基于k近邻的肌电信号人体手臂运动识别算法

M. Z. Al-Faiz, A. Ali, A. H. Miry
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引用次数: 37

摘要

在人机界面中,基于任务上下文信息的运动预测有可能提高运动分类的鲁棒性和可靠性,从而控制人类辅助机械手。肌电信号经过处理后可作为人工手臂的控制源。本工作的目的是利用k -最近邻对假肢臂的不同运动进行多参数更好的分类。K-最近邻(K- nn)规则是模式识别中最简单、最重要的方法之一。利用MATLAB对该结构进行了仿真。R2009a,并与传统的人工神经网络(ANN)识别方法进行了比较,得到了满意的结果,说明该结构能够识别基于肌电信号的人体手臂运动。结果表明,相对于人工神经网络,该方法在识别系统中重要的时间方面取得了一致的良好性能,在较低信噪比的信号中具有更好的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A k-nearest neighbor based algorithm for human arm movements recognition using EMG signals
In a human-robot interface, the prediction of motion, which is based on context information of a task, has the potential to improve the robustness and reliability of motion classification to control human-assisting manipulators. The electromyography (EMG) signals can be used as a control source of artificial arm after it has been processed. The objective of this work is to achieve better classification with multiple parameters using K-Nearest Neighbor for different movements of a prosthetic arm. A K- Nearest Neighbor (K-NN) rule is one of the simplest and the most important methods in pattern recognition. The proposed structure is simulated using MATLAB Ver. R2009a, and satisfied results are obtained by comparing with conventional method of recognition using Artificial Neural Network(ANN), that explains the ability of the proposed structure to recognize the movements of human arm based EMG signals. Results show the proposed technique achieved a uniformly good performance with respect to ANN in term of time which is important in recognition systems, better accuracy in recognition when applied to lower SNR signal.
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