Detecting Deforestation from Sentinel-1 Data in the Absence of Reliable Reference Data
Johannes N. Hansen, Edward T.A. Mitchard, Stuart King

TL;DR
This paper introduces a novel SAR-based method for deforestation detection that performs well even without reliable reference data, offering timely insights crucial for climate and ecosystem preservation.
Contribution
The study presents a new change detection approach using Sentinel-1 SAR data that maintains high accuracy despite noisy or unreliable reference labels.
Findings
Achieves 96.5% producer's accuracy in deforestation detection
Maintains accuracy with up to 20% noise in reference labels
Potential to improve global deforestation monitoring timeliness
Abstract
Forests are vital for the wellbeing of our planet. Large and small scale deforestation across the globe is threatening the stability of our climate, forest biodiversity, and therefore the preservation of fragile ecosystems and our natural habitat as a whole. With increasing public interest in climate change issues and forest preservation, a large demand for carbon offsetting, carbon footprint ratings, and environmental impact assessments is emerging. Most often, deforestation maps are created from optical data such as Landsat and MODIS. These maps are not typically available at less than annual intervals due to persistent cloud cover in many parts of the world, especially the tropics where most of the world's forest biomass is concentrated. Synthetic Aperture Radar (SAR) can fill this gap as it penetrates clouds. We propose and evaluate a novel method for deforestation detection in the…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote-Sensing Image Classification · Identification and Quantification in Food
