Improving YOLOv8 Deep leaning model in rice disease detection by using Wise - IoU loss function

  • Cong Dong Trinh 0243 5665327
  • Tra My Do Le 0243 5665327
  • Thu Ha Do 0243 5665327
  • Nhat Minh Bui 0243 5665327
  • Thanh Huong Nguyen 0243 5665327
  • Quang Uoc Ngo 0243 5665327
  • Phuong Thuy Ngo 0243 5665327
  • Dang Thanh Bui 0243 5665327

Tóm tắt

This paper presents an improved method for a deep learning model applied to the detection of diseases in rice crops. Early detection and
prevention of pests and diseases are essential to ensure effective crop productivity. The YOLOv8 deep learning model was employed to
detect three common diseases in rice leaves: leaf folder, rice blast, and brown spot. To enhance the model's performance, we replaced the
default CIoU loss function in YOLOv8 with WIoU, achieving an overall accuracy of 89.2%, with an improvement of 4.5% on mAP@50
and 4.4% on mAP@50-95. These results demonstrate promising potential for improving the performance and reliability of deep learning
models in agricultural applications.

điểm /   đánh giá
Phát hành ngày
2025-03-23