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Understanding Landslide Expression in SAR Backscatter Data: Global Study and Disaster Response Application

Abstract

Cloud cover can delay landslide detection in optical satellite imagery for weeks, complicating disaster response. Synthetic Aperture Radar (SAR) backscatter imagery, which is widely used for monitoring floods and avalanches, remains underutilised for landslide detection due to a limited understanding of landslide signatures in SAR data. We developed a conceptual model of landslide expression in SAR backscatter (σ°) change images through iterative investigation of over 1000 landslides across 30 diverse study areas. Using multi-temporal composites and dense time series Sentinel-1 C-band SAR data, we identified characteristic patterns linked to land cover, terrain, and landslide material. The results showed either increased or decreased backscatter depending on environmental conditions, with reduced visibility in urban or mixed vegetation areas. Detection was also hindered by geometric distortions and snow cover. The diversity of landslide expression illustrates the need to consider local variability and multi-track (ascending and descending) satellite data in designing representative training datasets for automated detection models. The conceptual model was applied to three recent disaster events using the first post-event Sentinel-1 image, successfully identifying previously unknown landslides before optical imagery became available in two cases. This study provides a theoretical foundation for interpreting landslides in SAR imagery and demonstrates its utility for rapid landslide detection. The findings support further exploration of rapid landslides in SAR backscatter data and future development of automated detection models, offering a valuable tool for disaster response.
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Category

Academic article

Language

English

Author(s)

  • Erin Lindsay
  • Alexandra Jarna Ganerød
  • Graziella Devoli
  • Johannes Reiche
  • Steinar Nordal
  • Regula Frauenfelder

Affiliation

  • SINTEF Community / Infrastructure
  • Norwegian University of Science and Technology
  • Norwegian Water Resources and Energy Directorate
  • Geological Survey of Norway
  • Norwegian Geotechnical Institute

Year

2025

Published in

Remote Sensing

Volume

17

Issue

19

Page(s)

1 - 36

View this publication at Norwegian Research Information Repository