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Debiased Learning for Remote Sensing Data

Authors :
Yeh, Chun-Hsiao
Wang, Xudong
Yu, Stella X.
Hill, Charles
Steck, Zackery
Kangas, Scott
Reite, Aaron
Yeh, Chun-Hsiao
Wang, Xudong
Yu, Stella X.
Hill, Charles
Steck, Zackery
Kangas, Scott
Reite, Aaron
Publication Year :
2023

Abstract

Deep learning has had remarkable success at analyzing handheld imagery such as consumer photos due to the availability of large-scale human annotations (e.g., ImageNet). However, remote sensing data lacks such extensive annotation and thus potential for supervised learning. To address this, we propose a highly effective semi-supervised approach tailored specifically to remote sensing data. Our approach encompasses two key contributions. First, we adapt the FixMatch framework to remote sensing data by designing robust strong and weak augmentations suitable for this domain. Second, we develop an effective semi-supervised learning method by removing bias in imbalanced training data resulting from both actual labels and pseudo-labels predicted by the model. Our simple semi-supervised framework was validated by extensive experimentation. Using 30\% of labeled annotations, it delivers a 7.1\% accuracy gain over the supervised learning baseline and a 2.1\% gain over the supervised state-of-the-art CDS method on the remote sensing xView dataset.<br />Comment: Accepted to CVPR 2023 MultiEarth Workshop

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438510735
Document Type :
Electronic Resource