杨梦诗, 廖明生, 常玲, HanssenRamon F.. 城市场景时序InSAR形变解译: 问题分析与研究进展[J]. 武汉大学学报 ( 信息科学版), 2023, 48(10): 1643-1660. DOI: 10.13203/j.whugis20230289
引用本文: 杨梦诗, 廖明生, 常玲, HanssenRamon F.. 城市场景时序InSAR形变解译: 问题分析与研究进展[J]. 武汉大学学报 ( 信息科学版), 2023, 48(10): 1643-1660. DOI: 10.13203/j.whugis20230289
YANG Mengshi, LIAO Mingsheng, CHANG Ling, HANSSEN Ramon F.. Interpretation of Multi-epoch InSAR Deformation for Urban Scenes: A Problem Analysis and Literature Review[J]. Geomatics and Information Science of Wuhan University, 2023, 48(10): 1643-1660. DOI: 10.13203/j.whugis20230289
Citation: YANG Mengshi, LIAO Mingsheng, CHANG Ling, HANSSEN Ramon F.. Interpretation of Multi-epoch InSAR Deformation for Urban Scenes: A Problem Analysis and Literature Review[J]. Geomatics and Information Science of Wuhan University, 2023, 48(10): 1643-1660. DOI: 10.13203/j.whugis20230289

城市场景时序InSAR形变解译: 问题分析与研究进展

Interpretation of Multi-epoch InSAR Deformation for Urban Scenes: A Problem Analysis and Literature Review

  • 摘要: 时序InSAR(interferometric synthetic aperture radar)技术可以提供周期性形变监测,已经广泛应用于地表沉降和基础设施形变监测等工作,为城市安全和可持续发展提供重要保障。然而,由于城市场景的复杂性,InSAR精细监测以及形变信号解译仍然是一个难题和挑战。从时序InSAR相干点与地物目标映射关系不确定性为切入点,剖析了这种不确定性带来的形变解译问题,包括:(1)精细形变监测,即形变信号“在哪里”;(2)形变机制和驱动因素认知,即形变信号“是什么”;(3)形变信号对观测事件的反映,即考虑城市场景下的合成孔径雷达信号的复杂散射机制。引入了时序InSAR监测体系下InSAR相干点的描述框架,包括运动学特征、几何参数、语义信息、物理属性,并回顾了InSAR相干点参数提取与形变解译的研究进展。基于InSAR相干点几何参数、语义信息、物理属性的综合形变解译与机制认知将是未来城市场景精细形变监测、识别和安全评估等服务的关键。

     

    Abstract: Multi-epoch interferometric synthetic aperture radar (InSAR) is a highly effective technique for monitoring deformation in urban areas. However, interpreting InSAR deformation can be challenging due to various factors, including inherent geometric imaging distortion, the intricate structure and deformation properties of targets in urban scenes, and the multiple scattering of microwave signals between objects in urban scenes. This paper discusses the challenges involved in interpreting time-series InSAR deformation: (1) Precisely identifying the location of deformation signals and linking them to their corresponding objects, i.e., determining where the deformation signal occurs, (2) understanding the mechanisms and factors that cause the detected deformation signals, i.e., determining what the deformation signal represents, (3) establishing the connection among the detected deformation signals, the deformation events, and the scattering mechanisms. We suggest a parametric framework to improve the accurate interpretation of InSAR deformation. This framework includes several factors, including kinematic characteristics (deformation rate, cumulative deformation, deformation gradient, and deformation model), geometric parameters (position, size, structure, orientation, and roughness), semantic information (land cover type, terrain morphology, texture, and auxiliary information on natural and anthropogenic disturbance) and physical properties (scattering mechanism, penetrability, extensibility, conductivity, and thermal conductivity). Our approach aims to enhance the representation of coherent points for a better understanding of InSAR deformation. This paper offers a comprehensive overview of the advancements achieved in extracting parameters of InSAR coherent points and interpreting deformation based on geometric parameters, semantic information, and physical properties. High-precision 3D positioning is crucial for InSAR fine monitoring in urban areas. It helps determine the source of deformation signals and facilitates the analysis of deformation mechanisms. Semantic information, such as 3D models, high-resolution optical images, laser point cloud data, and land use data, can aid in interpreting InSAR deformation. By combining InSAR deformation data with a deep learning approach, there is an opportunity to interpret deformations effectively. In urban environments, the scattering mechanism of ground objects is complex. Multiple scattering signals can provide effective observations of deformation and information about the target's size. However, combining the scattering mechanism of synthetic aperture radar signals to carry out parameter inversion and deformation mechanism interpretation of urban target terrain remains a challenge. The framework, which considers the geometric parameters, semantic information, and physical attributes of InSAR coherent points, will be crucial for deformation interpretation and mechanism cognition. This framework will enable fine deformation monitoring, intelligent recognition, and application in future urban scenes.

     

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