Facial Recognition in Collaborative Learning Videos
- URL: http://arxiv.org/abs/2110.13269v1
- Date: Mon, 25 Oct 2021 21:05:06 GMT
- Title: Facial Recognition in Collaborative Learning Videos
- Authors: Phuong Tran, Marios Pattichis, Sylvia Celed\'on-Pattichis, Carlos
L\'opezLeiva
- Abstract summary: We develop a dynamic system of recognizing participants in collaborative learning systems.
We address occlusion and recognition failures by using past information about the face detection history.
Our results show that the proposed system is proven to be very fast and accurate.
- Score: 1.2234742322758416
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Face recognition in collaborative learning videos presents many challenges.
In collaborative learning videos, students sit around a typical table at
different positions to the recording camera, come and go, move around, get
partially or fully occluded. Furthermore, the videos tend to be very long,
requiring the development of fast and accurate methods. We develop a dynamic
system of recognizing participants in collaborative learning systems. We
address occlusion and recognition failures by using past information about the
face detection history. We address the need for detecting faces from different
poses and the need for speed by associating each participant with a collection
of prototype faces computed through sampling or K-means clustering. Our results
show that the proposed system is proven to be very fast and accurate. We also
compare our system against a baseline system that uses InsightFace [2] and the
original training video segments. We achieved an average accuracy of 86.2%
compared to 70.8% for the baseline system. On average, our recognition rate was
28.1 times faster than the baseline system.
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