FOR-instance: a UAV laser scanning benchmark dataset for semantic and instance segmentation of individual trees
Stefano Puliti, Grant Pearse, Peter Surov\'y, Luke Wallace, Markus, Hollaus, Maciej Wielgosz, Rasmus Astrup

TL;DR
The FOR-instance dataset provides a comprehensive UAV laser scanning benchmark for advancing and evaluating semantic and instance segmentation methods of individual trees in diverse forest environments.
Contribution
It introduces a standardized, annotated UAV laser scanning dataset for 3D forest segmentation, facilitating method development and benchmarking.
Findings
Dataset includes five global forest types.
Supports deep learning-based segmentation approaches.
Enables measurement of tree diameter at breast height.
Abstract
The FOR-instance dataset (available at https://doi.org/10.5281/zenodo.8287792) addresses the challenge of accurate individual tree segmentation from laser scanning data, crucial for understanding forest ecosystems and sustainable management. Despite the growing need for detailed tree data, automating segmentation and tracking scientific progress remains difficult. Existing methodologies often overfit small datasets and lack comparability, limiting their applicability. Amid the progress triggered by the emergence of deep learning methodologies, standardized benchmarking assumes paramount importance in these research domains. This data paper introduces a benchmarking dataset for dense airborne laser scanning data, aimed at advancing instance and semantic segmentation techniques and promoting progress in 3D forest scene segmentation. The FOR-instance dataset comprises five curated and…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Forest Ecology and Biodiversity Studies
