Litcius/Paper detail

Detection of Forest Fires through Deep Unsupervised Learning Modeling of Sentinel-1 Time Series

Thomas Di Martino, Bertrand Le Saux, Régis Guinvarc’h, Laetitia Thirion-Lefèvre, Elise Colin‐Koeniguer

2023ISPRS International Journal of Geo-Information15 citationsDOIOpen Access PDF

Abstract

With an increase in the amount of natural disasters, the combined use of cloud-penetrating Synthetic Aperture Radar and deep learning becomes unavoidable for their monitoring. This article proposes a methodology for forest fire detection using unsupervised location-expert autoencoders and Sentinel-1 SAR time series. The models are trained on SAR multitemporal images over a specific area using a reference period and extract any deviating time series over that same area for the test period. We present three variations of the autoencoder, incorporating either temporal features or spatiotemporal features, and we compare it against a state-of-the-art supervised autoencoder. Despite their limitations, we show that unsupervised approaches are on par with supervised techniques, performance-wise. A specific architecture, the fully temporal autoencoder, stands out as the best-performing unsupervised approach by leveraging temporal information of Sentinel-1 time series using one-dimensional convolutional layers. The approach is generic and can be applied to many applications, though we focus here on forest fire detection in Canadian boreal forests as a successful use case.

Topics & Concepts

AutoencoderDeep learningComputer scienceArtificial intelligenceSynthetic aperture radarConvolutional neural networkUnsupervised learningChange detectionTime seriesPattern recognition (psychology)Machine learningRemote sensingGeographyFlood Risk Assessment and ManagementAnomaly Detection Techniques and ApplicationsFire effects on ecosystems