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Fuzzy Clustering and Feature Selection Analysis Toward Improved Identification of MUAP in Needle EMG Signal

机译:针对针EMG信号中改进Muap识别的模糊聚类和特征选择分析

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Decomposing the EMG signal and determining fiber's motor units is a challenging work in this area. The high amounts of resident noise and artifacts distort the signal. But, the decomposition gets more complicated, when we have motor unit action potential MUAP, interference during one channel recording. Considering this distortion, recognition and separation of motor units from each other, and determining the degree of their membership to each fiber gives valuable information. In this paper. First, motor units are determined and separated according to a set of filters similar to Gabor filters, then by extracting some different time-frequency and morphology features, the feature space will be determined. In the next step, the number of clusters which are the number of fibers will be determined. The clustering method used for this purpose is FCM clustering method. One of the innovations of the proposed method in this study is using an algorithm which improves the accuracy of the decomposition. This algorithm employs the membership information of each motor unit in fuzzy clustering along with the feature selection using mutual information of each motor unit. The results indicate 7.3% improvement while decreasing computational costs.
机译:分解EMG信号,并且确定纤维的马达单元是在这方面的一个具有挑战性的工作。的高含量的居民的噪声和伪影的信号失真。但是,分解变得更加复杂,当我们一个通道记录期间具有运动单位电位MUAP,干扰。考虑到这一点失真,相互承认和马达单元分离,以及确定其成员的每个光纤的程度给有价值的信息。在本文中。首先,马达单元根据一组相似的Gabor滤波器的过滤器来确定并分离,然后通过提取一些不同的时间 - 频率和形态特征,所述特征空间将被确定。在下一步骤中,群集其是纤维的数量将被确定的数目。用于此目的的聚类方法是FCM聚类方法。一个在这项研究中所提出的方法的创新使用提高了分解精度算法。本算法采用各电动机单元的模糊聚类的成员信息与使用各电动机单元的互信息特征选择沿。结果表明:7.3%的提高,同时降低计算成本。

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