Litcius/Paper detail

YOLO for early detection and management of Tuta absoluta-induced tomato leaf diseases

Harisu Abdullahi Shehu, Aniebietabasi Ackley, Marvellous Mark, Ofem Effiom Eteng, Md. Haidar Sharif, Hüseyin Kusetoğulları

2025Frontiers in Plant Science11 citationsDOIOpen Access PDF

Abstract

The agricultural sector faces persistent threats from plant diseases and pests, with Tuta absoluta posing a severe risk to tomato farming by causing up to 100% crop loss. Timely pest detection is essential for effective intervention, yet traditional methods remain labor-intensive and inefficient. Recent advancements in deep learning offer promising solutions, with YOLOv8 emerging as a leading real-time detection model due to its speed and accuracy, outperforming previous models in on-field deployment. This study focuses on the early detection of Tuta absoluta-induced tomato leaf diseases in Sub-Saharan Africa. The first major contribution is the annotation of a dataset (TomatoEbola), which consists of 326 images and 784 annotations collected from three different farms and is now publicly available. The second key contribution is the proposal of a transfer learning-based approach to evaluate YOLOv8's performance in detecting Tuta absoluta. Experimental results highlight the model's effectiveness, with a mean average precision of up to 0.737, outperforming other state-of-the-art methods that achieve less than 0.69, demonstrating its capability for real-world deployment. These findings suggest that AI-driven solutions like YOLOv8 could play a pivotal role in reducing agricultural losses and enhancing food security.

Topics & Concepts

Tuta absolutaBiologyHorticulturePEST analysisGelechiidaePlant Virus Research StudiesPlant Pathogens and ResistanceAgricultural Practices and Plant Genetics