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Surface EMG Decomposition Based on K-means Clustering and Convolution Kernel Compensation

机译:基于 K -均值聚类和卷积核补偿的表面肌电分解

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摘要

A new approach has been developed by combining the -mean clustering (KMC) method and a modified convolution kernel compensation (CKC) method for multichannel surface electromyogram (EMG) decomposition. The KMC method was first utilized to cluster vectors of observations at different time instants and then estimate the initial innervation pulse train (IPT). The CKC method, modified with a novel multistep iterative process, was conducted to update the estimated IPT. The performance of the proposed -means clustering—Modified CKC (KmCKC) approach was evaluated by reconstructing IPTs from both simulated and experimental surface EMG signals. The KmCKC approach successfully reconstructed all 10 IPTs from the simulated surface EMG signals with true positive rates (TPR) of over 90% with a low signal-to-noise ratio (SNR) of −10 dB. More than 10 motor units were also successfully extracted from the 64-channel experimental surface EMG signals of the first dorsal interosseous (FDI) muscles when a contraction force was held at 8 N by using the KmCKC approach. A “two-source” test was further conducted with 64-channel surface EMG signals. The high percentage of common MUs and common pulses (over 92% at all force levels) between the IPTs reconstructed from the two independent groups of surface EMG signals demonstrates the reliability and capability of the proposed KmCKC approach in multichannel surface EMG decomposition. Results from both simulated and experimental data are consistent and confirm that the proposed KmCKC approach can successfully reconstruct IPTs with high accuracy at different levels of contraction.
机译:通过结合-均值聚类(KMC)方法和改进的卷积核补偿(CKC)方法进行多通道表面肌电图(EMG)分解,开发了一种新方法。首先利用KMC方法对不同时刻的观测向量进行聚类,然后估计初始神经支配脉冲序列(IPT)。进行了CKC方法,并用新颖的多步迭代过程进行了修改,以更新估计的IPT。通过从模拟和实验表面肌电信号重建IPT来评估所提出的均值聚类改进CKC(KmCKC)方法的性能。 KmCKC方法成功地从模拟的表面EMG信号重构了所有10个IPT,其真实阳性率(TPR)超过90%,信噪比(SNR)为-10dB。当使用KmCKC方法将收缩力保持在8 N时,还成功地从第一背骨间(FDI)肌肉的64通道实验表面肌电信号中提取了10多个运动单位。对64通道表面肌电信号进一步进行了“双源”测试。从两组独立的表面EMG信号重建的IPT之间,公共MU和公共脉冲的百分比很高(在所有力水平下,超过92%)证明了所提出的KmCKC方法在多通道表面EMG分解中的可靠性和能力。来自模拟和实验数据的结果是一致的,并证实了所提出的KmCKC方法可以成功地在不同的收缩水平下以高精度重建IPT。

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