Relevance of wavelet transform for taxonomy of EEG signals

P. Ramaraju
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引用次数: 5

Abstract

Electroencephalograms (EEGs) are becoming increasingly important measurements of brain activity and they have great potential for the diagnosis and treatment of mental and brain diseases and abnormalities (7). The frequency range of EEG signal is 0 to 64 Hz (8). These non-stationary signals are may contain indicators of current disease, or even warnings about impending diseases. An original investigative move toward for data mining of EEG signal based on continuous wavelet transformation (CWT) investigation is introduced and applied. This paper describes the relevance of wavelet transform (WT) model for categorization of electroencephalogram (EEG) signals which provides a system oriented scientific conclusion. Decision making was performed in two steps: development of a data bank for dissimilar EEG signals using the wavelet transform (WT) and identification of different EEG signals there in the data bank to wrap up a judgment making [14–16]. Two types of EEG signals were used as input patterns and illustrated as easel and case2. Within this practice the applied signal has been compared in a chronological order with divergent cases in existence in the database [17]. The signal under consideration was evaluated and distinguished the holder 100% truthfully
小波变换在脑电信号分类中的应用
脑电图(EEG)正在成为越来越重要的大脑活动测量,它们在精神和大脑疾病和异常的诊断和治疗方面具有巨大的潜力(7)。脑电图信号的频率范围为0到64 Hz(8)。这些非平稳信号可能包含当前疾病的指标,甚至可能包含即将发生疾病的警告。介绍并应用了基于连续小波变换(CWT)的脑电信号数据挖掘研究方法。本文介绍了小波变换(WT)模型在脑电图信号分类中的相关性,从而提供了一个系统导向的科学结论。决策分两步进行:利用小波变换(wavelet transform, WT)建立不同脑电信号的数据库,并在数据库中识别不同的脑电信号,最终做出判断[14-16]。采用两种类型的脑电信号作为输入模式,分别以画架和案例2表示。在这一实践中,应用的信号按时间顺序与数据库中存在的不同案例进行了比较[17]。所考虑的信号被评估并100%真实地区分了持有者
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