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一种基于深度特征聚类的情绪识别中特征选择的创新型多模型神经网络方法。

An Innovative Multi-Model Neural Network Approach for Feature Selection in Emotion Recognition Using Deep Feature Clustering.

机构信息

Telecommunication Engineering Department, University of Engineering and Technology, Taxila 47050, Pakistan.

Computer Science Department, University of Engineering and Technology, Taxila 47050, Pakistan.

出版信息

Sensors (Basel). 2020 Jul 5;20(13):3765. doi: 10.3390/s20133765.

Abstract

Emotional awareness perception is a largely growing field that allows for more natural interactions between people and machines. Electroencephalography (EEG) has emerged as a convenient way to measure and track a user's emotional state. The non-linear characteristic of the EEG signal produces a high-dimensional feature vector resulting in high computational cost. In this paper, characteristics of multiple neural networks are combined using Deep Feature Clustering (DFC) to select high-quality attributes as opposed to traditional feature selection methods. The DFC method shortens the training time on the network by omitting unusable attributes. First, Empirical Mode Decomposition (EMD) is applied as a series of frequencies to decompose the raw EEG signal. The spatiotemporal component of the decomposed EEG signal is expressed as a two-dimensional spectrogram before the feature extraction process using Analytic Wavelet Transform (AWT). Four pre-trained Deep Neural Networks (DNN) are used to extract deep features. Dimensional reduction and feature selection are achieved utilising the differential entropy-based EEG channel selection and the DFC technique, which calculates a range of vocabularies using k-means clustering. The histogram characteristic is then determined from a series of visual vocabulary items. The classification performance of the SEED, DEAP and MAHNOB datasets combined with the capabilities of DFC show that the proposed method improves the performance of emotion recognition in short processing time and is more competitive than the latest emotion recognition methods.

摘要

情感感知是一个正在迅速发展的领域,它允许人们与机器之间进行更加自然的交互。脑电图 (EEG) 已成为测量和跟踪用户情绪状态的一种便捷方式。EEG 信号的非线性特征产生了高维特征向量,导致计算成本很高。在本文中,使用深度特征聚类 (DFC) 结合多个神经网络的特性,选择高质量的属性,而不是传统的特征选择方法。DFC 方法通过省略不可用的属性来缩短网络的训练时间。首先,经验模态分解 (EMD) 被用作一系列频率来分解原始 EEG 信号。在使用解析小波变换 (AWT) 进行特征提取之前,将分解后的 EEG 信号的时空分量表示为二维频谱图。使用四个预训练的深度神经网络 (DNN) 提取深度特征。利用基于差分熵的 EEG 通道选择和 DFC 技术进行降维和特征选择,该技术使用 k-均值聚类计算一系列词汇。然后从一系列可视词汇项中确定直方图特征。将 SEED、DEAP 和 MAHNOB 数据集的分类性能与 DFC 的功能相结合,表明所提出的方法提高了短处理时间内的情感识别性能,并且比最新的情感识别方法更具竞争力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6d9f/7374326/b48c8e355820/sensors-20-03765-g001.jpg

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