EPILEPTIC Seizure Classification Using Gradient Tree Boosting Classifier

M. Asjid Tanveer, A. Salman
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引用次数: 4

Abstract

Analysis of electroencephalography (EEG) is widely used for the diagnosis of epilepsy in which relevant information extraction from EEG signals poses great challenge due to noise and interference with various environmental factors. This paper proposes a binary classification system through which EEG signals are analyzed to distinguish between ictal and normal signals. For this purpose discrete wavelet transform (DWT), along with gradient boosting is used for classification. Two level, Daubechies order 4 wavelet are used to decompose the signal into three sub-bands after which Hjorth mobility and Hjorth complexity are calculated from these sub-bands resulting in a 6-dimensional feature vector. We use two benchmark datasets in our experimentation i.e., the Bonn's dataset and CHB-MIT dataset. We establish our classifier using training samples from the Bonn's dataset. Classification accuracy of 99.4% is achieved when tested on same dataset using different samples. To validate the effectiveness and better generalization of our system, we cross-test on CHB-MIT dataset which yielded accuracy of 96.8%. Achieved performance surpasses previous state of the art technologies, giving better classification results than other well-known techniques used for seizure classification. Considering low feature dimension and hence decreasing complexity, coupled with the high performance on both datasets prove the given method to be favourable for distinguishing between epileptic and non-epileptic EEG signals.
基于梯度树增强分类器的癫痫发作分类
脑电图分析被广泛用于癫痫的诊断,但由于噪声和各种环境因素的干扰,从脑电图信号中提取相关信息面临很大挑战。本文提出了一种二分类系统,通过该系统对脑电信号进行分析,以区分异常信号和正常信号。为此,采用离散小波变换(DWT)和梯度增强进行分类。采用二级,Daubechies阶4小波将信号分解为三个子带,然后从这些子带中计算Hjorth迁移率和Hjorth复杂度,从而得到一个6维特征向量。我们在实验中使用了两个基准数据集,即波恩数据集和CHB-MIT数据集。我们使用波恩数据集的训练样本来建立分类器。在同一数据集上使用不同样本进行测试,分类准确率达到99.4%。为了验证系统的有效性和更好的泛化,我们在CHB-MIT数据集上进行了交叉测试,准确率达到96.8%。所取得的性能超过了以前的技术水平,提供了比其他已知的癫痫分类技术更好的分类结果。考虑到低特征维数从而降低了复杂性,再加上在两个数据集上的高性能,证明该方法有利于区分癫痫和非癫痫性脑电图信号。
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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