基于线性-非线性特征投影的多功能肌电手实时肌电模式识别

J. Chu, Inhyuk Moon, M. Mun
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引用次数: 37

摘要

提出了一种基于四通道肌电信号的实时肌电模式识别方法,用于多功能肌电手的控制。针对肌电信号的非平稳特性,采用小波包变换提取肌电信号特征。对于特征的降维和非线性映射,我们还提出了一种由PCA和SOFM组成的线性-非线性特征投影。主成分分析的降维简化了分类器的结构,减少了模式识别的处理时间。SOFM的非线性映射将pca约简后的特征转化为具有高类可分性的新特征空间。最后采用多层神经网络作为模式分类器。我们实现了一个多功能虚拟手的实时控制系统。实验结果表明,包括虚拟手控制在内的所有过程在125 msec内完成,该方法适用于无操作时间延迟的实时肌电手控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A real-time EMG pattern recognition based on linear-nonlinear feature projection for multifunction myoelectric hand
This paper proposes a novel real-time EMG pattern recognition for the control of multifunction myoelectric hand from four channel EMG signals. To cope with the nonstationary signal property of the EMG, features are extracted by wavelet packet transform. For dimensionality reduction and nonlinear mapping of the features, we also propose a linear-nonlinear feature projection composed of PCA and SOFM. The dimensionality reduction by PCA simplifies the structure of the classifier, and reduces processing time for the pattern recognition. The nonlinear mapping by SOFM transforms the PCA-reduced features to a new feature space with high class separability. Finally a multilayer neural network is employed as the pattern classifier. We implement a real-time control system for a multifunction virtual hand. From experimental results, we show that all processes, including virtual hand control, are completed within 125 msec, and the proposed method is applicable to real-time myoelectric hand control without an operation time delay.
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