Article CC BY 4.0
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Development of a Drone-Based Phenotyping System for European Pear Rust (Gymnosporangium sabinae) in Orchards

ORCID
0009-0007-0256-6509
Affiliation
Leibniz Institute for Agricultural Engineering and Bioeconomy e. V. (ATB), Department Agromechatronics, Germany
Maß, Virginia;
Affiliation
geo-konzept, Gesellschaft für Umweltplanungssyteme mbH, Germany
Seidl-Schulz, Johannes;
Affiliation
geo-konzept, Gesellschaft für Umweltplanungssyteme mbH, Germany
Leipnitz, Matthias;
GND
1172311307
Affiliation
Julius Kühn Institute (JKI), Institute for Breeding Research on Fruit Crops, Germany
Fritzsche, Eric;
ORCID
0000-0001-5185-4880
Affiliation
Leibniz Institute for Agricultural Engineering and Bioeconomy e. V. (ATB), Department Agromechatronics, Germany
Geyer, Martin;
Affiliation
Leibniz Institute for Agricultural Engineering and Bioeconomy e. V. (ATB), Department Agromechatronics, Germany
Pflanz, Michael;
GND
137845197
ORCID
0000-0002-5901-6328
Affiliation
Julius Kühn Institute (JKI), Institute for Breeding Research on Fruit Crops, Germany
Reim, Stefanie

Computer vision techniques offer promising tools for disease detection in orchards and can enable effective phenotyping for the selection of resistant cultivars in breeding programmes and research. In this study, a digital phenotyping system for disease detection and monitoring was developed using drones, object detection and photogrammetry, focusing on European pear rust (Gymnosporangium sabinae) as a model pathogen. High-resolution RGB images from ten low-altitude drone flights were collected in 2021, 2022 and 2023. A total of 16,251 annotations of leaves with pear rust symptoms were created on 584 images using the Computer Vision Annotation Tool (CVAT). The YOLO algorithm was used for the automatic detection of symptoms. A novel photogrammetric approach using Agisoft’s Metashape Professional software ensured the accurate localisation of symptoms. The geographic information system software QGIS calculated the infestation intensity per tree based on the canopy areas. This drone-based phenotyping system shows promising results and could considerably simplify the tasks involved in fruit breeding research.

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License Holder: 2024 by the authors.

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