Instance segmentation for the fine detection of crop and weed plants by precision agricultural robots.

autonomous robot convolutional neural network deep learning digital agriculture plant detection weed electrification

Journal

Applications in plant sciences
ISSN: 2168-0450
Titre abrégé: Appl Plant Sci
Pays: United States
ID NLM: 101590473

Informations de publication

Date de publication:
Jul 2020
Historique:
received: 07 10 2019
accepted: 03 02 2020
entrez: 9 8 2020
pubmed: 9 8 2020
medline: 9 8 2020
Statut: epublish

Résumé

Weed removal in agriculture is typically achieved using herbicides. The use of autonomous robots to reduce weeds is a promising alternative solution, although their implementation requires the precise detection and identification of crops and weeds to allow an efficient action. We trained and evaluated an instance segmentation convolutional neural network aimed at segmenting and identifying each plant specimen visible in images produced by agricultural robots. The resulting data set comprised field images on which the outlines of 2489 specimens from two crop species and four weed species were manually drawn. We adjusted the hyperparameters of a mask region-based convolutional neural network (R-CNN) to this specific task and evaluated the resulting trained model. The probability of detection using the model was quite good but varied significantly depending on the species and size of the plants. In practice, between 10% and 60% of weeds could be removed without too high of a risk of confusion with crop plants. Furthermore, we show that the segmentation of each plant enabled the determination of precise action points such as the barycenter of the plant surface. Instance segmentation opens many possibilities for optimized weed removal actions. Weed electrification, for instance, could benefit from the targeted adjustment of the voltage, frequency, and location of the electrode to the plant. The results of this work will enable the evaluation of this type of weeding approach in the coming months.

Identifiants

pubmed: 32765972
doi: 10.1002/aps3.11373
pii: APS311373
pmc: PMC7394709
doi:

Types de publication

Journal Article

Langues

eng

Pagination

e11373

Informations de copyright

© 2020 Champ et al. Applications in Plant Sciences is published by Wiley Periodicals, LLC. on behalf of the Botanical Society of America.

Références

Appl Plant Sci. 2020 Jul 01;8(6):e11368
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Appl Plant Sci. 2020 Jul 01;8(6):e11365
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pubmed: 22106295
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Trends Plant Sci. 2018 Oct;23(10):883-898
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Auteurs

Julien Champ (J)

Institut national de recherche en informatique et en automatique (INRIA) Sophia-Antipolis, ZENITH team Laboratory of Informatics Robotics and Microelectronics-Joint Research Unit 34095 Montpellier CEDEX 5 France.

Adan Mora-Fallas (A)

School of Computing Costa Rica Institute of Technology Cartago Costa Rica.

Hervé Goëau (H)

AMAP University of Montpellier CIRAD CNRS INRAE IRD Montpellier France.
CIRAD UMR AMAP Montpellier France.

Erick Mata-Montero (E)

Institut national de recherche en informatique et en automatique (INRIA) Sophia-Antipolis, ZENITH team Laboratory of Informatics Robotics and Microelectronics-Joint Research Unit 34095 Montpellier CEDEX 5 France.
School of Computing Costa Rica Institute of Technology Cartago Costa Rica.

Pierre Bonnet (P)

AMAP University of Montpellier CIRAD CNRS INRAE IRD Montpellier France.
CIRAD UMR AMAP Montpellier France.

Alexis Joly (A)

Institut national de recherche en informatique et en automatique (INRIA) Sophia-Antipolis, ZENITH team Laboratory of Informatics Robotics and Microelectronics-Joint Research Unit 34095 Montpellier CEDEX 5 France.

Classifications MeSH