학술논문

Forest Disturbance Detection via Self-Supervised and Transfer Learning With Sentinel-1&2 Images
Document Type
Periodical
Source
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing IEEE J. Sel. Top. Appl. Earth Observations Remote Sensing Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of. 17:4751-4767 2024
Subject
Geoscience
Signal Processing and Analysis
Power, Energy and Industry Applications
Forestry
Self-supervised learning
European Space Agency
Transfer learning
Biological system modeling
Satellite constellations
Remote sensing
Boreal forest
change detection
Sentinel-1
Sentinel-2
windthrown forest
snowload damage
deep learning
self-supervised learning
transfer learning
contrastive learning
Language
ISSN
1939-1404
2151-1535
Abstract
In this study, we examine the potential of leveraging self-supervised learning (SSL) and transfer learning methodologies for forest disturbance mapping using Earth Observation (EO) data. Our focus is on natural disturbances caused by windthrow and snowload damages. Particularly, we investigate the potential of knowledge-distillation-based contrastive learning approaches to obtain comprehensive representations of forest structure changes using Copernicus Sentinel-1 and Sentinel-2 satellite imagery. Leveraging pretrained backbone models from knowledge distillation, we employ transfer learning based on deep change vector analysis to delineate forest changes. We demonstrate developed approaches on two use cases, namely, mapping windthown forest using bitemporal Sentinel-1 and Sentinel-2 images, and mapping forest areas damaged by excessive snowload using bitemporal Sentinel-1 images. Developed self-supervised models were compared in a benchmarking exercise. The best results were provided by pixel-level contrastive learning for Sentinel-1-based snowload damage mapping with an overall accuracy of 84% and an $F_{1}$ score of 0.567, and for Sentinel-2-based forest windthrow mapping with an overall accuracy of 76.5% and an $F_{1}$ score of 0.692. We expect that developed methodologies can be useful for mapping also other types of forest disturbances using Copernicus Sentinel images or similar EO data. Our findings underscore the potential of SSL and transfer learning for enhancing forest disturbance detection using EO.