International Journal of Disaster Risk Science (Jan 2024)

Identify Landslide Precursors from Time Series InSAR Results

  • Meng Liu,
  • Wentao Yang,
  • Yuting Yang,
  • Lanlan Guo,
  • Peijun Shi

DOI
https://doi.org/10.1007/s13753-023-00532-8
Journal volume & issue
Vol. 14, no. 6
pp. 963 – 978

Abstract

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Abstract Landslides cause huge human and economic losses globally. Detecting landslide precursors is crucial for disaster prevention. The small baseline subset interferometric synthetic-aperture radar (SBAS-InSAR) has been a popular method for detecting landslide precursors. However, non-monotonic displacements in SBAS-InSAR results are pervasive, making it challenging to single out true landslide signals. By exploiting time series displacements derived by SBAS-InSAR, we proposed a method to identify moving landslides. The method calculates two indices (global/local change index) to rank monotonicity of the time series from the derived displacements. Using two thresholds of the proposed indices, more than 96% of background noises in displacement results can be removed. We also found that landslides on the east and west slopes are easier to detect than other slope aspects for the Sentinel-1 images. By repressing background noises, this method can serve as a convenient tool to detect landslide precursors in mountainous areas.

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