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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Extracting sinkhole features from time-series of TerraSAR-X/TanDEM-X data
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Extracting sinkhole features from time-series of TerraSAR-X/TanDEM-X data

机译:从TerraSAR-X / TanDEM-X数据的时间序列中提取下沉特征

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摘要

Sinkholes are significant geologic hazards that are mainly formed in water-soluble carbonate bedrocks such as limestone, dolomite or gypsum. Sinkhole formation causes the surface to subside or collapse suddenly without any prior warning, and therefore can lead to extensive damage and even loss of life and property. Delineating sinkholes is important for understanding hydrological processes and mitigating geological hazards in karst areas. The recent development in deriving high-resolution digital elevation models from space missions such as TerraSAR-X/TanDEM-X (TSX/TDX) enables us to delineate and analyze geomorphologic features and landscape structures at small scale (up to 2 m). In this study we use time-series of TSX/TDX data and develop an adaptive sinkhole-analysis method using interferometry observations. A wavelet-based refinement approach is implemented on interferomeric processing to reduce the baseline bias effects and align the interferometrically-derived DEMs. The multi-temporal DEMs are then successfully stacked using Canonical Correlation Analysis (CCA) to reconstruct a higher quality DEM. Finally, feature extraction using watershed algorithm is applied to precisely delineate geomorphometric characteristics of the sinkholes.Five TSX/TDX images are selected to evaluate the performance of our approach for sinkholes in Hamedan, West Iran. Results show that applying our methodology on high-resolution TSX/TDX data from different geometries and time periods enables us to effectively distinguish sinkholes from other depression features of the basin. Different TSX/TDX pairs produce consistent results for diameter and depth of sinkholes with the standard deviation of approximately 1 m, in agreement with field observations.
机译:污水坑是重大的地质灾害,主要形成于水溶性碳酸盐基岩中,例如石灰石,白云石或石膏。在没有任何事先警告的情况下,形成孔眼会导致表面突然塌陷或塌陷,因此可能导致广泛的破坏,甚至导致生命和财产损失。划定下沉洞对于了解水文过程和减轻喀斯特地区的地质灾害非常重要。从诸如TerraSAR-X / TanDEM-X(TSX / TDX)之类的太空任务中获得高分辨率数字高程模型的最新进展使我们能够在小规模(最大2 m)范围内描绘和分析地貌特征和景观结构。在这项研究中,我们使用TSX / TDX数据的时间序列,并开发了一种利用干涉测量观察的自适应陷坑分析方法。基于小波的细化方法是在干扰素处理上实施的,以减少基线偏差影响并对齐干涉法得出的DEM。然后使用规范相关分析(CCA)成功地堆叠多时间DEM,以重建更高质量的DEM。最后,利用分水岭算法进行特征提取以精确描绘出井眼的地貌特征。选择了五张TSX / TDX图像来评估我们在伊朗西部哈米丹的井眼方法的性能。结果表明,将我们的方法应用于来自不同几何形状和时间段的高分辨率TSX / TDX数据,使我们能够有效地区分沉陷区和盆地的其他凹陷特征。不同的TSX / TDX对产生的沉孔直径和深度的结果一致,与现场观察结果一致,标准偏差约为1 m。

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