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多通道表面肌电信号的自适应空间滤波

Adaptive spatial filtering of multichannel surface electromyogram signals.

作者信息

Ostlund N, Yu J, Roeleveld K, Karlsson J S

机构信息

Department of Biomedical Engineering & Informatics, University Hospital, Umeå, Sweden.

出版信息

Med Biol Eng Comput. 2004 Nov;42(6):825-31. doi: 10.1007/BF02345217.

Abstract

Spatial filtering of surface electromyography (EMG) signals can be used to enhance single motor unit action potentials (MUAPs). Traditional spatial filters for surface EMG do not take into consideration that some electrodes could have poor skin contact. In contrast to the traditional a priori defined filters, this study introduces an adaptive spatial filtering method that adapts to the signal characteristics. The adaptive filter, the maximum kurtosis filter (MKF), was obtained by using the linear combination of surrounding channels that maximises kurtosis. The MKF and conventional filters were applied to simulated EMG signals and to real EMG signals recorded with an electrode grid to evaluate their performance in detecting single motor units. The MKF was compared with conventional spatial filtering methods. Simulated signals, with different levels of spatially correlated noise, were used for comparison. The influence of one electrode with poor skin contact was also investigated. The MKF was found to be considerably better at enhancing a single MUAP than conventional methods for all levels of spatial correlation of the noise. For a spatial correlation of 0.97 of the noise, the improvement in the signal-to-noise ratio, where a MUAP could be detected, was at least 6dB. With a simulated poor skin contact for one electrode, the improvement over the other methods was at least 19 dB.

摘要

表面肌电图(EMG)信号的空间滤波可用于增强单个运动单位动作电位(MUAPs)。传统的表面肌电图空间滤波器没有考虑到一些电极可能与皮肤接触不良的情况。与传统的先验定义滤波器不同,本研究引入了一种自适应空间滤波方法,该方法能适应信号特征。自适应滤波器,即最大峰度滤波器(MKF),是通过使用使峰度最大化的周围通道的线性组合获得的。将MKF和传统滤波器应用于模拟肌电信号以及用电极网格记录的真实肌电信号,以评估它们在检测单个运动单位方面的性能。将MKF与传统空间滤波方法进行比较。使用具有不同空间相关噪声水平的模拟信号进行比较。还研究了一个电极皮肤接触不良的影响。结果发现,在所有噪声空间相关水平下,MKF在增强单个MUAP方面比传统方法要好得多。对于噪声的空间相关性为0.97的情况,在能够检测到MUAP的信噪比方面,改进至少为6dB。当模拟一个电极皮肤接触不良时,与其他方法相比的改进至少为19dB。

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