基于超维计算的功率谱密度癫痫检测

Lulu Ge, K. Parhi
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引用次数: 6

摘要

超维(HD)计算有望对两组数据进行分类。本文探讨了基于功率谱密度(PSD)特征的高清计算在癫痫患者脑电图(EEG)中的检测方法。本文使用了在Kaggle癫痫检测竞赛中收集的4只狗和8名人类患者的公开颅内脑电图(iEEG)数据。本文探讨了两种分类方法。首先,在高清分类的背景下,很少使用来自少量先验分类通道的PSD特征。其次,将从所有通道提取的所有PSD特征作为HD分类的特征。结果表明,对于大约一半的受试者,在HD分类背景下,少量特征优于所有特征,而对于另一半受试者,所有特征优于少量特征。12个科目中有6个科目的HD分类准确率达到95%以上,4个科目的准确率在85-95%之间。对于两个主题,使用HD计算的分类精度不如经典方法如支持向量机分类器。
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Seizure Detection Using Power Spectral Density via Hyperdimensional Computing
Hyperdimensional (HD) computing holds promise for classifying two groups of data. This paper explores seizure detection from electroencephalogram (EEG) from subjects with epilepsy using HD computing based on power spectral density (PSD) features. Publicly available intra-cranial EEG (iEEG) data collected from 4 dogs and 8 human patients in the Kaggle seizure detection contest are used in this paper. This paper explores two methods for classification. First, few ranked PSD features from small number of channels from a prior classification are used in the context of HD classification. Second, all PSD features extracted from all channels are used as features for HD classification. It is shown that for about half the subjects small number features outperform all features in the context of HD classification, and for the other half, all features outperform small number of features. HD classification achieves above 95% accuracy for six of the 12 subjects, and between 85-95% accuracy for 4 subjects. For two subjects, the classification accuracy using HD computing is not as good as classical approaches such as support vector machine classifiers.
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