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Personalized Estimation of Engagement From Videos Using Active Learning With Deep Reinforcement Learning

Authors :
Massachusetts Institute of Technology. Media Laboratory
Rudovic, Ognjen
Park, Hae Won
Busche, John
Schuller, Bjorn
Breazeal, Cynthia
Picard, Rosalind W.
Massachusetts Institute of Technology. Media Laboratory
Rudovic, Ognjen
Park, Hae Won
Busche, John
Schuller, Bjorn
Breazeal, Cynthia
Picard, Rosalind W.
Source :
MIT web domain
Publication Year :
2021

Abstract

© 2019 IEEE. Perceiving users' engagement accurately is important for technologies that need to respond to learners in a natural and intelligent way. In this paper, we address the problem of automated estimation of engagement from videos of child-robot interactions recorded in unconstrained environments (kindergartens). This is challenging due to diverse and person-specific styles of engagement expressions through facial and body gestures, as well as because of illumination changes, partial occlusion, and a changing background in the classroom as each child is active. To tackle these difficult challenges, we propose a novel deep reinforcement learning architecture for active learning and estimation of engagement from video data. The key to our approach is the learning of a personalized policy that enables the model to decide whether to estimate the child's engagement level (low, medium, high) or, when uncertain, to query a human for a video label. Queried videos are labeled by a human expert in an offline manner, and used to personalize the policy and engagement classifier to a target child over time. We show on a database of 43 children involved in robot-assisted learning activities (8 sessions over 3 months), that this combined human-AI approach can easily adapt its interpretations of engagement to the target child using only a handful of labeled videos, while being robust to the many complex influences on the data. The results show large improvements over a non-personalized approach and over traditional active learning methods.

Details

Database :
OAIster
Journal :
MIT web domain
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1286404786
Document Type :
Electronic Resource