Pose-invariant Facial Expression Recognition Based on MOEO Algorithm and LBP

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

This paper focuses on developing an innovative method that incorpo-rates facial features, such as mouth, and eyebrows to identify emotions from an image. The proposed system can also recognize emotions from images with the facial pose variation and occlusions. Our findings indicate that this new system effectively identifies critical and comprehensive features. These features are then processed through a second phase involving a multi-objective optimization technique. This technique accurately predicts emotions in an image, showing superior performance compared to many standard and deep learning-based methods. Our approach is particularly adept at changes in facial angles, outper-forming many conventional and advanced models. Our model's better perfor-mance in emotion recognition is due to its ability to choose the optimal solution from a range of possible solutions, which allows it to accurately represent the most suitable emotional expression seen in the face images.
Original languageEnglish
Title of host publicationUKCI 2024: 23rd UK Workshop on Computational Intelligence
PublisherSpringer
Publication statusAccepted/In press - 14 Jul 2024
EventUKCI 2024: 23rd UK Workshop on Computational Intelligence - Ulster University, Belfast, United Kingdom
Duration: 2 Sept 20244 Sept 2024
Conference number: 23rd
https://computing.ulster.ac.uk/ZhengLab/UKCI2024/

Conference

ConferenceUKCI 2024: 23rd UK Workshop on Computational Intelligence
Abbreviated titleUKCI 2024
Country/TerritoryUnited Kingdom
CityBelfast
Period2/09/244/09/24
Internet address

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