Robust Remote Sensing Image Cross-Scene Classification Under Noisy Environment

IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING(2024)

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摘要
In recent years, great progress has been made in the field of cross-scene classification. However, most existing cross-scene methods assume that the source domain has massive and carefully annotated data, which is time-consuming and labor-intensive in practice. Datasets in real-life applications usually contain a large number of noisy labels, which will significantly affect cross-scene classification performance. How to perform more discriminative and generalized cross-scene classification in the presence of noisy samples needs to be urgently addressed. Apart from that, existing methods tend to implement global matching between domains, causing problems such as unbalanced adaptation and negative transfer, limiting the cross-scene performance of the model. For more effective and reliable cross-scene classification under noisy environment, robust adaptation with noise (RAN) is proposed in this article. RAN explores which samples are noiseless and transferable to enable positive and robust cross-scene transfer. The curriculum learning strategy is used to filter out noisy samples for better source supervised learning and cross-domain matching. To further improve the stability and effectiveness of cross-scene adaptation, the class weighting factor and the public weighting factor are introduced to consider the class information of the source and target domains. RAN is an efficient plug-and-play adaptation framework, which is easily implemented and can be embedded in existing methods. Experimental results demonstrate that the proposed RAN can achieve remarkable performance on cross-scene classification tasks in noisy environments.
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关键词
Cross-scene classification,deep learning,domain adaptation (DA),noisy label
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