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arxiv 2206.01096 v1 pith:ALQ4BQAY submitted 2022-06-02 eess.IV cs.CV

A Dual-fusion Semantic Segmentation Framework With GAN For SAR Images

classification eess.IV cs.CV
keywords imagesopticalsegmentationusedgeneratedmethodsnetworkrepresentation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep learning based semantic segmentation is one of the popular methods in remote sensing image segmentation. In this paper, a network based on the widely used encoderdecoder architecture is proposed to accomplish the synthetic aperture radar (SAR) images segmentation. With the better representation capability of optical images, we propose to enrich SAR images with generated optical images via the generative adversative network (GAN) trained by numerous SAR and optical images. These optical images can be used as expansions of original SAR images, thus ensuring robust result of segmentation. Then the optical images generated by the GAN are stitched together with the corresponding real images. An attention module following the stitched data is used to strengthen the representation of the objects. Experiments indicate that our method is efficient compared to other commonly used methods

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