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Application of computer vision and deep learning for automated monitoring of garden strawberry plant growth

A. I. Kutyrev et al · Federal Agricultural Research Center of the North-East named N.V. Rudnitsky · 2026

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The article presents the developed algorithm and software for automated monitoring of strawberry plant growth using neural network technologies. The YOLO11x and YOLOx-seg models, pre-trained by transfer learning, are adapted to recognize and classify plants (plant class), leaves (leaf class), and a reference marker (ref_obj class) of a known size. Segmentation of strawberry leaves using the YOLO11x-seg model makes it possible to analyze the morphometric parameters of individual leaf plates (area, perimeter, roundness, aspect ratio). A set of RGB images (2000 pieces) obtained using a GoPro HERO11 camera under controlled laboratory conditions was formed and annotated, followed by augmentation to increase the model's resistance to variations in shooting conditions. The developed algorithm converts the coordinates of the bounding boxes and segmentation masks of recognized objects into metric units using calibration coefficients calculated from a marker of known size (100×100 mm). The software implemented using PyQt5, TensorFlow, Keras, and OpenCV libraries provides not only visualization of results but also data storage in a local SQLite database with the ability to export to JSON and Excel formats. Validation of the model showed high accuracy in detecting plant bounding boxes (mAP50 = 0.906) and leaf segmentation (mAP50 -mask = 0.625). The average processing speed was 20.3 ms/frame for detection and 34.5 ms/frame for segmentation. The measurement error was less than 3.5 % for the overall parameters of the plant and 5.2 % for the morphometric parameters of the leaves, confirming the effectiveness of the method for assessing the height, width and area of plants, as well as the analysis of the leaf apparatus. The research results show the promise of an approach for automating plant phenotyping in real time.

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APA 7

al, A. I. K. E. (2026). Application of computer vision and deep learning for automated monitoring of garden strawberry plant growth. https://doi.org/10.30766/2072-9081.2026.27.2.480-492

MLA

al, A. I. Kutyrev et. "Application of computer vision and deep learning for automated monitoring of garden strawberry plant growth." 2026. https://doi.org/10.30766/2072-9081.2026.27.2.480-492.

Chicago

al, A. I. Kutyrev et. 2026. "Application of computer vision and deep learning for automated monitoring of garden strawberry plant growth.". https://doi.org/10.30766/2072-9081.2026.27.2.480-492.

Harvard

al, A. I. K. E. 2026, Application of computer vision and deep learning for automated monitoring of garden strawberry plant growth, Federal Agricultural Research Center of the North-East named N.V. Rudnitsky, available at: https://doi.org/10.30766/2072-9081.2026.27.2.480-492 [Accessed 24 Jun. 2026].

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Título
Application of computer vision and deep learning for automated monitoring of garden strawberry plant growth
Autor / colaboradores
A. I. Kutyrev et al
Editorial
Federal Agricultural Research Center of the North-East named N.V. Rudnitsky
Año de publicación
2026
ISSN
2072-9081
ISSN
2072-9081
Idioma
rus

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