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Coffee-Leaf Diseases and Pests Detection Based on YOLO Models

Jonatan Borges Fragoso, Clécio Elias Silva e Silva, Thuanne Paixão, Ana Beatriz Alvarez, Olacir R. Castro, Ruben Florez, Facundo Palomino-Quispe, Lucas Graciolli Savian, Paulo André Trazzi

2025Applied Sciences15 citationsDOIOpen Access PDF

Abstract

Coffee cultivation is vital to the global economy, but faces significant challenges with diseases such as rust, miner, phoma, and cercospora, which impact production and sustainable crop management. In this scenario, deep learning techniques have shown promise for the early identification of these diseases, enabling more efficient monitoring. This paper proposes an approach for detecting diseases and pests on coffee leaves using an efficient single-shot object-detection algorithm. The experiments were conducted using the YOLOv8, YOLOv9, YOLOv10 and YOLOv11 versions, including their variations. The BRACOL dataset, annotated by an expert, was used in the experiments to guarantee the quality of the annotations and the reliability of the trained models. The evaluation of the models included quantitative and qualitative analyses, considering the mAP, F1-Score, and recall metrics. In the analyses, YOLOv8s stands out as the most effective, with a mAP of 54.5%, an inference time of 11.4 ms and the best qualitative predictions, making it ideal for real-time applications.

Topics & Concepts

BiologySmart Agriculture and AIIndustrial Vision Systems and Defect DetectionFood Supply Chain Traceability
Coffee-Leaf Diseases and Pests Detection Based on YOLO Models | Litcius