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Blind Separation of Surface Electromyographic Mixtures from Two Finger Extensor Muscles

机译:从两个手指伸肌肌肉表面肌电混合物的盲分离

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Blind source separation (BSS) was performed to reduce the crosstalk in the surface electromyografic signals (SEMG) for the muscle force estimation applications. A convolutive mixture model was employed to separate the SEMG signals from two finger extensor muscles using a frequency-domain approach. It was assumed that the tension of each muscle varies independently and the independence of the SEMG was replaced by minimization of the covariance of muscle forces represented by integrated SEMG. This covariance was also used to resolve the permutation ambiguity inherent to the frequency-domain BSS. The forces estimated by the reconstructed sources were compared with the measured forces to calculate the crosstalk reduction efficiency. The proposed algorithm was shown to be more effective in frequency domain than an ICA algorithm for extensor muscles crosstalk reduction.
机译:进行盲源分离(BSS)以减少表面肌电信号(SEMG)中的串扰,以进行肌肉力估计应用。卷积混合模型用于使用频域方法从两个手指伸肌分离SEMG信号。假定每条肌肉的张力独立变化,而SEMG的独立性由最小化以集成式SEMG代表的肌肉力量的协方差所取代。此协方差还用于解决频域BSS固有的置换歧义。将重构源估算的力与测得的力进行比较,以计算出降低串扰的效率。结果表明,所提出的算法在频域上比ICA算法在减少伸肌串扰方面更有效。

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