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Classification of Three Negative Emotions based on Physiological Signals - Classification of fear, surprise and stress

机译:基于生理信号的三种负面情绪分类 - 恐惧,惊喜和压力的分类

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Physiological signal is one of the most commonly used emotional cues. In recent emotion classification research, the one of main topics is to recognize human's feeling or emotion using multi-channel physiological signals. In this study, we discuss the comparative results of emotion detection using several classification algorithms, which classify negative emotions (fear, surprise and stress) based on physiological features. Physiological signals, such as skin temperature (SKT), electrodermal activity (EDA), electrocardiogram (ECG), and photoplethysmography (PPG) were recorded while participants were exposed to emotional stimuli. Twenty-eight features were extracted from these signals. For classification of negative emotions, four machine learning algorithms, namely, Linear Discriminant Analysis (LDA), Classification And Regression Tree (CART), Self Organizing Map (SOMs), and Naive Bayes were used. The 70% of the whole datasets were selected randomly for training and the remaining patterns are used for testing purposes. Testing accuracy by using the 30% datasets ranged from 32.4% to 46.9% and, consequently the selected physiological features didn't contribute to classify the three negative emotions. In the further work, we intend to improve emotion recognition accuracy by applying the selected significant features, such as NSCR, SCR, SKT, and FFTap_HF.
机译:生理信号是最常用的情绪线索之一。在最近的情感分类研究中,主要主题之一是使用多通道生理信号来识别人类的感觉或情绪。在这项研究中,我们使用几种分类算法讨论情绪检测的比较结果,该算法根据生理特征来分类负面情绪(恐惧,惊喜和应力)。记录了生理信号,如皮肤温度(SKT),电寄射活动(EDA),心电图(ECG)和光增性肌拍(PPG),而参与者暴露于情绪刺激。从这些信号中提取了二十八个特征。对于负面情绪的分类,使用四种机器学习算法,即线性判别分析(LDA),分类和回归树(推车),自组织地图(SOM)和幼稚贝叶斯。随机选择70%的整个数据集进行培训,并且其余模式用于测试目的。使用30%数据集进行测试精度范围从32.4%到46.9%,因此所选的生理特征没有促进分类三种负面情绪。在进一步的工作中,我们打算通过应用所选择的显着特征,例如NSCR,SCR,SKT和FFTAP_HF来提高情感识别准确性。

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