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arxiv:2603.06382

CHMv2: Improvements in Global Canopy Height Mapping using DINOv3

Published on Mar 6
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Abstract

CHMv2 presents a global meter-resolution canopy height map using DINOv3-based depth estimation trained against ALS data, showing improved accuracy and reduced bias in tall forests while preserving fine-scale structural details.

AI-generated summary

Accurate canopy height information is essential for quantifying forest carbon, monitoring restoration and degradation, and assessing habitat structure, yet high-fidelity measurements from airborne laser scanning (ALS) remain unevenly available globally. Here we present CHMv2, a global, meter-resolution canopy height map derived from high-resolution optical satellite imagery using a depth-estimation model built on DINOv3 and trained against ALS canopy height models. Compared to existing products, CHMv2 substantially improves accuracy, reduces bias in tall forests, and better preserves fine-scale structure such as canopy edges and gaps. These gains are enabled by a large expansion of geographically diverse training data, automated data curation and registration, and a loss formulation and data sampling strategy tailored to canopy height distributions. We validate CHMv2 against independent ALS test sets and against tens of millions of GEDI and ICESat-2 observations, demonstrating consistent performance across major forest biomes.

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