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Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient
Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient
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Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient
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Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient
Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient

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Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient
Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient
Journal Article

Mining-Induced Subsidence Boundary Delineation Using Dual-Feature Clustering of InSAR-Derived Deformation Gradient

2025
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Overview
Mining-induced subsidence boundaries, i.e., the surface areas affected by underground mining, play an important role in surface damage assessment and illegal mining identification. Traditional boundary delineation methods rely on field surveys, which restrict their applicability in regions with limited ground observations. Interferometric Synthetic Aperture Radar (InSAR) technology provides a cost-effective and non-contact solution for delineating subsidence boundaries. However, existing InSAR-based methods for subsidence boundary delineation are susceptible to observation noise and other deformation sources, which reduce the accuracy of boundary identification. To this end, this study proposes a novel method for delineating mining-induced subsidence boundaries by integrating both the magnitude and direction of InSAR-derived deformation gradients, referred to as DMSB-DG. First, time-series line-of-sight (LOS) deformation is obtained based on InSAR technology over mining areas. Then, the Roberts operator is employed to compute the magnitude and direction of the deformation gradients, which serve as the basis for boundary delineation. Finally, the ISODATA clustering algorithm is used, incorporating both the magnitude and direction of the deformation gradients as dual constraints to achieve accurate delineation of mining-affected boundaries. The combination of the two features effectively enhances the completeness and accuracy of boundary delineation. The performance of the proposed DMSB-DG method has been verified by simulation and field data. Specifically, compared with the adaptive mining subsidence boundary delimitation (ASBD) method, the proposed method achieved Kappa coefficients of 91.96% and 87.28%, representing improvements of 21.23% and 27.14% in two field tests, respectively. Furthermore, the influence of ascending and descending SAR images, as well as observational noise, on the performance of the proposed algorithm is also evaluated. The results demonstrate that the proposed method effectively suppresses InSAR noise and other interfering deformations, enabling high-precision delineation of mining impact boundaries.