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Division of Intelligent Robot
1. Journal Articles
Uncertainty-aware semi-supervised few shot segmentation
Kim, Soopil
;
Chikontwe, Philip
;
An, Sion
;
Park, Sang Hyun
Division of Intelligent Robot
1. Journal Articles
Department of Robotics and Mechatronics Engineering
Medical Image & Signal Processing Lab
1. Journal Articles
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Title
Uncertainty-aware semi-supervised few shot segmentation
Issued Date
2023-05
Citation
Kim, Soopil. (2023-05). Uncertainty-aware semi-supervised few shot segmentation. Pattern Recognition, 137. doi: 10.1016/j.patcog.2022.109292
Type
Article
Author Keywords
Few shot segmentation
;
Meta learning
;
Uncertainty estimation
;
Semi-supervised learning
;
Prototype
ISSN
0031-3203
Abstract
Few shot segmentation (FSS) aims to learn pixel-level classification of a target object in a query image using only a few annotated support samples. This is challenging as it requires modeling appearance variations of target objects and the diverse visual cues between query and support images with limited information. To address this problem, we propose a semi-supervised FSS strategy that leverages additional prototypes from unlabeled images with uncertainty guided pseudo label refinement. To obtain reliable prototypes from unlabeled images, we meta-train a neural network to jointly predict segmentation and estimate the uncertainty of predictions. We employ the uncertainty estimates to exclude predictions with high degrees of uncertainty for pseudo label construction to obtain additional prototypes from the refined pseudo labels. During inference, query segmentation is predicted using prototypes from both support and unlabeled images including low-level features of the query images. Our approach can easily supplement existing approaches without the requirement of additional training when employing unlabeled samples. Extensive experiments on PASCAL-5i and COCO-20i demonstrate that our model can effectively remove unreliable predictions to refine pseudo labels and significantly improve upon baseline performance. © 2023 Elsevier Ltd
URI
http://hdl.handle.net/20.500.11750/17501
DOI
10.1016/j.patcog.2022.109292
Publisher
Elsevier Ltd
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