Exploiting SAR visual semantics in Tomo SAR for 3D modeling of buildings

被引:0
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作者
Wei Wang [1 ,2 ]
Haixia Wang [3 ,2 ]
Liankun Yu [3 ,2 ]
Qiulei Dong [2 ]
Zhanyi Hu [2 ]
机构
[1] School of Network Engineering,Zhoukou Normal University
[2] State Key Laboratory of Multimodal Artificial Intelligence Systems,Institute of Automation,Chinese Academy of Sciences
[3] College of Electrical Engineering and Automation,Shandong University of Science and
关键词
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暂无
中图分类号
TU11 [建筑物理学]; TN957.52 [数据、图像处理及录取];
学科分类号
081304 ;
摘要
Recently a new paradigm is emerging in synthetic aperture radar(SAR) three-dimensional(3D) imaging technology where the imaging performance is enhanced by exploiting SAR visual semantics. Here by “SAR visual semantics”, we mean primarily the scene conceptual structural information extracted directly from SAR images. Under this paradigm, a paramount open problem lies in what and how the SAR visual semantics could be extracted and used at different levels associated with different structural information. This work is a tentative attempt to tackle the above what-and-how problem, and it mainly consists of the following two parts. The first part is a sketchy description of how three-level(low, middle, and high) SAR visual semantics could be extracted and used in SAR Tomography(TomoSAR), including an extension of SAR visual semantics analysis(e.g., facades and roofs) to sparse 3D points initially recovered via traditional TomoSAR methods. The second part is a case study on two open source TomoSAR datasets to illustrate and validate the effectiveness and efficiency of SAR visual semantics exploitation in TomoSAR for box-like 3D building modeling. Due to the space limit, only main steps of the involved methods are reported, and we hope, such neglects of technical details will not severely compromise the underlying key concepts and ideas.
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页码:6 / 25
页数:20
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