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Main Authors: Adlerstein, Michael, Bratta, Angelo, Soares, João Carlos Virgolino, Dessy, Giovanni, Fernandes, Miguel, Gatti, Matteo, Semini, Claudio
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.16472
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_version_ 1866929478556450816
author Adlerstein, Michael
Bratta, Angelo
Soares, João Carlos Virgolino
Dessy, Giovanni
Fernandes, Miguel
Gatti, Matteo
Semini, Claudio
author_facet Adlerstein, Michael
Bratta, Angelo
Soares, João Carlos Virgolino
Dessy, Giovanni
Fernandes, Miguel
Gatti, Matteo
Semini, Claudio
contents Grapevine winter pruning is a labor-intensive and repetitive process that significantly influences the quality and quantity of the grape harvest and produced wine of the following season. It requires a careful and expert detection of the point to be cut. Because of its complexity, repetitive nature and time constraint, the task requires skilled labor that needs to be trained. This extended abstract presents the computer vision pipeline employed in project Vinum, using detectron2 as a segmentation network and keypoint visual odometry to merge different observation into a single pointcloud used to make informed pruning decisions.
format Preprint
id arxiv_https___arxiv_org_abs_2408_16472
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Creating a Segmented Pointcloud of Grapevines by Combining Multiple Viewpoints Through Visual Odometry
Adlerstein, Michael
Bratta, Angelo
Soares, João Carlos Virgolino
Dessy, Giovanni
Fernandes, Miguel
Gatti, Matteo
Semini, Claudio
Computer Vision and Pattern Recognition
Grapevine winter pruning is a labor-intensive and repetitive process that significantly influences the quality and quantity of the grape harvest and produced wine of the following season. It requires a careful and expert detection of the point to be cut. Because of its complexity, repetitive nature and time constraint, the task requires skilled labor that needs to be trained. This extended abstract presents the computer vision pipeline employed in project Vinum, using detectron2 as a segmentation network and keypoint visual odometry to merge different observation into a single pointcloud used to make informed pruning decisions.
title Creating a Segmented Pointcloud of Grapevines by Combining Multiple Viewpoints Through Visual Odometry
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.16472