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EMG-EMG correlation analysis for human hand movements

机译:人手运动的EMG-EMG相关分析

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摘要

In this paper, a novel electromyogram (EMG)-EMG correlation analysis method is proposed to identify human hand movements. Mutual information (MI) measure is employed to analyse the ordinal pattern of the surface EMG recordings. The MI measure is extracted from EMG signals and compared with other various sEMG features in the time and frequency domains. The comparative experimental results demonstrate that autoregressive coefficients (AR)+MI has a better performance than the single features and other multi-features. The multi-features combining the different features mostly have improved the recognition performance, and the MI provides important supplemental information to the hand movements. It is evident that the proposed correlation feature is essential to improve the recognition rate.
机译:本文提出了一种新型电灰度(EMG)-EMG相关分析方法来识别人类的手动运动。使用互信息(MI)测量来分析表面EMG录像的序数图案。 MI测量是从EMG信号中提取的,并与时间和频域中的其他各种SEMG特征进行了比较。比较实验结果表明,自回归系数(AR)+ MI具有比单个特征和其他多特征更好的性能。组合不同特征的多特征主要具有改进的识别性能,并且MI为手动运动提供重要的补充信息。很明显,所提出的相关特征对于提高识别率至关重要。

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