TL;DR
This paper introduces a global method using medium-resolution satellite imagery and deep learning to accurately identify scattered trees outside dense forests, aiding ecological monitoring and land management.
Contribution
It presents a novel, globally consistent deep learning approach combining Sentinel-2 and Sentinel-1 data to detect trees larger than three meters in canopy diameter with high accuracy.
Findings
Achieves over 75% accuracy in low-density areas
Reaches 95% accuracy in dense forest areas
Improves detection in sparse and cloudy regions by up to 20%
Abstract
Scattered trees outside of dense, closed-canopy forests are very important for carbon sequestration, supporting livelihoods, maintaining ecosystem integrity, and climate change adaptation and mitigation. In contrast to trees inside of closed-canopy forests, not much is known about the spatial extent and distribution of scattered trees at a global scale. Due to the cost of high-resolution satellite imagery, global monitoring systems rely on medium-resolution satellites to monitor land use. Here we present a globally consistent method to identify trees with canopy diameters greater than three meters with medium-resolution optical and radar imagery. Biweekly cloud-free, pan-sharpened 10 meter Sentinel-2 optical imagery and Sentinel-1 radar imagery are used to train a fully convolutional network, consisting of a convolutional gated recurrent unit layer and a feature pyramid attention layer.…
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