2022
DOI: 10.48550/arxiv.2210.17424
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Tree Detection and Diameter Estimation Based on Deep Learning

Vincent Grondin,
Jean-Michel Fortin,
François Pomerleau
et al.

Abstract: Tree perception is an essential building block toward autonomous forestry operations. Current developments generally consider input data from lidar sensors to solve forest navigation, tree detection and diameter estimation problems. Whereas cameras paired with deep learning algorithms usually address species classification or forest anomaly detection. In either of these cases, data unavailability and forest diversity restrain deep learning developments for autonomous systems. So, we propose two densely annotat… Show more

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