Published December 8, 2025 | Version V1

GBMT-SLID: Global Bimodal-Bitemporal Sentinel Landslide Inventory Dataset

  • 1. ROR icon Hohai University

Contributors

Project member:

Description

GBMT-SLID is a global bimodal–bitemporal landslide inventory dataset constructed from co-registered Sentinel-2 pre- and post-event imagery and Copernicus DEM products across 29 diverse regions worldwide. To ensure consistency and analytical readiness, all optical and topographic layers were upscaled to 10 m resolution, harmonized, and processed using the IMAD algorithm to generate change maps, while expert landslide inventories were rasterized to aligned 10 m masks. Sentinel-2 spectral bands and spectral information features were stacked into 11-channel pre/post image pairs, and DEM-derived topographic factors formed 6-channel topographic inputs. All data were normalized and tiled into 256×256 patches, with strict quality control excluding patches with insufficient landslide content or excessive NoData, followed by KNN-based imputation and visual alignment checks, resulting in 3,772 high-quality multimodal patches. A two-stage enhancement pipeline diffusion-driven domain adaptation and region-aware augmentation was applied before partitioning the dataset into 24 “seen” regions for training/validation and five “unseen” regions (Colombia, DRC, Uganda, Myanmar, Philippines) for generalization assessment. GBMT-SLID is designed as a comprehensive benchmark for advancing landslide segmentation, multimodal fusion, and bitemporal analysis in remote sensing

 

Files

Readme1.txt

Files (23.4 GB)

Name Size
md5:b40ea34d29c11f44fc13fd44335c23d8
20.8 GB Download
md5:13fc53189985ffa7e68f3c04da773a8f
2.2 GB Download
md5:9f4bdca061037248d904953f39826c63
33.6 MB Download
md5:16d1b2d73754ecded2756e2743208f7c
819.9 kB Download
md5:7fc62ee3fe5524c8cccfe4fb4643c944
2.0 kB Preview Download
md5:5e3c493947e2f3ac0d141a641893893b
6.3 kB Download
md5:b8d334c5d3485a51670f996f75c0fd79
389.2 MB Download

Additional details

Related works

Has part
Journal: 10.1016/j.neucom.2026.134060 (DOI)
Is supplement to
Journal article: 10.1007/s41748-025-00577-3 (DOI)

Funding

National Natural Science Foundation of China
51939004

Dates

Created
2025-11-04
Dataset

Software