Efficient Identification and Monitoring of Landslides by Time-Series InSAR Combining Single- and Multi-Look Phases

Remote. Sens. Pub Date : 2022-02-20 DOI:10.3390/rs14041026
Zijing Liu, Haijun Qiu, Yaru Zhu, Ya Liu, Dongdong Yang, Shuyue Ma, Juanjuan Zhang, Yuyao Wang, Luyao Wang, B. Tang
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引用次数: 36

Abstract

Identification and monitoring of unstable slopes across wide regions using Synthetic Aperture Radar Interferometry (InSAR) can further help to prevent and mitigate geological hazards. However, the low spatial density of measurement points (MPs) extracted using the traditional time-series InSAR method in topographically complex mountains and vegetation-covered slopes makes the final result unreliable. In this study, a method of time-series InSAR analysis using single- and multi-look phases were adopted to solve this problem, which exploited single- and multi-look phases to increase the number of MPs in the natural environment. Archived ascending and descending Sentinel-1 datasets covering Zhouqu County were processed. The results revealed that nine landslides could be quickly identified from the average phase rate maps using the Stacking method. Then, the time-series InSAR analysis with single- and multi-look phases could be used to effectively monitor the deformation of these landslides and to quantitatively analyze the magnitude and dynamic evolution of the deformation in various parts of the landslides. The reliability of the InSAR results was further verified by field investigations and Unmanned Aerial Vehicle (UAV) surveys. In addition, the precursory movements and causative factors of the recent Yahuokou landslide were analyzed in detail, and the application of the time-series InSAR method in landslide investigations was discussed and summarized. Therefore, this study has practical significance for early warning of landslides and risk mitigation.
单期与多期相结合的时间序列InSAR滑坡有效识别与监测
利用合成孔径雷达干涉测量技术(InSAR)识别和监测大范围的不稳定边坡,可以进一步帮助预防和减轻地质灾害。然而,在地形复杂的山区和植被覆盖的斜坡中,传统的时间序列InSAR方法提取的测点空间密度低,使得最终结果不可靠。为了解决这一问题,本研究采用单相和多相时序InSAR分析方法,利用单相和多相来增加自然环境中MPs的数量。对舟曲地区Sentinel-1上升和下降数据进行了处理。结果表明,采用叠加法可以从平均相率图中快速识别出9个滑坡。利用InSAR单期和多期时间序列分析可以有效地监测这些滑坡的变形,并定量分析滑坡各部位的变形幅度和动态演变。通过野外调查和无人机(UAV)调查,进一步验证了InSAR结果的可靠性。此外,详细分析了近年来崖火口滑坡的前兆运动和成因,并对时序InSAR方法在滑坡调查中的应用进行了讨论和总结。因此,本研究对滑坡预警和减灾具有现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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