A method for cabbage root posture recognition based on YOLOv5s

Efficient, non-destructive cabbage harvesting is crucial for preserving its flavor and quality. Current cabbage harvesting mainly relies on mechanized automatic picking methods. However, a notable deficiency in most existing cabbage harvesting devices is the absence of a root posture recognition sys...

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Bibliographic Details
Published inHeliyon Vol. 10; no. 13; p. e31868
Main Authors Qiu, Fen, Shao, Chaofan, Zhou, Cheng, Yao, Lili
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 15.07.2024
Elsevier
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Summary:Efficient, non-destructive cabbage harvesting is crucial for preserving its flavor and quality. Current cabbage harvesting mainly relies on mechanized automatic picking methods. However, a notable deficiency in most existing cabbage harvesting devices is the absence of a root posture recognition system to promptly adjust the root posture, consequently impacting the accuracy of root cutting during harvesting. To address this issue, this study introduces a cabbage root posture recognition method that combines deep learning with traditional image processing algorithms. Preliminary detection of the main root Region of Interest (ROI) areas of the cabbage is carried out through the YOLOv5s deep learning model. Subsequently, traditional image processing methods, the Graham algorithm, and the method of calculating the minimum circumscribed rectangle are employed to specifically detect the inclination angle of cabbage roots. This approach effectively addresses the difficulty in calculating the inclination angle of roots caused by occlusion from outer leaves. The results demonstrate that the precision and recall of this method are 98.7 % and 98.6 %, respectively, with an average absolute error of 0.80° and an average relative error of 1.34 % in posture. Using this method as a reference for mechanical harvesting can effectively mitigate cabbage damage rates. [Display omitted] •Research highlight 1.•Efficient Cabbage Root Recognition: Our proposed method integrates the YOLOv5s model with traditional image processing techniques for rapid and efficient cabbage root recognition, ensuring real-time operational performance for harvesting machinery•Research highlight 2.•Precise Posture Recognition with Advanced Algorithms: The Graham algorithm and the method of minimum circumscribed rectangle calculation are introduced to effectively address outer leaf interference in cabbage posture recognition, providing a reliable reference for practical harvesting operations.
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ISSN:2405-8440
2405-8440
DOI:10.1016/j.heliyon.2024.e31868