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Autori principali: You, Alexander, Mehta, Aarushi, Strohbehn, Luke, Hemming, Jochen, Grimm, Cindy, Davidson, Joseph R.
Natura: Preprint
Pubblicazione: 2023
Soggetti:
Accesso online:https://arxiv.org/abs/2309.11580
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author You, Alexander
Mehta, Aarushi
Strohbehn, Luke
Hemming, Jochen
Grimm, Cindy
Davidson, Joseph R.
author_facet You, Alexander
Mehta, Aarushi
Strohbehn, Luke
Hemming, Jochen
Grimm, Cindy
Davidson, Joseph R.
contents Creating accurate 3D models of tree topology is an important task for tree pruning. The 3D model is used to decide which branches to prune and then to execute the pruning cuts. Previous methods for creating 3D tree models have typically relied on point clouds, which are often computationally expensive to process and can suffer from data defects, especially with thin branches. In this paper, we propose a method for actively scanning along a primary tree branch, detecting secondary branches to be pruned, and reconstructing their 3D geometry using just an RGB camera mounted on a robot arm. We experimentally validate that our setup is able to produce primary branch models with 4-5 mm accuracy and secondary branch models with 15 degrees orientation accuracy with respect to the ground truth model. Our framework is real-time and can run up to 10 cm/s with no loss in model accuracy or ability to detect secondary branches.
format Preprint
id arxiv_https___arxiv_org_abs_2309_11580
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle A real-time, hardware agnostic framework for close-up branch reconstruction using RGB data
You, Alexander
Mehta, Aarushi
Strohbehn, Luke
Hemming, Jochen
Grimm, Cindy
Davidson, Joseph R.
Robotics
Creating accurate 3D models of tree topology is an important task for tree pruning. The 3D model is used to decide which branches to prune and then to execute the pruning cuts. Previous methods for creating 3D tree models have typically relied on point clouds, which are often computationally expensive to process and can suffer from data defects, especially with thin branches. In this paper, we propose a method for actively scanning along a primary tree branch, detecting secondary branches to be pruned, and reconstructing their 3D geometry using just an RGB camera mounted on a robot arm. We experimentally validate that our setup is able to produce primary branch models with 4-5 mm accuracy and secondary branch models with 15 degrees orientation accuracy with respect to the ground truth model. Our framework is real-time and can run up to 10 cm/s with no loss in model accuracy or ability to detect secondary branches.
title A real-time, hardware agnostic framework for close-up branch reconstruction using RGB data
topic Robotics
url https://arxiv.org/abs/2309.11580