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Recognition of hand motions via surface EMG signal with rough entropy

机译:通过带有粗糙熵的表面肌电信号识别手部动作

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The rough entropy (RoughEn) is developed based on the rough set theory. It has the advantage of low computational complexity, because there is no parameter to set in RoughEn. In this paper, we characterized the feature of surface electromyography (SEMG) signal with RoughEn and then used support vector machine to classify six different hand motions. The sample entropy, wavelet entropy and approximate entropy were compared with RoughEn to evaluate the performance of characterizing SEMG signals. The experimental results indicated that the RoughEn-based classification outperformed other entropy based methods for recognizing six hand motions from four-channel SEMG signals with the best recognition accuracy of 95.19 ± 2.99%. The results suggest that RoughEn has the potential to be used in the SEMG-based prosthetic control as a method of feature extraction.
机译:基于粗糙集理论发展了粗糙熵(RoughEn)。它具有计算复杂度低的优点,因为在RoughEn中没有要设置的参数。在本文中,我们使用RoughEn表征了表面肌电信号(SEMG)的特征,然后使用支持向量机对六种不同的手部运动进行分类。将样本熵,小波熵和近似熵与RoughEn进行比较,以评估表征SEMG信号的性能。实验结果表明,基于RoughEn的分类方法优于其他基于熵的方法,可从四通道SEMG信号中识别六种手部动作,其最佳识别精度为95.19±2.99%。结果表明,RoughEn具有作为基于特征的方法在基于SEMG的修复控制中使用的潜力。

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