AI-based framework for early detection and segmentation of green citrus fruits in orchards

A - Papers appearing in refereed journals

El Akrouchi, M., Mhada, M., Bayad, M., Hawkesford, M. J. and Gerard, B. 2025. AI-based framework for early detection and segmentation of green citrus fruits in orchards. Smart Agricultural Technology. 10, p. 100834. https://doi.org/10.1016/j.atech.2025.100834

AuthorsEl Akrouchi, M., Mhada, M., Bayad, M., Hawkesford, M. J. and Gerard, B.
Abstract

The detection and segmentation of tiny green citrus fruits in dense orchards play a vital role in modern farming, directly influencing yield prediction, resource management, and timely decision-making. This research presents a cutting-edge framework that combines Multiscale Vision Transformers version 2 (MViTv2) with Cascade Mask R-CNN to tackle these challenges effectively. By extending the focus from close-up images to the novel inclusion of full-tree images, the framework enables accurate early-stage detection, segmentation, and counting of citrus fruits in practical orchard settings. Unlike conventional methods, this approach uses a dual-image strategy: close-up images for training and full-tree images—more complex due to dense foliage and small fruits—for testing and real-world applications. To enhance detection accuracy in these detailed, full-tree images, the framework employs an innovative image-slicing method, breaking high-resolution images into smaller parts to capture finer details. The model was tested on a unique dataset featuring citrus orchards of three varieties: Nules grafted on Volka, Sidi Aissa grafted on Volka, and Orogrande grafted on sour orange. Results showed that the MViTv2_L backbone outperformed alternatives, achieving a mean Average Precision (mAP) of 72.97% for bounding boxes and 84.40% for masks. The image-slicing technique further boosted fruit detection in full-tree images, achieving an R2 value of up to 0.81 for fruit counting. This dual-image method, paired with advanced segmentation and detection technologies, marks a significant step forward for agricultural robotics and precision farming, enabling accurate early-stage fruit detection in real-world orchard environments.

KeywordsCitrus; Deep Learning; Instance Segmentation; Cascade Mask R-CNN; Transformers; Yield Prediction; Precision Agriculture
Year of Publication2025
JournalSmart Agricultural Technology
Journal citation10, p. 100834
Digital Object Identifier (DOI)https://doi.org/10.1016/j.atech.2025.100834
Open accessPublished as ‘gold’ (paid) open access
FunderOffice Chérifien des Phosphate (OCP)
Biotechnology and Biological Sciences Research Council
Funder project or codeImage analysis for plant phenotyping - machine learning based methods for analysis of multi-model and multi-dimensional remote sensing data from high-throughput plant phenotyping
Publisher's version
Accepted author manuscript
Copyright license
CC BY
Output statusPublished
Publication dates
Online12 Feb 2025
Publication process dates
Accepted09 Feb 2025
PublisherElsevier

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