Datasets:
b-FLAIR-test-spot: Building Change Detection Evaluation Dataset (SPOT-6/7)
Dataset Description
b-FLAIR-test-spot is an evaluation dataset for building change detection, containing 1,730 annotated image pairs with binary building change masks. This dataset is built from b-FLAIR-test by downloading acquisitions at the same dates and locations for each patch from SPOT-6/7 satellite imagery. It is designed for in-domain evaluation of methods trained on b-FLAIR-spot in particular and provides a rigorous benchmark for bi-temporal building change detection from satellite imagery in general.
Project page: https://xavibou.github.io/CDviaWTS/
Dataset Format
- Number of pairs: 1,730 image pairs
- Image format: 3-band images (Red, Green, Blue), 64×64 pixels
- Resolution: 1.6 meters per pixel
- Annotation: Binary building change masks
- Geographic coverage: 9 different French administrative departments
- Change types: New building constructions or no change (~30% of pairs show no change)
Key Features
- Images acquired from SPOT-6/7 satellite at the same dates and locations as b-FLAIR-test from ORTHO-SAT imagery [2]
- Expert-annotated pairs verified by independent assessors
- Focuses exclusively on building construction (no building destruction cases included)
- Compatible with models trained on FLAIR [1], b-FLAIR, or b-FLAIR-spot datasets
References
[1] Garioud et al. (2023). FLAIR: a country-scale land cover semantic segmentation dataset from multi-source optical imagery. In NeurIPS
[2] IGN - Institut national de l’information géographique et forestière. (2025). ORTHO-SAT®: Les ortho-images issues de prises de vues satellitaires
Citation
If you use this dataset, please cite the following publication:
@article{bou2026remote,
title={Remote Sensing Change Detection via Weak Temporal Supervision},
author={Bou, Xavier and Vincent, Elliot and Facciolo, Gabriele and Grompone von Gioi, Rafael and Morel, Jean-Michel and Ehret, Thibaud},
journal={arXiv preprint arXiv:2601.02126},
year={2026}
}
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