SAR-based landslide classification pretraining leads to better segmentation
Vanessa B\"ohm, Wei Ji Leong, Ragini Bal Mahesh, Ioannis Prapas,, Edoardo Nemni, Freddie Kalaitzis, Siddha Ganju, Raul Ramos-Pollan

TL;DR
Pretraining deep learning models on a simple landslide detection task using SAR data improves segmentation accuracy and reduces false positives, aiding rapid disaster response.
Contribution
This study introduces a two-stage training approach for SAR-based landslide segmentation, leveraging pretraining on a simpler task to enhance performance in data-scarce scenarios.
Findings
Pretraining slightly improves landslide detection metrics.
Significantly reduces false positive rate in non-landslide areas.
Provides better estimation of landslide-affected pixels.
Abstract
Rapid assessment after a natural disaster is key for prioritizing emergency resources. In the case of landslides, rapid assessment involves determining the extent of the area affected and measuring the size and location of individual landslides. Synthetic Aperture Radar (SAR) is an active remote sensing technique that is unaffected by weather conditions. Deep Learning algorithms can be applied to SAR data, but training them requires large labeled datasets. In the case of landslides, these datasets are laborious to produce for segmentation, and often they are not available for the specific region in which the event occurred. Here, we study how deep learning algorithms for landslide segmentation on SAR products can benefit from pretraining on a simpler task and from data from different regions. The method we explore consists of two training stages. First, we learn the task of identifying…
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Taxonomy
TopicsLandslides and related hazards · Cryospheric studies and observations · Flood Risk Assessment and Management
MethodsTest
