基于肌电信号的手指运动识别假手控制

M. Haris, P. Chakraborty, B. V. Rao
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引用次数: 20

摘要

肌电图(EMG)信号可以定义为测量骨骼肌产生的电活动。它可以用于处理电子设备或假肢。如果我们能够以更高的可靠性和分类率识别肌电图信号捕捉到的手势,它将为假肢的操作提供良好的目的,并为截肢者和残疾人提供良好的生活质量。在本文中,我们研究了使用双通道肌电传感器捕获的9类单个和组合手指运动的识别。我们使用了两种不同的分类技术:人工神经网络(ANN)和k近邻(KNN)来对测试样本进行分类。七个时域特征a)平均绝对值,b)均方根,c)方差,d)波形长度,e)过零次数,f)复杂度,g)迁移率被用来唯一地表示肌电通道数据。根据实验结果确定了隐层数、学习常数、邻域数等调优参数,以获得更好的分类效果。分类精度被选择作为衡量每个分类器性能的指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMG signal based finger movement recognition for prosthetic hand control
Electromyography (EMG) signal can be defined as a measure of electrical activity produced by skeletal muscles. It can be used in handling electronic devices or prosthesis. If we are able recognize the hand gesture captured using EMG signal with greater reliability and classification rate, it could serve a good purpose for handling the prosthesis and to provide the good quality of life to amputees and disabled people. In this paper, we have worked on recognizing the 9 classes of individual and combined finger movement captured using 2 channel EMG sensor. We have used two different classification techniques such as Artificial Neural Network (ANN), and k- nearest neighbors (KNN), to classify the test samples. Seven time domain features a) Mean absolute value, b) root mean square, c) variance, d) waveform length, e) number of zero crossing, f) complexity, g) mobility have been used to uniquely represent the EMG channel data. Tuning parameters like number of hidden layers, learning constant and number of neighbors have been determined from the experimental results to achieve the better classification results. Classification accuracy has been selected as a metric to evaluate the performance of each classifier.
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