势的变化,可以提高数据收集的效率。如果收集数据的时间充裕,以训练姿势的前臂变形为基础,对未经训练的前臂姿势进行内插是有效的。如果收集数据的时间有限,则最好侧重于前臂旋转角度的变化。
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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CiteScore
6.80
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