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基于监督对比学习正则化的高分辨率SAR图像建筑物提取方法
引用本文:康健,王智睿,祝若鑫,孙显.基于监督对比学习正则化的高分辨率SAR图像建筑物提取方法[J].雷达学报,2022,11(1):157-167.
作者姓名:康健  王智睿  祝若鑫  孙显
作者单位:1.苏州大学电子信息学院 苏州 2150062.中国科学院空天信息创新研究院 北京 1001903.西安测绘研究所地理信息工程国家重点实验室 西安 7100544.中国科学院大学电子电气与通信工程学院 北京 1001905.中国科学院网络信息体系技术科技创新重点实验室 100190
基金项目:国家自然科学基金(62101371% 62076241),江苏省青年基金项目(BK20210707)
摘    要:近年来,高分辨合成孔径雷达(SAR)图像的智能解译技术在城市规划、变化监测等方面得到了广泛应用.不同于光学图像,SAR图像的获取方式、图像中目标的几何结构等因素制约了现有深度学习方法对SAR图像地物目标的解译效果.该文针对高分辨SAR图像城市区域建筑物提取,提出了基于监督对比学习的正则化方法,其主要思想是增强同一类别像...

关 键 词:合成孔径雷达  SAR建筑物提取  深度学习  语义分割  对比学习
收稿时间:2021-09-07

Supervised Contrastive Learning Regularized High-resolution Synthetic Aperture Radar Building Footprint Generation
KANG Jian,WANG Zhirui,ZHU Ruoxin,SUN Xian.Supervised Contrastive Learning Regularized High-resolution Synthetic Aperture Radar Building Footprint Generation[J].Journal of Radars,2022,11(1):157-167.
Authors:KANG Jian  WANG Zhirui  ZHU Ruoxin  SUN Xian
Affiliation:(School of Electronic and Information Engineering,Soochow University,Suzhou 215006,China;Aerospace Information Research Institute,Chinese Academy of Sciences,Beijing 100190,China;State Key Laboratory of Geo-Information Engineering,Xi’an Research Institute of Surveying and Mapping,Xi’an 710054,China;School of Electronic,Electrical and Communication Engineering,University of Chinese Academy of Sciences,Beijing 100190,China;Key Laboratory of Network Information System Technology(NIST),Aerospace Information Research Institute,Chinese Academy of Sciences,Beijing 100190,China)
Abstract:Over the recent years, high-resolution Synthetic-Aperture Radar (SAR) images have been widely applied for intelligent interpretation of urban mapping, change detection, etc. Different from optical images, the acquisition approach and object geometry of SAR images have limited the interpretation performances of the existing deep-learning methods. This paper proposes a novel building footprint generation method for high-resolution SAR images. This method is based on supervised contrastive learning regularization, which aims to increase the similarities between intra-class pixels and diversities of interclass pixels. This increase will make the deep learning models focus on distinguishing building and nonbuilding pixels in latent space, and improve the classification accuracy. Based on public SpaceNet6 data, the proposed method can improve the segmentation performance by 1% compared to the other state-of-the-art methods. This improvement validates the effectiveness of the proposed method on real data. This method can be used for building segmentation in urban areas with complex scene background. Moreover, the proposed method can be extended for other types of land-cover segmentation using SAR images.
Keywords:Synthetic Aperture Radar (SAR)  SAR building footprint generation  Deep learning  Semantic segmentation  Contrastive learning
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