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Multi-Domain Feature Fusion for Emotion Classification Using DEAP Dataset

机译:使用DEAP数据集的情感分类多域特征融合

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Emotion recognition in real-time using electroencephalography (EEG) signals play a key role in human-computer interaction and affective computing. The existing emotion recognition models, that use stimuli such as music and pictures in controlled lab settings and limited number of emotion classes, have low ecological validity. Moreover, for effective emotion recognition identifying significant EEG features and electrodes is important. In our proposed model, we use the DEAP dataset consisting of physiological signals collected from 32 participants as they watched 40 movie (each of 60 seconds) clips. The main objective of this study is to explore multi-domain (time, wavelet, and frequency) features and hence, identify the set of stable features which contribute towards emotion classification catering to a larger number of emotion classes. Our proposed model is able to identify nine classes of emotions including happy, pleased, relaxed, excited, neutral, calm, distressed, miserable, and depressed with an average accuracy of 65.92%. Towards this end, we use support vector machine as a classifier along with 10-fold and leave-one-out cross-validation techniques. We achieve a significant emotion classification accuracy which could be vital towards developing solutions for affective computing and deal with a larger number of emotional states.
机译:使用脑电图(EEG)信号实时的情感识别在人机交互和情感计算中发挥着关键作用。现有的情感识别模型,使用刺激,如受控实验室设置中的音乐和图片和有限数量的情感课程,具有低生态有效性。此外,对于识别显着的EEG特征和电极的有效情绪识别很重要。在我们提出的模型中,我们使用由32名参与者收集的生理信号组成的DEAP数据集,因为他们观看了40部电影(每个60秒)剪辑。本研究的主要目的是探索多域(时间,小波和频率)特征,从而识别稳定的特征,这些特征有助于迎合迎合更大数量的情感课程。我们拟议的模型能够识别九类情绪,包括快乐,高兴,轻松,兴奋,中性,平静,苦恼,悲惨,郁闷,平均准确性为65.92%。为此,我们使用支持向量机作为分类器以及10倍并留出一张交叉验证技术。我们实现了显着的情感分类准确性,这对于开发情感计算的解决方案至关重要,并处理更大数量的情绪状态。

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