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A fast classification system for decoding of human hand configurations using multi-channel sEMG signals

机译:使用多通道sEMG信号解码人手配置的快速分类系统

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This paper proposes a novel fast classification system consisting of feature extraction and classifier to decode human hand configurations from multi-channel surface electromyogram (sEMG) signals that allows real-time classification of human movement intention as well as prothesis control. In order to enhance the learning speed and the performance of the classifier, we used a supervised feature extraction method (called class-augmented principal component analysis) and a fast learning classifier (called extreme learning machine). Experimental results show that the proposed classification system quickly learns and decodes the human hand configuration with about 92% accuracy.
机译:本文提出了一种新颖的快速分类系统,该系统由特征提取和分类器组成,可以从多通道表面肌电图(sEMG)信号中解码人的手的配置,从而可以对人的运动意图和假体进行实时分类。为了提高学习速度和分类器的性能,我们使用了监督特征提取方法(称为类增强主成分分析)和快速学习分类器(称为极限学习机)。实验结果表明,所提出的分类系统能够以约92%的准确度快速学习和解码人的手的配置。

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