假肢应用中手部活动的受试者特定肌电图模式分类

Sneha J. Bansod, Sumit A. Raurale
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引用次数: 1

摘要

义肢截肢者在特定对象的腕部和肘部活动能力的基础上,对各种主动手部运动有很大的帮助。在康复领域,开发先进的人机界面一直是一个有趣的研究课题,其中生物医学肌电图(EMG)信号在其中起着至关重要的作用。肌电图的捕获、预处理、特征提取和分类是非常可取的,这可以对假肢应用中的神经生理、康复和辅助技术进步进行更标准化和精确的评估。本文研究了基于腕部-肘部运动的实时主动手运动肌电信号的捕获,以实现特征的同步分类。前臂前部和后部肌肉被认为是熟练操纵肌电图信号。特征提取采用统计一阶时频标度分析,模式分类采用线性判别分析(LDA),估计分类率约为(89-91)%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subject-specific EMG pattern classification ofactive hand movements for prosthesis applications
The prosthesis hand amputees are highly helpful for various active hand movements based on wrist and elbow mobility for specific subject. In the field of rehabilitation, development of an advanced human-machine interface has been an interesting research topic in which biomedical electromyography (EMG) signals, play a vital role. Capturing, pre-processing, feature extraction and classification of EMG is very desirable which allows more standardized and precise evaluation of the neurophysiological, rehabitational and assistive technological advancements in prosthetic applications. This paper concerns with the capturing of real-time active hand movements EMG signals based on wrist-elbow mobility for simultaneous classification of features. The Anterior and Posterior forearm muscles are considered for proficient manipulation of EMG signals. The Feature is extracted using statistical first order time-frequency scaling analysis with pattern classification via linear discriminant analysis (LDA) which estimates the classification rate of about (89-91)%.
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