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Hauptverfasser: Ravé, Simon, Lombardo, Jean-Christophe, Rasti, Pejman, Joly, Alexis, Rousseau, David
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2510.12579
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author Ravé, Simon
Lombardo, Jean-Christophe
Rasti, Pejman
Joly, Alexis
Rousseau, David
author_facet Ravé, Simon
Lombardo, Jean-Christophe
Rasti, Pejman
Joly, Alexis
Rousseau, David
contents We present a zero-shot segmentation approach for agricultural imagery that leverages Plantnet, a large-scale plant classification model, in conjunction with its DinoV2 backbone and the Segment Anything Model (SAM). Rather than collecting and annotating new datasets, our method exploits Plantnet's specialized plant representations to identify plant regions and produce coarse segmentation masks. These masks are then refined by SAM to yield detailed segmentations. We evaluate on four publicly available datasets of various complexity in terms of contrast including some where the limited size of the training data and complex field conditions often hinder purely supervised methods. Our results show consistent performance gains when using Plantnet-fine-tuned DinoV2 over the base DinoV2 model, as measured by the Jaccard Index (IoU). These findings highlight the potential of combining foundation models with specialized plant-centric models to alleviate the annotation bottleneck and enable effective segmentation in diverse agricultural scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2510_12579
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Unlocking Zero-Shot Plant Segmentation with Pl@ntNet Intelligence
Ravé, Simon
Lombardo, Jean-Christophe
Rasti, Pejman
Joly, Alexis
Rousseau, David
Computer Vision and Pattern Recognition
We present a zero-shot segmentation approach for agricultural imagery that leverages Plantnet, a large-scale plant classification model, in conjunction with its DinoV2 backbone and the Segment Anything Model (SAM). Rather than collecting and annotating new datasets, our method exploits Plantnet's specialized plant representations to identify plant regions and produce coarse segmentation masks. These masks are then refined by SAM to yield detailed segmentations. We evaluate on four publicly available datasets of various complexity in terms of contrast including some where the limited size of the training data and complex field conditions often hinder purely supervised methods. Our results show consistent performance gains when using Plantnet-fine-tuned DinoV2 over the base DinoV2 model, as measured by the Jaccard Index (IoU). These findings highlight the potential of combining foundation models with specialized plant-centric models to alleviate the annotation bottleneck and enable effective segmentation in diverse agricultural scenarios.
title Unlocking Zero-Shot Plant Segmentation with Pl@ntNet Intelligence
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.12579