deadtrees.earth-aerial: A Multi-Resolution Aerial Image Dataset for Tree Cover and Mortality Detection
Ayushi Sharma, Clemens Mosig, Lukas Drees, Salim Soltani, Janusch Vajna-Jehle, Aaron Sheppard, Belqis Ahmadi, Jonathan Schmid, Paul Neumeier, Nathan Jacobs, Jan Dirk Wegner, Teja Kattenborn

TL;DR
This paper introduces two comprehensive, open, machine-learning-ready aerial image datasets for global-scale tree cover and mortality segmentation, enabling scalable forest monitoring.
Contribution
It provides the first globally representative datasets for joint segmentation of tree cover and mortality from high-resolution aerial imagery, facilitating advanced machine learning applications.
Findings
Established strong baseline models for mortality segmentation.
Achieved significant improvements in F1 scores, especially in boreal forests.
Datasets span diverse biomes and forest structures worldwide.
Abstract
Forests worldwide are increasingly threatened by climate change and disturbances such as fire, pests, and pathogens, creating an urgent need for scalable monitoring of tree cover and tree mortality. Aerial imagery from drones and aircraft is a key data source for detailed and large-scale mapping of tree crowns and mortality. However, related progress is limited by the lack of globally representative, harmonized datasets for joint segmentation of tree cover and mortality. We introduce two novel, open, machine-learning-ready datasets to enable joint segmentation of tree cover and tree mortality from centimeter-scale aerial imagery for the first time at global scales. With DTE-aerial-train, we provide a training dataset comprising 385K image patches of size 1024x1024 pixels, with resolutions ranging from 2.5 to 20 cm. It includes multi-class expert-annotated and -audited pseudo-labels for…
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