Title :
Automatically Recognizing Facial Indicators of Frustration: A Learning-centric Analysis
Author :
Grafsgaard, Joseph F. ; Wiggins, Joseph B. ; Boyer, Kristy Elizabeth ; Wiebe, Eric N. ; Lester, James C.
Author_Institution :
Dept. of Comput. Sci., North Carolina State Univ. Raleigh, Raleigh, NC, USA
Abstract :
Affective and cognitive processes form a rich substrate on which learning plays out. Affective states often influence progress on learning tasks, resulting in positive or negative cycles of affect that impact learning outcomes. Developing a detailed account of the occurrence and timing of cognitive-affective states during learning can inform the design of affective tutorial interventions. In order to advance understanding of learning-centered affect, this paper reports on a study to analyze a video corpus of computer-mediated human tutoring using an automated facial expression recognition tool that detects fine-grained facial movements. The results reveal three significant relationships between facial expression, frustration, and learning: (1) Action Unit 2 (outer brow raise) was negatively correlated with learning gain, (2) Action Unit 4 (brow lowering) was positively correlated with frustration, and (3) Action Unit 14 (mouth dimpling) was positively correlated with both frustration and learning gain. Additionally, early prediction models demonstrated that facial actions during the first five minutes were significantly predictive of frustration and learning at the end of the tutoring session. The results represent a step toward a deeper understanding of learning-centered affective states, which will form the foundation for data-driven design of affective tutoring systems.
Keywords :
cognition; emotion recognition; intelligent tutoring systems; interactive systems; action unit; affective process; affective tutorial intervention design; automated facial expression recognition tool; automatic facial frustration indicator recognition; brow lowering; cognitive process; cognitive-affective state occurrence; cognitive-affective state timing; computer-mediated human tutoring; data-driven design; early-prediction models; facial actions; facial expression; fine-grained facial movement detection; learning gain; learning tasks; learning-centered affect; learning-centered affective states; learning-centric analysis; mouth dimpling; negative affect cycle; outer brow raise; positive affect cycle; video corpus analysis; Correlation; Face recognition; Gold; Hidden Markov models; Manuals; Predictive models; Tutorials; affect; computer-mediated tutoring; facial action units; facial expression recognition; frustration; intensity; learning;
Conference_Titel :
Affective Computing and Intelligent Interaction (ACII), 2013 Humaine Association Conference on
Conference_Location :
Geneva
DOI :
10.1109/ACII.2013.33