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학술지 Discrimination of Three Emotions using Parameters of Autonomic Nervous System Response
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저자
장은혜, 박병준, 음영지, 김상협, 손진훈
발행일
201112
출처
대한인간공학회지, v.30 no.6, pp.705-713
ISSN
1229-1684
출판사
대한인간공학회
DOI
https://dx.doi.org/10.5143/JESK.2011.30.6.705
협약과제
11SF1100, 시각 생체 모방 소자 및 인지 시스템 기술 개발, 정명애
초록
Objective: The aim of this study is to compare results of emotion recognition by several algorithms which classify three different emotional states(happiness, neutral, and surprise) using physiological features. Background: Recent emotion recognition studies have tried to detect human emotion by using physiological signals. It is important for emotion recognition to apply on human-computer interaction system for emotion detection. Method: 217 students participated in this experiment.While three kinds of emotional stimuli were presented to participants, ANS responses(EDA, SKT, ECG, RESP, and PPG)as physiological signals were measured in twice first one for 60 seconds as the baseline and 60 to 90 seconds during emotional states. The obtained signals from the session of the baseline and of the emotional states were equally analyzed for 30 seconds.Participants rated their own feelings to emotional stimuli on emotional assessment scale after presentation of emotional stimuli. The emotion classification was analyzed by Linear Discriminant Analysis(LDA, SPSS 15.0), Support Vector Machine (SVM), and Multilayer perceptron(MLP) using difference value which subtracts baseline from emotional state. Results:The emotional stimuli had 96% validity and 5.8 point efficiency on average. There were significant differences of ANS responses among three emotions by statistical analysis. The result of LDA showed that an accuracy of classification in three different emotions was 83.4%. And an accuracy of three emotions classification by SVM was 75.5% and 55.6% by MLP.Conclusion: This study confirmed that the three emotions can be better classified by LDA using various physiological features than SVM and MLP. Further study may need to get this result to get more stability and reliability, as comparing with the accuracy of emotions classification by using other algorithms. Application: This could help get better chances to recognize various human emotions by using physiological signals as well as be applied on human-computer interaction system for recognizing human emotions.
KSP 제안 키워드
Autonomic nervous system(ANS), Emotion Detection, Emotion classification, Emotion recognition, Emotional states, Human Emotions, Interaction system, Linear Discriminant Analysis(LDA), Physiological features, Physiological signals, Point efficiency