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Main Authors: Wally, Shrouk, Elsayed, Ahmed, Alkabbany, Islam, Ali, Asem, Farag, Aly
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2307.09465
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author Wally, Shrouk
Elsayed, Ahmed
Alkabbany, Islam
Ali, Asem
Farag, Aly
author_facet Wally, Shrouk
Elsayed, Ahmed
Alkabbany, Islam
Ali, Asem
Farag, Aly
contents Given that approximately half of science, technology, engineering, and mathematics (STEM) undergraduate students in U.S. colleges and universities leave by the end of the first year [15], it is crucial to improve the quality of classroom environments. This study focuses on monitoring students' emotions in the classroom as an indicator of their engagement and proposes an approach to address this issue. The impact of different facial parts on the performance of an emotional recognition model is evaluated through experimentation. To test the proposed model under partial occlusion, an artificially occluded dataset is introduced. The novelty of this work lies in the proposal of an occlusion-aware architecture for facial action units (AUs) extraction, which employs attention mechanism and adaptive feature learning. The AUs can be used later to classify facial expressions in classroom settings. This research paper's findings provide valuable insights into handling occlusion in analyzing facial images for emotional engagement analysis. The proposed experiments demonstrate the significance of considering occlusion and enhancing the reliability of facial analysis models in classroom environments. These findings can also be extended to other settings where occlusions are prevalent.
format Preprint
id arxiv_https___arxiv_org_abs_2307_09465
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Occlusion Aware Student Emotion Recognition based on Facial Action Unit Detection
Wally, Shrouk
Elsayed, Ahmed
Alkabbany, Islam
Ali, Asem
Farag, Aly
Computer Vision and Pattern Recognition
Given that approximately half of science, technology, engineering, and mathematics (STEM) undergraduate students in U.S. colleges and universities leave by the end of the first year [15], it is crucial to improve the quality of classroom environments. This study focuses on monitoring students' emotions in the classroom as an indicator of their engagement and proposes an approach to address this issue. The impact of different facial parts on the performance of an emotional recognition model is evaluated through experimentation. To test the proposed model under partial occlusion, an artificially occluded dataset is introduced. The novelty of this work lies in the proposal of an occlusion-aware architecture for facial action units (AUs) extraction, which employs attention mechanism and adaptive feature learning. The AUs can be used later to classify facial expressions in classroom settings. This research paper's findings provide valuable insights into handling occlusion in analyzing facial images for emotional engagement analysis. The proposed experiments demonstrate the significance of considering occlusion and enhancing the reliability of facial analysis models in classroom environments. These findings can also be extended to other settings where occlusions are prevalent.
title Occlusion Aware Student Emotion Recognition based on Facial Action Unit Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2307.09465