Deep Learning-based Damage Mapping with InSAR Coherence Time Series
Oliver L. Stephenson, Tobias K\"ohne, Eric Zhan, Brent E. Cahill,, Sang-Ho Yun, Zachary E. Ross, Mark Simons

TL;DR
This paper introduces a deep learning method utilizing InSAR coherence time series and RNNs to improve damage mapping accuracy after natural disasters, outperforming traditional coherence loss approaches.
Contribution
It presents a novel approach combining deep learning with full SAR coherence time series for more accurate damage detection in disaster-affected regions.
Findings
Good agreement with observed damage
Quantitative improvement over traditional methods
Applicable to multiple earthquake cases
Abstract
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 probabilistic anomaly detector on these coherence time series. The RNN is first trained on pre-event coherence time series, and then forecasts a…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Ultrasonics and Acoustic Wave Propagation
