Wavelet-Based EEG Preprocessing for Biometric Applications

Su Yang, F. Deravi
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引用次数: 27

Abstract

EEG signals, measuring transient brain activities, can be used as a source of biometric information with potential application in high-security person recognition scenarios. However, due to the inherent nature of these signals and the process used for their acquisition, their effective preprocessing is critical for their successful utilisation. In this paper we compare the effectiveness of different wavelet-based noise removal methods and propose an EEG-based biometric identification system which combines two such de-noising methods to enhance the signal preprocessing stage. In tests using 50 subjects from a public database, the proposed new approach is shown to provide improved identification performance over alternative techniques. Another important preprocessing consideration is the segmentation of the EEG record prior to de-noising. Different segmentation approaches were investigated and the trade-off between performance and computation time is explored. Finally the paper reports on the impact of the choice of wavelet function used for feature extraction on system performance.
基于小波的脑电信号预处理在生物识别中的应用
脑电图信号是一种测量大脑瞬态活动的信号,可以作为生物特征信息的来源,在高安全性的人员识别场景中具有潜在的应用前景。然而,由于这些信号的固有性质和用于采集它们的过程,它们的有效预处理对于它们的成功利用至关重要。在本文中,我们比较了不同的小波去噪方法的有效性,并提出了一种基于脑电图的生物识别系统,该系统结合了这两种去噪方法来增强信号的预处理阶段。在使用来自公共数据库的50个主题的测试中,所提出的新方法比其他技术提供了更好的识别性能。另一个重要的预处理考虑是在去噪之前对EEG记录进行分割。研究了不同的分割方法,并探讨了性能和计算时间之间的权衡。最后讨论了特征提取中小波函数的选择对系统性能的影响。
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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