Mapping oil palm density at country scale: An active learning approach
Andr\'es C. Rodr\'iguez, Stefano D'Aronco, Konrad Schindler, Jan, D.Wegner

TL;DR
This paper introduces an active learning deep learning approach to accurately map and count oil palm trees at a large scale using Sentinel-2 satellite imagery, achieving detailed density maps for Malaysia and Indonesia.
Contribution
It presents a novel active learning method for large-scale oil palm density estimation that reduces labeling effort and improves mapping accuracy.
Findings
Generated high-resolution density maps for Indonesia and Malaysia.
Achieved a mean absolute error of ±7.3 trees/ha.
Estimated over 1.2 billion oil palms in Indonesia and 0.5 billion in Malaysia.
Abstract
Accurate mapping of oil palm is important for understanding its past and future impact on the environment. We propose to map and count oil palms by estimating tree densities per pixel for large-scale analysis. This allows for fine-grained analysis, for example regarding different planting patterns. To that end, we propose a new, active deep learning method to estimate oil palm density at large scale from Sentinel-2 satellite images, and apply it to generate complete maps for Malaysia and Indonesia. What makes the regression of oil palm density challenging is the need for representative reference data that covers all relevant geographical conditions across a large territory. Specifically for density estimation, generating reference data involves counting individual trees. To keep the associated labelling effort low we propose an active learning (AL) approach that automatically chooses…
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