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Application of Quantitative Methods of Signal Processing to Automatic Classification of Long-Term EEG Records

机译:信号处理定量方法在脑电长期记录自动分类中的应用

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The aim of the work described in the paper has been to develop a system for processing long-term EEG recordings, especially of comatose state EEG. However with respect to the signal character, the developed approach is suitable for analysis of sleep and newborn EEG too. EEG signal can be analysed both in time and frequency domains. In time domain the basic descriptive quantities are general and central moments of lower orders, in frequency domain the most frequently used method is Fourier transform. For segmentation, combination of non-adaptive and adaptive segmentation has been used. The approach has been tested on real sleep EEG recording for which the classification has been known. The core of the developed system is the training set on which practically depends the quality of classification. The training set containing 319 segments classified into 10 classes has been used for classification of the 2hour sleep EEG recording. For classification, algorithm of nearest neighbour has been used. In the paper, the issues of development of the training set and experimental results are discussed.
机译:本文所述工作的目的是开发一种用于处理长期脑电图记录,尤其是昏迷状态脑电图记录的系统。但是,就信号特性而言,开发的方法也适用于分析睡眠和新生儿脑电图。脑电信号可以在时域和频域中进行分析。在时域中,基本描述量是较低阶的总矩和中心矩,在频域中,最常用的方法是傅立叶变换。对于分割,已经使用了非自适应分割和自适应分割的组合。该方法已在已知分类的真实睡眠EEG记录上进行了测试。所开发系统的核心是训练集,该训练集实际上取决于分类的质量。包含319个细分为10类的训练集已用于2小时睡眠EEG记录的分类。为了进行分类,使用了最近邻居算法。在本文中,讨论了训练集的发展和实验结果的问题。

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