DocumentCode :
72066
Title :
The Faces of Engagement: Automatic Recognition of Student Engagementfrom Facial Expressions
Author :
Whitehill, Jacob ; Serpell, Zewelanji ; Yi-Ching Lin ; Foster, Aysha ; Movellan, Javier R.
Author_Institution :
Machine Perception Lab. (MPLab), Univ. of California, San Diego, La Jolla, CA, USA
Volume :
5
Issue :
1
fYear :
2014
fDate :
Jan.-March 1 2014
Firstpage :
86
Lastpage :
98
Abstract :
Student engagement is a key concept in contemporary education, where it is valued as a goal in its own right. In this paper we explore approaches for automatic recognition of engagement from students´ facial expressions. We studied whether human observers can reliably judge engagement from the face; analyzed the signals observers use to make these judgments; and automated the process using machine learning. We found that human observers reliably agree when discriminating low versus high degrees of engagement (Cohen´s κ = 0.96). When fine discrimination is required (four distinct levels) the reliability decreases, but is still quite high ( κ = 0.56). Furthermore, we found that engagement labels of 10-second video clips can be reliably predicted from the average labels of their constituent frames (Pearson r=0.85), suggesting that static expressions contain the bulk of the information used by observers. We used machine learning to develop automatic engagement detectors and found that for binary classification (e.g., high engagement versus low engagement), automated engagement detectors perform with comparable accuracy to humans. Finally, we show that both human and automatic engagement judgments correlate with task performance. In our experiment, student post-test performance was predicted with comparable accuracy from engagement labels ( r=0.47) as from pre-test scores ( r=0.44).
Keywords :
behavioural sciences computing; educational administrative data processing; face recognition; image classification; learning (artificial intelligence); object detection; automatic engagement detectors; binary classification; contemporary education; engagement degree; facial expressions; human observers; machine learning; signals observers; static expressions; student engagement recognition; student post-test performance; Games; Labeling; Observers; Reliability; Software; Tablet computers; Training; Student engagement; engagement recognition; facial actions; facial expression recognition; intelligent tutoring systems;
fLanguage :
English
Journal_Title :
Affective Computing, IEEE Transactions on
Publisher :
ieee
ISSN :
1949-3045
Type :
jour
DOI :
10.1109/TAFFC.2014.2316163
Filename :
6786307
Link To Document :
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