Super-resolution reconstruction methods emerge in an endless stream, but the models proposed by many researchers are not fit for certain types of images, such as remote sensing images. This is because remote sensing images have rich texture details and geometrical structures. Therefore, directly applying previous models to remote sensing images generates unsatisfactory artifacts. In this letter, we propose a dual branch split attention generative adversarial network (DBSAGAN) for super-resolution tasks on remote sensing images. Specifically, the proposed DBSAGAN adopts a dual branch split attention group (DBSAG) as the cascading basic unit in the generator. In addition, we remove batch normalization (BN) layers in the basic unit to improve the generative ability of the network. To reduce the gap between the reconstructed and original images from the frequency domain, we innovatively use focal frequency loss to constrain the network. Experiments demonstrate that the proposed network outperforms existing state-of-the-art methods on the Gaofen-1 (GF-1) remote sensing image dataset.
机构:
China Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing
College of Software, Henan University, KaifengChina Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing
Tang X.
Yang X.
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机构:
China Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing
International Institute for Earth System Science, Nanjing University, NanjingChina Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing
Yang X.
Li F.
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机构:
China Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, BeijingChina Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing
Li F.
Ma J.
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机构:
College of Software, Henan University, KaifengChina Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing
Ma J.
Liang L.
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机构:
Department of Electronic Engineering, Tsinghua University, BeijingChina Qian Xuesen Space Technology Laboratory, China Academy of Space Technology, Beijing