Portraying the Need for Temporal Data in Flood Detection via Sentinel-1
- URL: http://arxiv.org/abs/2403.03671v1
- Date: Wed, 6 Mar 2024 12:47:49 GMT
- Title: Portraying the Need for Temporal Data in Flood Detection via Sentinel-1
- Authors: Xavier Bou, Thibaud Ehret, Rafael Grompone von Gioi, Jeremy Anger
- Abstract summary: identifying flood affected areas in remote sensing data is a critical problem in earth observation.
We extend the globally diverse MMFlood dataset to multi-date by providing one year of Sentinel-1 observations around each flood event.
We provide a simple method inspired by the popular video change detector ViBe, results of which quantitatively align with the SAR image time series.
- Score: 5.380009458891537
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Identifying flood affected areas in remote sensing data is a critical problem
in earth observation to analyze flood impact and drive responses. While a
number of methods have been proposed in the literature, there are two main
limitations in available flood detection datasets: (1) a lack of region
variability is commonly observed and/or (2) they require to distinguish
permanent water bodies from flooded areas from a single image, which becomes an
ill-posed setup. Consequently, we extend the globally diverse MMFlood dataset
to multi-date by providing one year of Sentinel-1 observations around each
flood event. To our surprise, we notice that the definition of flooded pixels
in MMFlood is inconsistent when observing the entire image sequence. Hence, we
re-frame the flood detection task as a temporal anomaly detection problem,
where anomalous water bodies are segmented from a Sentinel-1 temporal sequence.
From this definition, we provide a simple method inspired by the popular video
change detector ViBe, results of which quantitatively align with the SAR image
time series, providing a reasonable baseline for future works.
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