Measuring electrodermal activity to determining sympathetic activity in sportsman and feature extraction with signal processing methods

Serhat Aladağ, Ayşegül Güven, N. Dolu, Hatice Özbek
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引用次数: 3

Abstract

Our study aimed to determine hemispheric differences using Galvanic Skin Response (GSR) which is measure to emotional sweating with signal processing and feature extraction methods. Active sportsmans (n=17) and non-sportsmans (n=21) who are student at university have been used in this study. The average of ages is 20±0.4. We worked on GSR records which have been denoise with signal processing method and include pure information. We applied feature extraction function to GSR signals and we compared from feature vector. Feature vector has 14 parameters. We chose parameters which are making difference. Acording to findings from group of volunteers which are sportsman, doing sport improves both of hemisphere.
测定运动员交感神经活动的皮电活动及信号处理方法的特征提取
本研究的目的是利用皮肤电反应(GSR)的信号处理和特征提取方法来确定大脑半球的差异。本研究以在校大学生中积极参加体育运动者(n=17)和非体育运动者(n=21)为研究对象。平均年龄20±0.4岁。我们研究了用信号处理方法去噪后包含纯信息的GSR记录。利用特征提取函数对GSR信号进行特征向量比较。特征向量有14个参数。我们选择了有影响的参数。根据一组运动员志愿者的研究结果,做运动可以改善两个半球。
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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