基于肌电信号的实时仿生手控系统的设计与开发

L. S. Praveen, S. N. Nagananda, P. Shankapal
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引用次数: 11

摘要

在修复领域进行了大量的研究,以恢复失去的器官的功能。仿生手是帮助截肢者替代手部功能的设备之一。仿生手是一种能够模仿正常手动作的仿生手。本文介绍了利用采集到的下肢肘部截肢者的肌电图(EMG)信号,对能够进行手部对立和重新定位的仿生手进行实时控制的研究进展。本文还提供了对识别控制仿生手所需动作的肌电信号分类所需的信号处理技术的理解。结果表明,采用均方根法和积分绝对值法进行特征提取,采用k近邻法和朴素贝叶斯模式分类法对肌电信号进行特征分类来控制仿生手。所开发的算法能够产生高达92-94%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Development of Real Time Bionic Hand Control Using EMG Signal
a large amount of study is carried out in the field of prosthetics to restore functionalities of lost organs. Bionic hand is one of those device which helps to replace the lost hand functionalities for the amputees. A lot of effort is put into to development of bionic hand which can able to mimic the action performed by normal hand. This paper provides an insight on development of real time control of bionic hand based on the collected Electromyography(EMG) signal from lower elbow amputee which able to perform hand opposition and re-position. This paper also provides an understanding of signal processing techniques required to classify the EMG signals for identifying required action to control bionic hand. The results indicate that root mean square and integrated absolute value for Feature extraction, k-Nearest Neighbor and Naive Bayesian Pattern Classification methods are chosen for feature classification EMG signals to control bionic hand. The developed algorithms are capable of producing accuracy up to 92-94%.
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