Quality inspection of fertilizer granules using computer vision – a review

This research explores the fusion of computer vision and agricultural quality control. It investigates the efficacy of computer vision algorithms, particularly in image classification and object detection, for non-destructive assessment. These algorithms offer objective, rapid, and error-resistant a...

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Bibliographic Details
Main Authors: I.K. Ndukwe, D.V. Yunovidov, M.R. Bahrami, M. Mazzara, T.O. Olugbade
Format: Article
Language:English
Published: Samara National Research University 2025-02-01
Series:Компьютерная оптика
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Online Access:https://computeroptics.ru/KO/Annot/KO49-1/490111.html
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Summary:This research explores the fusion of computer vision and agricultural quality control. It investigates the efficacy of computer vision algorithms, particularly in image classification and object detection, for non-destructive assessment. These algorithms offer objective, rapid, and error-resistant analysis compared to human inspection. The study provides an extensive overview of using computer vision to evaluate grain and fertilizer granule quality, highlighting granule size’s significance. It assesses prevailing object detection methods, outlining their advantages and drawbacks. The paper identifies the prevailing trend of framing quality inspection as an image classification challenge and suggests future research directions. These involve exploring object detection, image segmentation, or hybrid models to enhance fertilizer granule quality assessment.
ISSN:0134-2452
2412-6179