利用肌电图信号对与抓握相关的手部动作进行分类

S. B. Akben
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引用次数: 2

摘要

本研究的目的是分类与六种手部动作相关的肌电信号,这些动作可以被认为是日常的手握。在研究的第一阶段,计算所有肌电信号的直方图值。然后,通过计算六种手势的直方图值的平均值,确定动作的共同特征。当这些平均值被检查时,可分性仅分为两类或三类数据。因此,之前将直方图数据分为三类。然后每个班被分成两个班。结果创建了六个不同的类。另一方面,对同一级联分类过程进行评估,将先前获得的两个类分为三个类。对比两种不同的级联分类结果,确定将三个类划分为之前得到的两个类,可以达到100%的成功率。因此,对于与手抓动作相关的肌电信号的分类,提出了一种非常成功和高效的特征提取和级联分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of hand movements related to grasp by using EMG signals
This study is aimed classification of Electromyography signals associated with the six hand movements which can be considered as daily hand grasps. In first stage of the study, histogram values of all EMG signals were calculated. Then, by calculating the average value of the histogram values for each of six hand gestures, common features of the movement was determined. Separability into only two or three classes of data have been identified when these average values were examined. Therefore the histogram data were previously divided into three classes. Then each of these classes were divided into two classes. As a result six different classes were created. On the other hand the same cascade classification process was evaluated by dividing three classes of each of previously obtained two classes. When two different cascade classification results were compared it was determined that the 100% success rate can be achieved by dividing three classes into previously obtained two classes. As a result, for the classification of electromyography signals associated with hand grasp movement it has been proposed a very successful and efficient feature extraction and cascade classification method.
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