Facial expression analysis under partial occlusion: A survey
journal contribution
posted on 2019-06-04, 00:00 authored by Ligang ZhangLigang Zhang, Brijesh Verma, D Tjondronegoro, V Chandran© 2018 ACM. Automatic machine-based Facial Expression Analysis (FEA) has made substantial progress in the past few decades driven by its importance for applications in psychology, security, health, entertainment, and human- computer interaction. The vast majority of completed FEA studies are based on nonoccluded faces collected in a controlled laboratory environment. Automatic expression recognition tolerant to partial occlusion remains less understood, particularly in real-world scenarios. In recent years, efforts investigating techniques to handle partial occlusion for FEA have seen an increase. The context is right for a comprehensive perspective of these developments and the state of the art from this perspective. This survey provides such a comprehensive review of recent advances in dataset creation, algorithm development, and investigations of the effects of occlusion critical for robust performance in FEA systems. It outlines existing challenges in overcoming partial occlusion and discusses possible opportunities in advancing the technology. To the best of our knowledge, it is the first FEA survey dedicated to occlusion and aimed at promoting better-informed and benchmarked future work.
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Volume
51Issue
2Start Page
25:1End Page
25:49Number of Pages
49eISSN
1557-7341ISSN
0360-0300Publisher
Association for Computing Machinery, USPublisher DOI
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Peer Reviewed
- Yes
Open Access
- No
External Author Affiliations
Queensland University of Technology; Southern Cross UniversityAuthor Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes
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