HR-GLDD: a globally distributed dataset using generalized deep learning (DL) for rapid landslide mapping on high-resolution (HR) satellite imagery
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Published:2023-07-27
Issue:7
Volume:15
Page:3283-3298
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ISSN:1866-3516
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Container-title:Earth System Science Data
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language:en
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Short-container-title:Earth Syst. Sci. Data
Author:
Meena Sansar RajORCID, Nava LorenzoORCID, Bhuyan Kushanav, Puliero SilviaORCID, Soares Lucas Pedrosa, Dias Helen CristinaORCID, Floris Mario, Catani FilippoORCID
Abstract
Abstract. Multiple landslide events occur often across the world which have the
potential to cause significant harm to both human life and property.
Although a substantial amount of research has been conducted to
address mapping of landslides using Earth observation (EO) data, several
gaps and uncertainties remain with developing models to be operational
at the global scale. The lack of a high-resolution globally distributed and
event-diverse dataset for landslide segmentation poses a challenge in
developing machine learning models that can accurately and robustly detect
landslides in various regions, as the limited representation of landslide
and background classes can result in poor generalization performance of the
models. To address this issue, we present the High-Resolution Global landslide Detector Database (HR-GLDD), a high-resolution (HR) satellite
dataset (PlanetScope, 3 m pixel resolution) for landslide mapping composed
of landslide instances from 10 different physiographical regions globally in South and South-East Asia, East Asia, South America, and Central America.
The dataset contains five rainfall-triggered and five earthquake-triggered
multiple landslide events that occurred in varying geomorphological and
topographical regions in the form of standardized image patches containing
four PlanetScope image bands (red, green, blue, and NIR) and a binary mask
for landslide detection. The HR-GLDD can be accessed through this link:
https://doi.org/10.5281/zenodo.7189381 (Meena et al., 2022a, c).
HR-GLDD is one of the first datasets for landslide detection generated by
high-resolution satellite imagery which can be useful for applications in
artificial intelligence for landslide segmentation and detection studies.
Five state-of-the-art deep learning models were used to test the
transferability and robustness of the HR-GLDD. Moreover, three recent
landslide events were used for testing the performance and usability of the
dataset to comment on the detection of newly occurring significant landslide
events. The deep learning models showed similar results when testing the
HR-GLDD at individual test sites, thereby indicating the robustness of the
dataset for such purposes. The HR-GLDD is open access and it
has the potential to calibrate and develop models to produce reliable
inventories using high-resolution satellite imagery after the occurrence of
new significant landslide events. The HR-GLDD will be updated regularly by
integrating data from new landslide events.
Funder
Università degli Studi di Padova
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
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