Limitations and Applications of ICA for Surface Electromyogram

Djuwari Djuwari, D. Kumar, S. Arjunan, G. Naik
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引用次数: 4

Abstract

This paper reports research conducted to evaluate the use of sparse ICA for the separation of muscle activity from SEMG. It discusses some of the conditions that could affect the reliability of the separation and evaluates issues related to the properties of the signals and number of sources. The paper reports tests using Zibulevsky's method of temporal plotting to identify number of independent sources in SEMG recordings. The theoretical analysis and experimental results demonstrate that sparse ICA is not suitable for SEMG signals. The results identify that the technique is unable to identify finite number of active muscles. The work demonstrates that even at extremely low level of muscle contraction, and with filtering using wavelets and band pass filters, it is not possible to get the data sparse enough to identify number of independent sources using Zibulevsky's sparse decomposition technique
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ICA在表面肌电图中的局限性与应用
本文报道了评估稀疏ICA用于从表面肌电信号中分离肌肉活动的研究。它讨论了一些可能影响分离可靠性的条件,并评估了与信号特性和源数量有关的问题。本文报告了使用Zibulevsky的时间绘图方法来识别表面肌电信号记录中独立源的数量的测试。理论分析和实验结果表明,稀疏ICA并不适用于表面肌电信号。结果表明,该技术无法识别有限数量的活动肌肉。这项工作表明,即使在极低的肌肉收缩水平下,使用小波和带通滤波器进行滤波,也不可能使数据稀疏到足以使用Zibulevsky的稀疏分解技术识别独立源的数量
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