Multilabel contrastive learning based remote sensing scene classification via cosine similarity

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Büyükbaş, Salih Numan and Aptoula, Erchan (2025) Multilabel contrastive learning based remote sensing scene classification via cosine similarity. In: 33rd Signal Processing and Communications Applications Conference (SIU), Istanbul, Turkiye

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Abstract

Multi-Label Classification is a fundamental task in remote sensing, which reflects real-world scenarios by enabling a sample to have more than one label. In the context of multi-class image classification, most recent methods usually make use of the contrastive learning strategy to increase the representative power of the backbone network. Yet, there has been little focus on generalizing the supervised contrastive learning strategy to multi-label classification tasks. In this paper, a new supervised contrastive loss function with a continuous modeling of inter-sample relations is proposed that outperforms common alternative strategies with an optical remote sensing scene classification dataset.
Item Type: Papers in Conference Proceedings
Uncontrolled Keywords: contrastive learning; cosine similarity; Multi-label classification
Divisions: Faculty of Engineering and Natural Sciences
Depositing User: Erchan Aptoula
Date Deposited: 26 Sep 2025 12:05
Last Modified: 26 Sep 2025 12:05
URI: https://research.sabanciuniv.edu/id/eprint/52559

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