Improving myoelectric pattern recognition using invariant feature extraction

Jianwei Liu, X. Sheng, Dingguo Zhang, Xiangyang Zhu
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引用次数: 1

Abstract

The existing algorithms of myoelectric pattern recognition (MPR) are far from enough to satisfy the criteria which an ideal control system for upper extremity prostheses should fulfill. This study focuses on the criterion of short training, or possibly zero training. Due to the non-stationarity inhered in surface electromyography (sEMG) signals, the system may need to be re-trained day by day in the extended usage of myoelectric protheses. However, as the subjects perform the same motion types in different days, we hypothesize there still exists some invariant characteristics in the sEMG signals. Therefore, give a set of training data from several days, it is possible to find an invariant component in them. To this end, an invariant feature space analysis (IFSA) framework based on kernel feature extraction is proposed in this paper. A desired transformation, which minimizes the dissimilarity between sEMG feature distributions of different days and maximizes the dependence between the training data and their corresponding labels, is found. The results show that the generalization ability of the classifier trained on previous days to the unseen testing days can be improved by using IFSA. More specifically, IFSA significantly outperforms Baseline (original input feature) with average classification rate of 1.11% to 1.69% (p <; 0.0001) in task including 9 motion classes or 13 motion classes. This implies that the promising approach can help for achieving the zero-training of MPR.
利用不变特征提取改进肌电模式识别
现有的肌电模式识别算法远远不能满足理想的上肢假肢控制系统的要求。本研究的重点是短期训练的标准,或者可能是零训练。由于表面肌电图(sEMG)信号的非平稳性,在肌电假肢的长期使用中,系统可能需要日复一日的重新训练。然而,由于受试者在不同的日子进行相同的运动类型,我们假设肌电信号中仍然存在一些不变的特征。因此,给出一组来自几天的训练数据,有可能在其中找到一个不变的成分。为此,本文提出了一种基于核特征提取的不变特征空间分析框架。找到了一种期望的转换,使不同日期的表面肌电信号特征分布之间的不相似性最小化,并使训练数据与其相应标签之间的依赖性最大化。结果表明,使用IFSA可以提高前几天训练到未见测试日的分类器的泛化能力。更具体地说,IFSA显著优于Baseline(原始输入特征),平均分类率为1.11%至1.69% (p <;0.0001),包括9个运动类别或13个运动类别。这意味着有希望的方法可以帮助实现MPR的零训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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