基于时域特征的表面肌电图手指抓球动作分类

G. A. Torres, V. Benitez
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引用次数: 6

摘要

本文提出了在特定机械位置变化的手指手势的分类,即区分几个机械变化很小的手指位置。提出了一种新的方法,这种方法不同于传统的手指运动分类方法,这种分类方法专注于非常好的区分彼此的手势。肌电信号(MES)根据球体的直径反映运动的意图是本研究的目的。通过在六名健康受试者前臂的五块肌肉上放置电极,同时进行球形固定,可以收集自然运动。给出时域特征向量作为线性判别分析模块的输入。LDA被用作统计模式分类器。我们发现肌肉信号和手指位置之间存在显著的关系。因此,可以对每一类手指位置进行分类,即基于TD特征为分类提供了有效的表示。LDA实现了将收集到的MES的隶属度分配到一个手指位置类,该位置类由球体直径定义。这些结果将有助于分析人手的运动,以改善机器人假手的控制和人机界面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finger movements classification from grasping spherical objects with surface electromyography using time domain based features
In this paper the classification of fingers gestures that vary in specific mechanical positions is proposed, which consist in distinguish several finger positions with very low mechanical variation. A new approach is presented that is different to the state of the art methods for the classification of fingers movements that have traditionally, focused on very well distinguished gestures from each other. Myoelectric signals (MES) reflect the intention of the movement according to the diameter of the sphere sustained is the objective of the present study. Natural motions are collected by placing electrodes on five muscles on the forearm of six healthy subjects, while performing spherical fastenings. A time domain (TD) feature vector is given as inputs to a linear discriminant analysis (LDA) module. LDA is used as statistical pattern classifier. We show that there exist significant relationship between muscle signals and fingers positions. Therefore, it is possible to categorize each class of finger position, that is, TD feature based provide an effective representation for classification. LDA achieve the assignment of the membership of a MES collected to one fingers position class, which is defined by the diameter of sphere. These results will be useful for analysis of movement of the human hand to improve control of robotic prosthetic hand and man-machine interfaces.
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