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基于人工智能启发的脑电图空间特征选择方法,使用多变量经验模式分解进行情感分类。

AI inspired EEG-based spatial feature selection method using multivariate empirical mode decomposition for emotion classification.

作者信息

Asghar Muhammad Adeel, Khan Muhammad Jamil, Rizwan Muhammad, Shorfuzzaman Mohammad, Mehmood Raja Majid

机构信息

Telecommunication Engineering Department, University of Engineering and Technology, Taxila, Pakistan.

Computer Engineering Department, University of Engineering and Technology, Taxila, Pakistan.

出版信息

Multimed Syst. 2022;28(4):1275-1288. doi: 10.1007/s00530-021-00782-w. Epub 2021 Apr 21.

Abstract

Classification of human emotions based on electroencephalography (EEG) is a very popular topic nowadays in the provision of human health care and well-being. Fast and effective emotion recognition can play an important role in understanding a patient's emotions and in monitoring stress levels in real-time. Due to the noisy and non-linear nature of the EEG signal, it is still difficult to understand emotions and can generate large feature vectors. In this article, we have proposed an efficient spatial feature extraction and feature selection method with a short processing time. The raw EEG signal is first divided into a smaller set of eigenmode functions called (IMF) using the empirical model-based decomposition proposed in our work, known as intensive multivariate empirical mode decomposition (iMEMD). The Spatio-temporal analysis is performed with Complex Continuous Wavelet Transform (CCWT) to collect all the information in the time and frequency domains. The multiple model extraction method uses three deep neural networks (DNNs) to extract features and dissect them together to have a combined feature vector. To overcome the computational curse, we propose a method of differential entropy and mutual information, which further reduces feature size by selecting high-quality features and pooling the k-means results to produce less dimensional qualitative feature vectors. The system seems complex, but once the network is trained with this model, real-time application testing and validation with good classification performance is fast. The proposed method for selecting attributes for benchmarking is validated with two publicly available data sets, SEED, and DEAP. This method is less expensive to calculate than more modern sentiment recognition methods, provides real-time sentiment analysis, and offers good classification accuracy.

摘要

基于脑电图(EEG)对人类情绪进行分类是当今人类医疗保健和福祉领域非常热门的话题。快速有效的情绪识别在理解患者情绪和实时监测压力水平方面可以发挥重要作用。由于EEG信号具有噪声和非线性的特性,理解情绪仍然很困难,并且会生成大量特征向量。在本文中,我们提出了一种处理时间短的高效空间特征提取和特征选择方法。首先,使用我们工作中提出的基于经验模型的分解方法,即密集多元经验模态分解(iMEMD),将原始EEG信号划分为一组较小的本征模态函数,称为(IMF)。使用复连续小波变换(CCWT)进行时空分析,以收集时域和频域中的所有信息。多模型提取方法使用三个深度神经网络(DNN)来提取特征并将它们一起剖析,以获得组合特征向量。为了克服计算难题,我们提出了一种微分熵和互信息的方法,通过选择高质量特征并汇总k均值结果来进一步减小特征大小,从而生成维度更低的定性特征向量。该系统看似复杂,但一旦使用此模型进行网络训练,具有良好分类性能的实时应用测试和验证速度很快。所提出的用于基准测试的属性选择方法在两个公开可用的数据集SEED和DEAP上得到了验证。该方法的计算成本比更现代的情感识别方法低,提供实时情感分析,并具有良好的分类准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cce6/8057947/062b8f81d06c/530_2021_782_Fig1_HTML.jpg

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