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Dataset of DInSAR wrapped phase signals for AI-based automated detection and classification of mass movements
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Abstract
With the growing use of Artificial Intelligence (AI) in remote sensing of mass movements, available datasets for model training and validation are increasingly needed. Although Differential Synthetic Aperture Radar Interferometry (DInSAR) is a widely used technique for studying mass movements, wrapped interferograms remain less exploited, and the importance of geomorphological expertise in their interpretation is not usually emphasised.
In this work, we introduce a dataset of DInSAR wrapped phase signals designed to support the development of Deep Learning (DL) models for the automated detection and classification of active slow-moving mass movements. The dataset covers two selected areas in the Central European Alps and the Northern Apennines. It contains 4910 DInSAR wrapped phase signals derived from 92 Sentinel-1 interferograms with temporal baselines ranging from 6 days to 1 year, and classified into nine distinct landslide and periglacial landform classes after careful geomorphological interpretation. This dataset is expected to support the scientific community in AI-based applications for mass movement research, while also serving as a benchmark for the generation of comparable datasets.
DOI
https://doi.org/10.31223/X5877Z
Subjects
Earth Sciences, Environmental Monitoring, Environmental Sciences, Geology, Geomorphology, Physical Sciences and Mathematics
Keywords
DInSAR, mass movements, wrapped interferograms, geomorphological mapping, deep learning, object detection
Dates
Published: 2026-03-26 09:16
Last Updated: 2026-03-26 09:16
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Conflict of interest statement:
None
Data Availability:
The dataset is available at https://doi.org/10.5281/zenodo.17899662 (Reyes-Carmona et al., 2025).
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