全息SAR差分层析成像的4d成像研究

Remote. Sens. Pub Date : 2023-07-06 DOI:10.3390/rs15133421
Shuang Jin, H. Bi, Jing Feng, Weihao Xu, Jin Xu, Jingjing Zhang
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引用次数: 0

摘要

全息合成孔径雷达层析成像技术(HoloSAR)结合圆形合成孔径雷达(CSAR)和SAR层析成像技术(TomoSAR),可对所考虑的场景进行360°方位观测。这种成像模式实现了360°的高分辨率三维(3-D)重建。为了捕获被观测目标的变形信息,本文首先探索了差分全息sar成像模式,该模式将CSAR和差分TomoSAR (D-TomoSAR)技术相结合。然后,我们提出了一种基于正交匹配追踪(OMP)算法和支持广义似然比(supl - glrt)的成像方法,旨在实现监控区域的高精度多维重建。此外,采用统计离群值去除(SOR)点云滤波技术,提高重构点云的精度。最后,本文提出了基于三维重建结果的停车场车辆变化检测方法。
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Research on 4-D Imaging of Holographic SAR Differential Tomography
Holographic synthetic aperture radar tomography (HoloSAR) combines circular synthetic aperture radar (CSAR) and SAR tomography (TomoSAR) to enable a 360° azimuth observation of the considered scene. This imaging mode achieves a high-resolution three-dimensional (3-D) reconstruction across a full 360°. To capture the deformation information of the observed target, this paper first explores the differential HoloSAR imaging mode, which combines the technologies of CSAR and differential TomoSAR (D-TomoSAR). Then, we propose an imaging method based on the orthogonal matching pursuit (OMP) algorithm and a support generalized likelihood ratio (Sup-GLRT), aiming to achieve high-precision multi-dimensional reconstruction of the surveillance area. In addition, a statistical outlier removal (SOR) point cloud filtering technique is applied to enhance the accuracy of the reconstructed point cloud. Finally, this paper presents the detection of vehicle changes in a parking lot based on the 3-D reconstructed results.
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