基于肌电图的鼠标点击类型检测研究

R. B. Widodo, Devina Trixie, W. Swastika
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引用次数: 0

摘要

电脑的操作需要人类使用身体的几个部位。然而,在某些情况下,人类不能正确操作计算机或在正常位置;这些情况的例子是事故受害者和残疾人。因此,需要一个系统来帮助这些人更容易地操作计算机。本研究开发了一个可以使用肌电传感器、K-NN方法和支持向量机方法对点击类型进行分类的系统。肌电图传感器以人体肌肉收缩信号的形式获取数据,这些信号将被分为左键点击和右键点击。同时,这对于K-NN和SVM方法分类这些类型的点击是有用的。使用K-NN和SVM方法训练来自肌电传感器的数据,每个类(即左键和右键类)使用54个数据集。k - nn方法使用k=3、5、7、9和11进行训练。支持向量机方法使用线性核、径向基函数(RBF)、多项式和s型。然后比较两种方法的精度值。本研究利用k - nn方法对肌电传感器输入的点击类型进行了分类,其中k=3的准确率最高,为81.81%,使用多项式核的SVM方法准确率最高,为84.84%。通过比较两种方法,即采用多项式核支持向量机方法,获得了最高的精度值。添加数据集和使用其他方法进行实验作为进一步的比较,可以用来提高系统的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of EMG-based Mouse Clicks Type Detection
The operation of a computer required humans to use several parts of their body. However, there were some conditions where humans cannot operate computers correctly or in a normal position; examples of these conditions were accident victims and people with disabilities. Therefore, a system was needed to help make it easier for these people to operate the computer. This study developed a system that can classify click types using EMG sensors, the K-NN method, and the SVM method. EMG sensors helped take data in the form of signals from human muscle contractions which will later be classified into left-click and right-click. At the same time, it was useful for classifying these types of clicks for the K-NN and SVM methods. Data from EMG sensors were trained using the K-NN and SVM methods using 54 data sets in each class, namely left-click and right-click classes. The K-NN method was trained using k=3, 5, 7, 9, and 11. The SVM method used linear kernels, Radial Basis Function (RBF), polynomials, and sigmoids. After that, the accuracy values of the two methods will be compared. The study has successfully classified the types of clicks based on the input from the EMG sensor using the K-NN method with the highest accuracy results using k=3, which was 81.81%, and the SVM method using polynomial kernels which were 84.84%. The highest accuracy value was obtained by comparing the two methods, namely using the polynomial kernel SVM method. Adding datasets and conducting experiments using other methods as further comparisons can be used to improve system accuracy.
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