Satellite remote sensing is playing an increasing role in the rapid mapping of damage after natural disasters. In particular, synthetic aperture radar (SAR) can image the Earth's surface and map damage in all weather conditions, day and night. However, current SAR damage mapping methods struggle to separate damage from other changes in the Earth's surface. In this study, we propose a novel approach to damage mapping, combining deep learning with the full time history of SAR observations of an impacted region in order to detect anomalous variations in the Earth's surface properties due to a natural disaster. We quantify Earth surface change using time series of interferometric SAR coherence, then use a recurrent neural network (RNN) as a pro...
Humanitarian crises related to building and infrastructure damage, i.e. natural hazards and collater...
International audiencePost-disaster damage mapping is an essential task following tragic events such...
We present a neural network-based method to detect anomalies in time-dependent surface deformation f...
The emergence of the Sentinel-1A and 1B satellites now offers freely available and widely accessible...
We use changes in the interferometric coherence to map earthquake damages that occurred in the city ...
This paper presents classification results using neural networks based on INSAR coherence imagery da...
This work aims to clarify the potential of incoherent and coherent change detection (CD) approaches ...
Interferometric SAR (InSAR) algorithms exploit synthetic aperture radar (SAR) images to estimate gro...
Land-cover changes occur naturally in a progressive and gradual way, but they may happen rapidly and...
During disaster response, the availability of relevant information, delivered in a proper format ena...
Fast crisis response after natural disasters, such as earthquakes and tropical storms, is necessary ...
The April 25, 2015 M7.8 Gorkha earthquake caused more than 8,000 fatalities and widespread building ...
The 2020 Masbate earthquake in the Philippines, with a moment magnitude 6.6, occurred on August 18, ...
Humanitarian crises related to building and infrastructure damage, i.e. natural hazards and collater...
International audiencePost-disaster damage mapping is an essential task following tragic events such...
We present a neural network-based method to detect anomalies in time-dependent surface deformation f...
The emergence of the Sentinel-1A and 1B satellites now offers freely available and widely accessible...
We use changes in the interferometric coherence to map earthquake damages that occurred in the city ...
This paper presents classification results using neural networks based on INSAR coherence imagery da...
This work aims to clarify the potential of incoherent and coherent change detection (CD) approaches ...
Interferometric SAR (InSAR) algorithms exploit synthetic aperture radar (SAR) images to estimate gro...
Land-cover changes occur naturally in a progressive and gradual way, but they may happen rapidly and...
During disaster response, the availability of relevant information, delivered in a proper format ena...
Fast crisis response after natural disasters, such as earthquakes and tropical storms, is necessary ...
The April 25, 2015 M7.8 Gorkha earthquake caused more than 8,000 fatalities and widespread building ...
The 2020 Masbate earthquake in the Philippines, with a moment magnitude 6.6, occurred on August 18, ...
Humanitarian crises related to building and infrastructure damage, i.e. natural hazards and collater...
International audiencePost-disaster damage mapping is an essential task following tragic events such...
We present a neural network-based method to detect anomalies in time-dependent surface deformation f...