基于生成模型的多模态情绪识别生理信号与脑电图的对比分析

Cristian A. Torres-Valencia, Hernan F. Garcia-Arias, Mauricio A. Alvarez Lopez, A. Orozco-Gutierrez
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引用次数: 48

摘要

多模态情感识别(MER)是机器学习的一种应用,它使用不同的生物信号来自动分类确定的情感状态。市场营销系统已被开发用于心理评估、焦虑评估、人机界面和市场营销等不同类型的应用。目前提出了几种用于情绪识别任务的分类空间,其中最著名的是离散空间和维度空间,分别用一些基本情绪和潜在维度来描述情绪。使用维度空间的分类允许分析更高范围的情绪状态。用于此目的的最常见的维度空间是唤醒/效价空间,在这个空间中,情绪是根据情绪的强度来描述的,在唤醒维度中,情绪从不活跃到活跃,在效价维度中,情绪从不愉快到愉快。由于情绪状态会从人体的不同生物系统中产生反应,因此生理信号和脑电图的使用非常适合于情绪识别。由于情绪的表达是一个动态过程,我们建议使用生成模型作为隐马尔可夫模型(HMM)来捕获信号的非动态,以便根据唤醒和价态进一步分类情绪状态。为了开展这项工作,使用了一个国际情绪分类数据库,即使用生理信号进行情绪分析数据集(DEAP)。本研究的目的是确定生理和脑电图信号中哪一个在情绪识别任务中带来更多的相关信息,使用不同信号及其组合的hmm进行了几个实验,结果表明,一些信号如脑电图和皮肤电反应(GSR)和心率(HR)在唤醒和价态水平之间带来了更多的区别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative analysis of physiological signals and electroencephalogram (EEG) for multimodal emotion recognition using generative models
Multimodal Emotion recognition (MER) is an application of machine learning were different biological signals are used in order to automatically classify a determined affective state. MER systems has been developed for different type of applications from psychological evaluation, anxiety assessment, human-machine interfaces and marketing. There are several spaces of classification proposed in the state of art for the emotion recognition task, the most known are discrete and dimensional spaces were the emotions are described in terms of some basic emotions and latent dimensions respectively. The use of dimensional spaces of classification allows a higher range of emotional states to be analyzed. The most common dimensional space used for this purpose is the Arousal/Valence space were emotions are described in terms of the intensity of the emotion that goes from inactive to active in the arousal dimension, and from unpleasant to pleasant in the valence dimension. The use of physiological signals and the EEG is well suited for emotion recognition due to the fact that an emotional states generates responses from different biological systems of the human body. Since the expression of an emotion is a dynamic process, we propose the use of generative models as Hidden Markov Models (HMM) to capture de dynamics of the signals for further classification of emotional states in terms of arousal and valence. For the development of this work an international database for emotion classification known as Dataset for Emotion Analysis using Physiological signals (DEAP) is used. The objective of this work is to determine which of the physiological and EEG signals brings more relevant information in the emotion recognition task, several experiments using HMMs from different signals and combinations of them are performed, and the results shows that some of those signals brings more discrimination between arousal and valence levels as the EEG and the Galvanic Skin Response (GSR) and the Heart rate (HR).
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