基于听觉肌电信号模式识别的长短期记忆手动作识别

Ali H. Al-timemy, Y. Serrestou, R. Khushaba, S. Yacoub, K. Raoof
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引用次数: 0

摘要

基于表面肌电图(EMG)信号的模式识别控制上肢假肢已经在文献中得到了大量的研究。然而,与信号非平稳性相关的挑战以及改变力水平、肢体位置和许多其他因素的影响都会导致系统稳定性差,阻碍了该技术的广泛采用。在这项研究中,我们提出了一种基于声学肌图(AMG)的替代方式,即记录低频肌肉振动,作为控制信号来破译预期的手部运动。本研究开发了一种由4个麦克风组成的定制AMG臂带,并对四肢健全的受试者进行了六类手部和手指运动的评估。利用时域和自回归(TD-AR)特征,以及Bi长短期记忆(BiLSTM)深度学习分类器进行分类。平均分类准确率达到85%,显示了将所开发的AMG臂带与PR系统一起用于假肢控制的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand Movement Recognition with Long Short-Term Memory based Pattern Recognition of Acoustic Myography signals
Upper limb prosthesis control with pattern recognition (PR)- based on surface Electromyogram (EMG) signals has been heavily investigated in the literature. However, challenges related to signal non-stationarity and its impact by changing force levels, limb positions and many other factors all lead to poor system stability, prevent the widespread adoption of this technology. In this study, we propose an alternative modality based on Acoustic Myography (AMG), a recording of muscle vibrations at low frequencies, as a control signal to decipher the intended hand movements. A custom-built AMG armband, consisting of 4 microphones, has been developed in this study and evaluated on intact-limbed subjects performing six classes of hand and finger movements. Time domain and auto-regression (TD-AR) features, in addition to Bi long-short term memory (BiLSTM) deep learning classifier were utilized to perform the classification. An average classification accuracy of 85% was obtained, which shows the potential of using the developed AMG armband, with PR system for prostheses control.
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