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A Hybrid Scheme Using PCA and ICA Based Statistical Feature for Epileptic Seizure Recognition from EEG Signal

机译:一种混合方案,基于PCA和ICA的统计特征,用于癫痫癫痫发作识别识别

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Epilepsy is commonly regarded as a neurological disorder which can be characterized by repetitive unprovoked seizures. Electroencephalogram (EEG) is the neuro-physiological measurement of the brain's electrical activity recorded by electrodes placed in the cerebral cortex. The EEG signals play an essential role in the diagnosis of epilepsy. This paper proposes an approach for classifying the epileptic seizure patterns that carry significant indications regarding chronic neurological disorders. In this regard, a dimensionality reduction scheme, hybrid in nature, utilizing Independent and Principal Component Analysis (ICA and PCA) is developed followed by the extraction of statistical features for epileptic seizure identification. At first, a particular number of sub-frames is extracted from the given EEG signal. The extracted sub-frames are considered as the input of PCA and ICA. After that, the significant components of ICA and PCA are utilized for statistical feature extraction. Lastly, the supervised support vector machine (SVM) classifier is employed for the seizure classification purpose. To evaluate the raised method, the publicly available EPILEPTIC dataset is used. According to the experiments and result analysis, the proposed scheme achieves convincing performance in terms of accuracy when the first components of ICA and PCA algorithms are used for feature extraction.
机译:癫痫通常被认为是一种神经系统障碍,其能够以重复的未加工癫痫发作为特征。脑电图(EEG)是由脑皮层中的电极记录的大脑电活动的神经生理测量。 EEG信号在癫痫诊断中起重要作用。本文提出了一种对癫痫发作模式进行分类的方法,该癫痫发作模式携带关于慢性神经疾病的重要指示。在这方面,开发了一种维数,利用独立和主要成分分析(ICA和PCA)的性质,利用独立和主要成分分析(ICA和PCA),然后提取癫痫发作鉴定的统计特征。首先,从给定的EEG信号中提取特定数量的子帧。提取的子帧被认为是PCA和ICA的输入。之后,ICA和PCA的显着组分用于统计特征提取。最后,用于癫痫发作分类目的的监督支持向量机(SVM)分类器。为了评估升级的方法,使用公开的癫痫数据集。根据实验和结果分析,当ICA和PCA算法的第一个组分用于特征提取时,所提出的方案在准确性方面实现了令人信服的性能。

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