DocumentCode :
42397
Title :
Emotional State Classification in Patient–Robot Interaction Using Wavelet Analysis and Statistics-Based Feature Selection
Author :
Swangnetr, Manida ; Kaber, David B.
Author_Institution :
Dept. of Production Technol., Khon Kaen Univ., Khon Kaen, Thailand
Volume :
43
Issue :
1
fYear :
2013
fDate :
Jan. 2013
Firstpage :
63
Lastpage :
75
Abstract :
Due to a major shortage of nurses in the U.S., future healthcare service robots are expected to be used in tasks involving direct interaction with patients. Consequently, there is a need to design nursing robots with the capability to detect and respond to patient emotional states and to facilitate positive experiences in healthcare. The objective of this study was to develop a new computational algorithm for accurate patient emotional state classification in interaction with nursing robots during medical service. A simulated medicine delivery experiment was conducted at two nursing homes using a robot with different human-like features. Physiological signals, including heart rate (HR) and galvanic skin response (GSR), as well as subjective ratings of valence (happy-unhappy) and arousal (excited-bored) were collected on elderly residents. A three-stage emotional state classification algorithm was applied to these data, including: (1) physiological feature extraction; (2) statistical-based feature selection; and (3) a machine-learning model of emotional states. A pre-processed HR signal was used. GSR signals were nonstationary and noisy and were further processed using wavelet analysis. A set of wavelet coefficients, representing GSR features, was used as a basis for current emotional state classification. Arousal and valence were significantly explained by statistical features of the HR signal and GSR wavelet features. Wavelet-based de-noising of GSR signals led to an increase in the percentage of correct classifications of emotional states and clearer relationships among the physiological response and arousal and valence. The new algorithm may serve as an effective method for future service robot real-time detection of patient emotional states and behavior adaptation to promote positive healthcare experiences.
Keywords :
age issues; control engineering computing; feature extraction; health care; human-robot interaction; learning (artificial intelligence); medical robotics; medical signal detection; medical signal processing; patient care; regression analysis; service robots; signal classification; signal denoising; wavelet transforms; GSR feature representation; GSR wavelet features; US; arousal subjective rating; behavior adaptation; computational algorithm; elderly residents; excited-bored rating; galvanic skin response; happy-unhappy rating; healthcare service robots; heart rate signals; human-like features; machine learning model; medical service; noisy GSR signals; nonstationary GSR signals; nursing homes; nursing robot design; patient emotional state detection; patient-robot interaction; physiological feature extraction; physiological signals; preprocessed HR signal; real-time detection; regression analysis; simulated medicine delivery experiment; statistics-based feature selection; three-stage emotional state classification algorithm; valence subjective rating; wavelet analysis; wavelet coefficients; wavelet-based signal denoising; Biomedical monitoring; Heart rate; Humans; Medical services; Physiology; Service robots; Emotions; machine learning; physiological variables; regression analysis; service robots; wavelet analysis;
fLanguage :
English
Journal_Title :
Human-Machine Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2291
Type :
jour
DOI :
10.1109/TSMCA.2012.2210408
Filename :
6301777
Link To Document :
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