Prototype Discriminative Learning for Semi-Supervised Change Detection in Remote Sensing Images
With the continuous progress of deep learning in remote sensing (RS) visual tasks, considerable advancements have been achieved in RS image change detection (CD). However, prevailing CD methods heavily rely on extensive sets of fully pixelwise hand-annotated training data, a time-consuming and costl...
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Veröffentlicht in: | IEEE transactions on geoscience and remote sensing 2024, Vol.62, p.1-14 |
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Zusammenfassung: | With the continuous progress of deep learning in remote sensing (RS) visual tasks, considerable advancements have been achieved in RS image change detection (CD). However, prevailing CD methods heavily rely on extensive sets of fully pixelwise hand-annotated training data, a time-consuming and costly process, and they fail to fully harness the potential benefits of deep feature representations within the deep feature domain. To tackle the mentioned issues, we propose a novel semi-supervised CD method called PDLCD, which strategically leverages useful information from massive unlabeled data to complement labeled data with just a few samples. Specifically, changed objects and unchanged backgrounds of bitemporal RS images are various and complex, our approach advocates dividing each category into multiple subclasses in the deep feature domain. In this scheme, the high-level feature of each subclass follows a Gaussian distribution. Then, the prototype discriminative learning (PDL) is introduced to explicitly encourage deep features of samples closer to the nearest prototype within their respective category, and away from all prototypes of other categories. We design feature discriminative loss (FDL) to implement PDL for constructing more pronounced intraclass compactness and interclass variability. Finally, we compute the supervised loss based on a limited set of labeled data, incorporate the unsupervised loss leveraging a substantial volume of unlabeled data, and include FDL within the deep feature domain to collectively optimize the model. Extensive experiments carried out on three challenging RS image CD datasets illustrate that our proposed semi-supervised CD method obtains better CD performance than previous counterparts. The source code is available at: https://github.com/Youzhihui/PDLCD . |
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ISSN: | 0196-2892 1558-0644 |
DOI: | 10.1109/TGRS.2024.3491111 |