Jie ChenJingru ZhuGeng SunJianhui LiMin Deng
Semantic segmentation of high-resolution remote sensing imagery (HRSI) is a major task in remote sensing analysis. Although deep convolutional neural network (DCNN)-based semantic segmentation models have powerful capacity in pixel-wise classification, they still face challenge in obtaining intersemantic continuity and extraboundary accuracy because of the geo-object's characteristic feature of diverse scales and various distributions in HRSI. Inspired by the transfer learning, in this study, we propose an efficient semantic segmentation framework named SMAF-Net, which shares multiscale adversarial features into a U-shaped semantic segmentation model. Specifically, it uses multiscale adversarial feature representation obtained from a well-trained generative adversarial network to grasp the pixel correlation and further improve the boundary accuracy of multiscale geo-objects. Comparison experiments on the Potsdam and Vaihingen data sets demonstrate that the proposed framework can achieve considerable improvement in the semantic segmentation of HRSI.
Yalan ZhengMengyuan YangMin WangXiaojun QianRui YangXin ZhangWen Dong
Renlong HangPing YangFeng ZhouQingshan Liu
Nan ChenRuiqi YangLeiguang WangYili ZhaoQinling Dai
Inuwa Mamuda BelloKe ZhangJingyu WangHaoyu Li
Inuwa Mamuda BelloKe ZhangYu SuJingyu WangMuhammad Azeem Aslam