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RSS FeedsRemote Sensing, Vol. 11, Pages 2631: Category-Sensitive Domain Adaptation for Land Cover Mapping in Aerial Scenes (Remote Sensing)

 
 

11 november 2019 10:00:30

 
Remote Sensing, Vol. 11, Pages 2631: Category-Sensitive Domain Adaptation for Land Cover Mapping in Aerial Scenes (Remote Sensing)
 


Since manually labeling aerial images for pixel-level classification is expensive and time-consuming, developing strategies for land cover mapping without reference labels is essential and meaningful. As an efficient solution for this issue, domain adaptation has been widely utilized in numerous semantic labeling-based applications. However, current approaches generally pursue the marginal distribution alignment between the source and target features and ignore the category-level alignment. Therefore, directly applying them to land cover mapping leads to unsatisfactory performance in the target domain. In our research, to address this problem, we embed a geometry-consistent generative adversarial network (GcGAN) into a co-training adversarial learning network (CtALN), and then develop a category-sensitive domain adaptation (CsDA) method for land cover mapping using very-high-resolution (VHR) optical aerial images. The GcGAN aims to eliminate the domain discrepancies between labeled and unlabeled images while retaining their intrinsic land cover information by translating the features of the labeled images from the source domain to the target domain. Meanwhile, the CtALN aims to learn a semantic labeling model in the target domain with the translated features and corresponding reference labels. By training this hybrid framework, our method learns to distill knowledge from the source domain and transfers it to the target domain, while preserving not only global domain consistency, but also category-level consistency between labeled and unlabeled images in the feature space. The experimental results between two airborne benchmark datasets and the comparison with other state-of-the-art methods verify the robustness and superiority of our proposed CsDA.


 
183 viewsCategory: Geology, Physics
 
Remote Sensing, Vol. 11, Pages 2627: Purifying SLIC Superpixels to Optimize Superpixel-Based Classification of High Spatial Resolution Remote Sensing Image (Remote Sensing)
Remote Sensing, Vol. 11, Pages 2635: Fast Super-Resolution of 20 m Sentinel-2 Bands Using Convolutional Neural Networks (Remote Sensing)
 
 
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