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Weakly-supervised continual learning for class-incremental segmentation

Authors :
Lenczner, Gaston
Chan-Hon-Tong, Adrien
Luminari, Nicola
Saux, Bertrand Le
Publication Year :
2022

Abstract

Transfer learning is a powerful way to adapt existing deep learning models to new emerging use-cases in remote sensing. Starting from a neural network already trained for semantic segmentation, we propose to modify its label space to swiftly adapt it to new classes under weak supervision. To alleviate the background shift and the catastrophic forgetting problems inherent to this form of continual learning, we compare different regularization terms and leverage a pseudo-label strategy. We experimentally show the relevance of our approach on three public remote sensing datasets. Code is open-source and released in this repository: https://github.com/alteia-ai/ICSS}{https://github.com/alteia-ai/ICSS.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.01029
Document Type :
Working Paper