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A Hybrid Fuzzy Cognitive Map/Support Vector Machine Approach for EEG-Based Emotion Classification Using Compressed Sensing

机译:一种混合模糊认知地图/支持矢量机器方法,用于使用压缩感测的基于EEG的情绪分类

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摘要

Due to the high dimensional, non-stationary and non-linear properties of electroencephalogram (EEG), a significant portion of research on EEG analysis remains unknown. In this paper, a novel approach to EEG-based human emotion study is presented using Big Data methods with a hybrid classifier. An EEG dataset is firstly compressed using compressed sensing, then, wavelet transform features are extracted, and a hybrid Support Vector Machine (SVM) and Fuzzy Cognitive Map classifier is designed. The compressed data is only one-fourth of the original size, and the hybrid classifier has the average accuracy by 73.32%. Comparing to a single SVM classifier, the average accuracy is improved by 3.23%. These outcomes show that psychological signal can be compressed without the sparsity identity. The stable and high accuracy classification system demonstrates that EEG signal can detect human emotion, and the findings further prove the existence of the inter-relationship between various regions of the brain.
机译:由于脑电图(EEG)的高尺寸,非静止和非线性性质(EEG),对EEG分析的一部分研究仍然是未知的。本文使用具有混合分类器的大数据方法介绍了一种基于EEG的人类情感研究的新方法。首先使用压缩感压缩EEG数据集,然后提取小波变换特征,并设计了混合支持向量机(SVM)和模糊认知地图分类器。压缩数据仅是原始大小的四分之一,混合分类器的平均精度为73.32%。比较单个SVM分类器,平均精度提高了3.23%。这些结果表明,在没有稀疏性身份的情况下可以压缩心理信号。稳定和高精度的分类系统表明EEG信号可以检测人类的情绪,并且结果进一步证明了大脑各个区域之间的关系的存在。

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