4.7 Article

Multi-Temporal Satellite Image Composites in Google Earth Engine for Improved Landslide Visibility: A Case Study of a Glacial Landscape

期刊

REMOTE SENSING
卷 14, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/rs14102301

关键词

multi-temporal image composite; change detection; Jolster; landslide database; Sentinel-2; Sentinel-1; Google Earth Engine; NDVI; glacial landscape

资金

  1. Research Council of Norway [237859]
  2. Research Council Norway [GBV 2020-2022]
  3. NORADAPT (Norwegian Research Centre on Sustainable Climate Change Adaption)
  4. NGU (Norges Geologiske Undersokelse)

向作者/读者索取更多资源

This study demonstrates how Google Earth Engine can be used with satellite images to create multi-temporal change detection image composites for improved landslide visibility and detection. The use of multi-temporal composite approaches reduces noise and improves landslide visibility without compromising spatial resolution, offering valuable potential for improving spatial bias in landslide inventories. The results show significant improvements in landslide visibility using multi-temporal image composites, with the potential for quick repetition in new areas to reduce spatial bias in landslide databases.
Regional early warning systems for landslides rely on historic data to forecast future events and to verify and improve alarms. However, databases of landslide events are often spatially biased towards roads or other infrastructure, with few reported in remote areas. In this study, we demonstrate how Google Earth Engine can be used to create multi-temporal change detection image composites with freely available Sentinel-1 and -2 satellite images, in order to improve landslide visibility and facilitate landslide detection. First, multispectral Sentinel-2 images were used to map landslides triggered by a summer rainstorm in Jolster (Norway), based on changes in the normalised difference vegetation index (NDVI) between pre- and post-event images. Pre- and post-event multi-temporal images were then created by reducing across all available images within one month before and after the landslide events, from which final change detection image composites were produced. We used the mean of backscatter intensity in co- (VV) and cross-polarisations (VH) for Sentinel-1 synthetic aperture radar (SAR) data and maximum NDVI for Sentinel-2. The NDVI-based mapping increased the number of registered events from 14 to 120, while spatial bias was decreased, from 100% of events located within 500 m of a road to 30% close to roads in the new inventory. Of the 120 landslides, 43% were also detectable in the multi-temporal SAR image composite in VV polarisation, while only the east-facing landslides were clearly visible in VH. Noise, from clouds and agriculture in Sentinel-2, and speckle in Sentinel-1, was reduced using the multi-temporal composite approaches, improving landslide visibility without compromising spatial resolution. Our results indicate that manual or automated landslide detection could be significantly improved with multi-temporal image composites using freely available earth observation images and Google Earth Engine, with valuable potential for improving spatial bias in landslide inventories. Using the multi-temporal satellite image composites, we observed significant improvements in landslide visibility in Jolster, compared with conventional bi-temporal change detection methods, and applied this for the first time using VV-polarised SAR data. The GEE scripts allow this procedure to be quickly repeated in new areas, which can be helpful for reducing spatial bias in landslide databases.

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