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  4. AppleGrowthVision: A Large-Scale Stereo Dataset for Phenological Analysis, Fruit Detection, and 3D Reconstruction in Apple Orchards
 
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June 11, 2025
Conference Paper
Title

AppleGrowthVision: A Large-Scale Stereo Dataset for Phenological Analysis, Fruit Detection, and 3D Reconstruction in Apple Orchards

Abstract
Deep learning has transformed computer vision for precision agriculture, yet apple orchard monitoring remains limited by dataset constraints. The lack of diverse, realistic datasets and the difficulty of annotating dense, heterogeneous scenes. Existing datasets overlook different growth stages and stereo imagery, both essential for realistic 3D modeling of orchards and tasks like fruit localization, yield estimation, and structural analysis. To address these gaps, we present AppleGrowthVision, a largescale dataset comprising two subsets. The first includes 9,317 high resolution stereo images collected from a farm in Brandenburg (Germany), covering six agriculturally validated growth stages over a full growth cycle. The second subset consists of 1,125 densely annotated images from the same farm in Brandenburg and one in Pillnitz (Germany), containing a total of 31,084 apple labels. Apple-GrowthVision provides stereo-image data with agriculturally validated growth stages, enabling precise phenological analysis and 3D reconstructions. Extending MinneApple with our data improves YOLOv8 performance by 7.69 % in terms of F1-score, while adding it to MinneApple and MAD boosts Faster R-CNN F1-score by 31.06 %. Additionally, six BBCH stages were predicted with over 95 % accuracy using VGG16, ResNet152, DenseNet201, and MobileNetv2. AppleGrowthVision bridges the gap between agricultural science and computer vision, by enabling the development of robust models for fruit detection, growth modeling, and 3D analysis in precision agriculture. Future work includes improving annotation, enhancing 3D reconstruction, and extending multimodal analysis across all growth stages.
Author(s)
Von Hirschhausen, Laura-Sophia
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Magnusson, Jannes
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Kovalenko, Mykyta
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Boye, Fredrik
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Rawat, Tanay
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Eisert, Peter  
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Hilsmann, Anna  
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Pretzsch, Sebastian  
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Bosse, Sebastian
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Mainwork
IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2025. Proceedings  
Project(s)
Nachhaltige Landwirtschaft mittels KI; Teilvorhaben: Künstliche Intelligenz und Intelligente Kommunikation im Ackerbau  
Funder
Bundesministerium für Wirtschaft und Energie  
Conference
Conference on Computer Vision and Pattern Recognition 2025  
Annual International Workshop and Prize Challenge on Agriculture-Vision - Challenges and Opportunities for Computer Vision in Agriculture 2025  
DOI
10.1109/CVPRW67362.2025.00541
Language
English
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
Keyword(s)
  • precision agriculture

  • deep learning

  • 3D modeling

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