Publications
Détails
Deijns, AAJ., Michéa, D., Déprez, A., Malet, J.-P., Kervyn, F., Thiery, W. & Dewitte, O. 2024. ‘A semi-supervised multi-temporal landslide and flash flood event detection methodology for unexplored regions using massive satellite image time series’. ISPRS Journal of Photogrammetry and Remote Sensing 215: 400-418. DOI: https://doi.org/10.1016/j.isprsjprs.2024.07.010. (PR).
Article dans une revue scientifique / Article dans un périodique
Landslides and flash floods are geomorphic hazards (GH) that often co-occur and interact and frequently lead to
societal and environmental impact. The compilation of detailed multi-temporal inventories of GH events over a
variety of contrasting natural as well as human-influenced landscapes is essential to understanding their behavior
in both space and time and allows to unravel the human drivers from the natural baselines. Yet, creating multitemporal
inventories of these GH events remains difficult and costly in terms of human labor, especially when
relatively large regions are investigated. Methods to derive GH location from satellite optical imagery have been
continuously developed and have shown a clear shift in recent years from conventional methodologies like
thresholding and regression to machine learning (ML) methodologies given their improved predictive performance.
However, these current generation ML methodologies generally rely on accurate information on either
the GH location (training samples) or the GH timing (pre- and post-event imagery), making them unfit in unexplored
regions without a priori information on GH occurrences. Currently, a detection methodology to create
multi-temporal GH event inventories applicable in relatively large unexplored areas containing a variety of
landscapes does not yet exist. We present a new semi-supervised methodology that allows for the detection of
both location and timing of GH event occurrence with optical time series, while minimizing manual user interventions.
We use the peak of the cumulative difference to the mean for a multitude of spectral indices derived
from open-access, high spatial resolution (10–20 m) Copernicus Sentinel-2 time series and generate a map per
Sentinel-2 tile that identifies impacted pixels and their related timing. These maps are used to identify GH event
impacted zones. We use the generated maps, the identified GH events impacted zones and the automatically
derived timing and use them as training sample in a Random Forest classifier to improve the spatial detection
accuracy within the impacted zone. We showcase the methodology on six Sentinel-2 tiles in the tropical East
African Rift where we detect 29 GH events between 2016 and 2021. We use 12 of these GH events (totalizing
~3900 GH features) with varying time of occurrence, contrasting landscape conditions and different landslide to
flash flood ratios to validate the detection methodology. The average identified timing of the GH events lies
within two to four weeks of their actual occurrence. The sensitivity of the methodology is mainly influenced by
the differences in landscapes, the amount of cloud cover and the size of the GH events. Our methodology is
applicable in various landscapes, can be run in a systematic mode, and is dependent only on a few parameters.
The methodology is adapted for massive computation.