DocumentCode :
1472621
Title :
Detecting Naturalistic Expressions of Nonbasic Affect Using Physiological Signals
Author :
AlZoubi, Omar ; Mello, Sidney K D ; Calvo, Rafael A.
Author_Institution :
Sch. of Electr. & Inf. Technol., Univ. of Sydney, Sydney, NSW, Australia
Volume :
3
Issue :
3
fYear :
2012
Firstpage :
298
Lastpage :
310
Abstract :
Signals from peripheral physiology (e.g., ECG, EMG, and GSR) in conjunction with machine learning techniques can be used for the automatic detection of affective states. The affect detector can be user-independent, where it is expected to generalize to novel users, or user-dependent, where it is tailored to a specific user. Previous studies have reported some success in detecting affect from physiological signals, but much of the work has focused on induced affect or acted expressions instead of contextually constrained spontaneous expressions of affect. This study addresses these issues by developing and evaluating user-independent and user-dependent physiology-based detectors of nonbasic affective states (e.g., boredom, confusion, curiosity) that were trained and validated on naturalistic data collected during interactions between 27 students and AutoTutor, an intelligent tutoring system with conversational dialogues. There is also no consensus on which techniques (i.e., feature selection or classification methods) work best for this type of data. Therefore, this study also evaluates the efficacy of affect detection using a host of feature selection and classification techniques on three physiological signals (ECG, EMG, and GSR) and their combinations. Two feature selection methods and nine classifiers were applied to the problem of recognizing eight affective states (boredom, confusion, curiosity, delight, flow/-engagement, surprise, and neutral). The results indicated that the user-independent modeling approach was not feasible; however, a mean kappa score of 0.25 was obtained for user-dependent models that discriminated among the most frequent emotions. The results also indicated that k-nearest neighbor and Linear Bayes Normal Classifier (LBNC) classifiers yielded the best affect detection rates. Single channel ECG, EMG, and GSR and three-channel multimodal models were generally more diagnostic than two--channel models.
Keywords :
cognition; electrocardiography; electromyography; emotion recognition; feature extraction; intelligent tutoring systems; learning (artificial intelligence); signal classification; signal detection; AutoTutor; LBNC classifiers; affect detection efficacy evaluation; affective state recognition; boredom state; classification technique; confusion state; conversational dialogues; curiosity state; delight state; feature selection method; flow-engagement state; intelligent tutoring system; k-nearest neighbor; linear Bayes normal classifier; machine learning; mean kappa score; naturalistic emotions; naturalistic expression detection; neutral state; nonbasic affective states; peripheral physiological signals; single channel ECG signals; single channel EMG signals; single channel GSR signals; surprise state; three-channel multimodal models; user-dependent physiology-based detectors; user-independent affect detector; user-independent physiology-based detectors; Biomedical monitoring; Detectors; Electrocardiography; Electromyography; Heart rate variability; Physiology; AutoTutor; Emotion; naturalistic emotions; physiological signals; user-dependent; user-independent;
fLanguage :
English
Journal_Title :
Affective Computing, IEEE Transactions on
Publisher :
ieee
ISSN :
1949-3045
Type :
jour
DOI :
10.1109/T-AFFC.2012.4
Filename :
6171156
Link To Document :
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