Emotion Recognition by Machine Learning Algorithms using Psychophysiological Signals

E. Jang, B. Park, Sang-Hyebo Kim, J. Sohn
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引用次数: 8

Abstract

Recently, emotion recognition systems based on physiological signals have introduced in humancomputer interaction researches. The aim of this study is to classify seven emotions (happiness, sadness, anger, fear, disgust, surprise, and stress) by machine learning algorithms using physiological signals. 12 college students participated in this experiment over 10 times. Total 70 emotional stimuli (10 emotional stimuli per each emotion) had been tested their suitability and effectiveness prior to experiment. Physiological signals, i.e. EDA, ECG, PPG, and SKT were acquired and were analyzed. Physiological signals were obtained prior to the presentation of emotional stimuli and while emotional stimuli were presented to participants. 28 features were extracted the acquired signals and analyzed for 30 seconds from the baseline and the emotional states. For emotion recognition, the data which is subtracted baseline values from the emotional state applied to 5 machine learning algorithm, i.e. FLD, CART, SOMs, Naive Bayes and SVM. The result showed that an accuracy of emotion classification by SVM was highest and lowest by FLD. This means that SVM is the best emotion recognition algorithm in this study. Our result can help emotion recognition studies lead to better chance to recognize not only basic emotion but also user’s various emotions, e.g., boredom, frustration, love, pain, etc., by using physiological signals. Also, it is able to be applied on many human-computer interaction devices for emotion detection.
基于心理生理信号的机器学习算法的情绪识别
近年来,基于生理信号的情感识别系统被引入到人机交互研究中。本研究的目的是通过使用生理信号的机器学习算法对七种情绪(快乐、悲伤、愤怒、恐惧、厌恶、惊讶和压力)进行分类。12名大学生参加了10次以上的实验。共70种情绪刺激(每种情绪10种情绪刺激)在实验前进行了适宜性和有效性测试。采集并分析各组生理信号:EDA、ECG、PPG、SKT。在呈现情绪刺激之前和呈现情绪刺激时获得生理信号。从采集到的信号中提取28个特征,进行30秒的基线和情绪状态分析。对于情绪识别,从情绪状态中减去基线值的数据应用于5种机器学习算法,即FLD、CART、SOMs、朴素贝叶斯和SVM。结果表明,SVM对情感分类的准确率最高,FLD对情感分类的准确率最低。这意味着SVM是本研究中最好的情绪识别算法。我们的结果可以帮助情绪识别研究更好地利用生理信号识别用户的基本情绪,以及用户的各种情绪,如无聊、沮丧、爱、痛苦等。此外,它还可以应用于许多人机交互设备的情感检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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