基于腕部肌电图分析的手指拼写动作识别

Tsubasa Fukui, Momoyo Ito, S. Ito, M. Fukumi
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引用次数: 1

摘要

近年来,使用生物特征信息的界面正在不断发展。肌电图(EMG)已被用于各种情况。许多研究测量了肩部和手臂的肌电图,那里有很多肌肉。此外,湿式传感器也经常被使用。但在日常生活中使用不方便,成本高。在本研究中,为了方便和成本,我们测量手腕肌电图。目前,腕部肌电运动识别和个人识别方面的研究较多。这些研究进行了简单的动作和大量的电极来辨别。此外,还没有通过手势密码序列进行身份验证。在本文中,我们提出使用少量电极来实现复杂动作的运动识别和个人认证。对测量数据进行去噪、平滑等预处理。我们比较了支持向量机(SVM)和长短期记忆(LSTM)在运动识别和认证中的准确率。SVM和LSTM的准确率分别为60.4%和62.4%。在这种情况下,数据的数量很少。因此,有必要增加进行深度学习的数据量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motion Identification of fingerspelling by Wrist EMG Analysis
Recent years, interfaces using biometric information are progressing. Electromyogram(EMG) has been used in a variety of situations. Many studies have measured EMG in the shoulders and arms, where there is a lot of muscle mass. In addition, wet type sensors have been often used. However, those are inconvenient to use in everyday life and high cost. In this research, we measure wrist EMG for convenience and cost. Currently, researches have been done on the wrist EMG motion identification and personal identification. These studies have conducted simple movements and a large number of electrodes for discrimination. Furthermore, authentication by password sequence with gestures has not been done. In this paper, we propose to realize motion identification and personal authentication with complex movements using a small number of electrodes. The measured data was preprocessed such as removing noise and smoothing. We compared the accuracies obtained using Support Vector Machine(SVM) and Long Short-term memory(LSTM) for motion identification and authentication. The accuracies obtained using SVM and LSTM were 60.4% and 62.4%, respectively. In this case, the number of data was small. It is therefore necessary for increasing the number of data to perform deep learning.
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