Method for Three-Dimensional Building Imaging Using Rotating Orbit SAR Based on Bayesian Estimation
收藏中国科学数据2026-04-13 更新2026-04-25 收录
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https://www.sciengine.com/AA/doi/10.12466/xhcl.2026.03.008
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Synthetic aperture radar (SAR) plays a crucial role in the health monitoring of urban buildings. However, in two-dimensional imaging, it encounters challenges such as geometric distortion (overlap, shadowing, and foreshortening) because of the complexity of building structures. As SAR uses the geometric deformations in two-dimensional projections to obtain three-dimensional structural information, 3D imaging becomes highly significant in building health monitoring. This paper proposes a Bayesian estimation-based rotational millimeter-wave SAR 3D imaging model, as a new approach for building 3D point cloud reconstruction and high-precision height calculation. To address the image quality degradation caused by sidelobes and speckle noise, a multiangle millimeter-wave radar system was developed for data acquisition through rotation along a linear trajectory. A hierarchical matching strategy based on height hypotheses was employed to solve the Range-Doppler (R-D) equation, using correlation matching to improve efficiency. To address point matching errors, a hybrid distribution model based on stereo matching was developed. Geometric offsets were modeled as target errors, to minimize error distribution, optimize elevation, and accelerate 3D imaging. Experiments using a 77 GHz millimeter-wave radar for multiangle data acquisition and 3D point cloud imaging demonstrated an imaging accuracy of 0.412 m compared with LiDAR point cloud heights, verifying the method’s effectiveness and imaging mode reliability.
创建时间:
2026-04-13



