Prototypical Contrastive Network for Imbalanced Aerial Image Segmentation
Carregando...
Arquivos
Fontes externas
Fontes externas
Data
Orientador
Coorientador
Pós-graduação
Curso de graduação
Título da Revista
ISSN da Revista
Título de Volume
Editor
Tipo
Trabalho apresentado em evento
Direito de acesso
Arquivos
Fontes externas
Fontes externas
Resumo
Binary segmentation is the main task underpinning several remote sensing applications, which are particularly interested in identifying and monitoring a specific category/object. Although extremely important, such a task has several challenges, including huge intra-class variance for the background and data imbalance. Furthermore, most works tackling this task partially or completely ignore one or both of these challenges and their developments. In this paper, we propose a novel method to perform imbalanced binary segmentation of remote sensing images based on deep networks, prototypes, and contrastive loss. The proposed approach allows the model to focus on learning the foreground class while alleviating the class imbalance problem by allowing it to concentrate on the most difficult background examples. The results demonstrate that the proposed method outperforms state-of-the-art techniques for imbalanced binary segmentation of remote sensing images while taking much less training time.
Descrição
Palavras-chave
Algorithms, and algorithms, Applications, formulations, Image recognition and understanding, Machine learning architectures, Remote Sensing
Idioma
Inglês
Citação
Proceedings - 2024 IEEE Winter Conference on Applications of Computer Vision, WACV 2024, p. 8351-8361.





