A novel dot-plot algorithm for surface EMG signal segment identification

Enoch C. Y. Sit, Yong Hu
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引用次数: 1

Abstract

Segmentation of surface EMG signal often involve in many scenarios including motion classification in robotic prostheses and motion segment identification. Many of them require a threshold that is predefined or a training data set. The objective of this paper is to find a way to perform segmentation without a threshold or training data set. Dot plot analysis has been widely used in bioinformatics to identify similar segments between proteins or DNA. The philosophy behind dot plot analysis can be applied to perform surface EMG signal segmentation. The properties of the new algorithm is examined. The major advantage of the dot-plot segmentation algorithm is that threshold is no long need to be estimated, instead the minimal length of a segment in a time series signal need to be declared.
一种新的表面肌电信号段识别点图算法
表面肌电信号的分割涉及到机器人假肢的运动分类和运动段识别等多种场景。其中许多都需要预定义的阈值或训练数据集。本文的目的是寻找一种不需要阈值或训练数据集的分割方法。点图分析已广泛应用于生物信息学中,用于鉴定蛋白质或DNA之间的相似片段。点图分析背后的原理可以应用于执行表面肌电信号分割。对新算法的性质进行了检验。点图分割算法的主要优点是不再需要估计阈值,而是需要声明时间序列信号中一个片段的最小长度。
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