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Main Authors: de Chamisso, Fabrice Mayran, Cotten, Loïc, Dhers, Valentine, Lompech, Thomas, Seywert, Florian, Susset, Arnaud
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.13996
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author de Chamisso, Fabrice Mayran
Cotten, Loïc
Dhers, Valentine
Lompech, Thomas
Seywert, Florian
Susset, Arnaud
author_facet de Chamisso, Fabrice Mayran
Cotten, Loïc
Dhers, Valentine
Lompech, Thomas
Seywert, Florian
Susset, Arnaud
contents With the advent of multispectral imagery and AI, there have been numerous works on automatic plant segmentation for purposes such as counting, picking, health monitoring, localized pesticide delivery, etc. In this paper, we tackle the related problem of automatic and selective plant-clearing in a sustainable forestry context, where an autonomous machine has to detect and avoid specific plants while clearing any weeds which may compete with the species being cultivated. Such an autonomous system requires a high level of robustness to weather conditions, plant variability, terrain and weeds while remaining cheap and easy to maintain. We notably discuss the lack of robustness of spectral imagery, investigate the impact of the reference database's size and discuss issues specific to AI systems operating in uncontrolled environments.
format Preprint
id arxiv_https___arxiv_org_abs_2404_13996
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Challenges in automatic and selective plant-clearing
de Chamisso, Fabrice Mayran
Cotten, Loïc
Dhers, Valentine
Lompech, Thomas
Seywert, Florian
Susset, Arnaud
Computer Vision and Pattern Recognition
With the advent of multispectral imagery and AI, there have been numerous works on automatic plant segmentation for purposes such as counting, picking, health monitoring, localized pesticide delivery, etc. In this paper, we tackle the related problem of automatic and selective plant-clearing in a sustainable forestry context, where an autonomous machine has to detect and avoid specific plants while clearing any weeds which may compete with the species being cultivated. Such an autonomous system requires a high level of robustness to weather conditions, plant variability, terrain and weeds while remaining cheap and easy to maintain. We notably discuss the lack of robustness of spectral imagery, investigate the impact of the reference database's size and discuss issues specific to AI systems operating in uncontrolled environments.
title Challenges in automatic and selective plant-clearing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.13996