癫痫检测系统:特征与融合的比较研究

M.K.M. Rahman, Md.A.Mannan Joadder, Tanvir Ahammed Ashique
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引用次数: 3

摘要

人类面临着多种类型的神经系统疾病。其中癫痫是中风后最常见的。已经开发了几种利用脑电图信号识别癫痫发作的技术。这些工作的基本贡献可以大致分为三个不同的领域:预处理、特征提取和分类。在这项工作中,我们系统地比较了不同的特征及其融合。我们已经探讨了不同的特征和融合是如何执行不同的病例癫痫分类。我们还研究了特征和分类器的特定组合如何优于其他组合。此外,我们还观察到信息是如何在不同的扣押分类案例中分布在不同的频带上的。我们详细的实验结果说明了如何通过将时间和频率(小波)域特征与特定的分类器结合在一起来获得最大的性能。
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Seizure detection system: A comparative study on features and fusions
Human being faces numerous types of neurological disorders. Among them epilepsy is the most frequent after stroke. Several techniques have been developed to identify seizure using EEG signals. The basic contribution of those works can be broadly categorized in three different areas: pre-processing, feature extraction and classification. In this work, we systematically compare different features and their fusions. We have explored how different features and fusions are performing for different cases of seizure classification. We have also investigated how specific combination of features and classifier can outperform others. In addition, we have also observed how information is distributed across different frequency bands for different cases of seizure classifications. Our detailed experimental results illustrate how we can obtain maximum performance by integrating both time and frequency (wavelet) domain features together with specific classifier.
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