Delving into high-quality synthetic face occlusion segmentation datasets
This paper performs comprehensive analysis on datasets for occlusion-aware face segmentation, a task that is crucial for many downstream applications. The collection and annotation of such datasets are time-consuming and labour-intensive. Although some efforts have been made in synthetic data gener...
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2022
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sg-ntu-dr.10356-1565942022-04-21T01:46:17Z Delving into high-quality synthetic face occlusion segmentation datasets Voo, Kenny Tze Rung Chen Change Loy School of Computer Science and Engineering ccloy@ntu.edu.sg Engineering::Computer science and engineering This paper performs comprehensive analysis on datasets for occlusion-aware face segmentation, a task that is crucial for many downstream applications. The collection and annotation of such datasets are time-consuming and labour-intensive. Although some efforts have been made in synthetic data generation, the naturalistic aspect of data remains less explored. In our study, we propose two occlusion generation techniques, Naturalistic Occlusion Generation (NatOcc), for producing high-quality naturalistic synthetic occluded faces; and Random Occlusion Generation (RandOcc), a more general synthetic occluded data generation method. We empirically show the effectiveness and robustness of both methods, even for unseen occlusions. To facilitate model evaluation, we present two high-resolution real-world occluded face datasets with fine-grained annotations, RealOcc and RealOcc-Wild, featuring both careful alignment preprocessing and an in-the-wild setting for robustness test. We further conduct a comprehensive analysis on a newly introduced segmentation benchmark, offering insights for future exploration. Bachelor of Engineering (Computer Science) 2022-04-21T01:46:17Z 2022-04-21T01:46:17Z 2022 Final Year Project (FYP) Voo, K. T. R. (2022). Delving into high-quality synthetic face occlusion segmentation datasets. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/156594 https://hdl.handle.net/10356/156594 en SCSE21-0206 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering Voo, Kenny Tze Rung Delving into high-quality synthetic face occlusion segmentation datasets |
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This paper performs comprehensive analysis on datasets for occlusion-aware face segmentation, a task that is crucial for many downstream applications.
The collection and annotation of such datasets are time-consuming and labour-intensive. Although some efforts have been made in synthetic data generation, the naturalistic aspect of data remains less explored. In our study, we propose two occlusion generation techniques, Naturalistic Occlusion Generation (NatOcc), for producing high-quality naturalistic synthetic occluded faces; and Random Occlusion Generation (RandOcc), a more general synthetic occluded data generation method. We empirically show the effectiveness and robustness of both methods, even for unseen occlusions.
To facilitate model evaluation, we present two high-resolution real-world occluded face datasets with fine-grained annotations, RealOcc and RealOcc-Wild, featuring both careful alignment preprocessing and an in-the-wild setting for robustness test. We further conduct a comprehensive analysis on a newly introduced segmentation benchmark, offering insights for future exploration. |
author2 |
Chen Change Loy |
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Chen Change Loy Voo, Kenny Tze Rung |
format |
Final Year Project |
author |
Voo, Kenny Tze Rung |
author_sort |
Voo, Kenny Tze Rung |
title |
Delving into high-quality synthetic face occlusion segmentation datasets |
title_short |
Delving into high-quality synthetic face occlusion segmentation datasets |
title_full |
Delving into high-quality synthetic face occlusion segmentation datasets |
title_fullStr |
Delving into high-quality synthetic face occlusion segmentation datasets |
title_full_unstemmed |
Delving into high-quality synthetic face occlusion segmentation datasets |
title_sort |
delving into high-quality synthetic face occlusion segmentation datasets |
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Nanyang Technological University |
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2022 |
url |
https://hdl.handle.net/10356/156594 |
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1731235770624114688 |