Classification of electromyogram using vertical visibility algorithm with support vector machine

P. Artameeyanant, Sivarit Sultornsanee, K. Chamnongthai, K. Higuchi
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引用次数: 4

Abstract

Analyzing the electromyogram is an important issue on diagnosis of neuromuscular diseases. The classification of electromyogram signal plays a significant role in this issue. Since the characteristic of the signals is complex and non-stationary, so the complex network is an appropriate tool in extracting feature of the signal. In this paper we propose a novel feature extraction technique based on transforming the signal to complex network via vertical visibility algorithm. Characteristic on the measurements of community structure and distance property are examined. The pattern on the relationship of nodes in the network is investigated. Support vector machine was employed for classification. The proposed method can classify the signals into 3 cases, i.e., healthy, myopathy, and neuropathy, with remarkable experimental results.
基于支持向量机的垂直可见性肌电图分类
肌电图分析是神经肌肉疾病诊断的重要内容。肌电信号的分类在这一问题中起着重要的作用。由于信号的特征是复杂和非平稳的,因此复杂网络是提取信号特征的合适工具。本文提出了一种基于垂直可见性算法将信号转化为复杂网络的特征提取方法。探讨了社区结构和距离属性测量的特点。研究了网络中节点关系的规律。采用支持向量机进行分类。该方法可将信号分为健康、肌病和神经病三种情况,实验结果显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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