基于s变换的分形特征的心理任务分类

S. Sethi, R. Upadhyay
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引用次数: 4

摘要

脑机接口是人脑与外界可靠的通信接口。它通过从脑电图信号中提取有意义的特征,将人脑电活动转化为有用的指令。本文提出了实现脑机接口系统的特征提取技术和分类方法。提出的方法分为四个方法步骤。首先对脑电图信号进行分割和加窗处理。第二步,对脑电信号分段进行s变换。第三步,以s变换系数为特征计算Katz分形维数的均值和最大值。第四步使用随机森林、人工神经网络和支持向量机三种机器学习技术对提取的特征进行分类。分类结果反映了基于s变换的特征提取技术在脑机接口实现中的有效性。
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 mental tasks using S-transform based fractal features
Brain Computer Interface is a reliable communication interface between human brain and external world. It translates human brain electrical activity to useful command by extracting meaningful features from Electroencephalogram signals. In present work, feature extraction techniques and classification methods are proposed for implementation of Brain Computer Interface system. Proposed methodology is carried out in four methodological steps. At first step, segmentation and windowing of Electroencephalogram signals are performed. The S-transform of segmented Electroencephalogram signals is evaluated in second step. At third step, mean and maximum values of Katz's Fractal Dimension are calculated from S-transform coefficients as features. Classification of extracted features is carried out in the fourth step using three machine learning techniques viz. Random Forest, Artificial Neural Network and Support Vector Machine. Classification results reflect the efficiency of S-transform based feature extraction technique in Brain Computer Interface implementation.
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