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Pyramid-YOLOv8: a detection algorithm for precise detection of rice leaf blast. | LitMetric

Pyramid-YOLOv8: a detection algorithm for precise detection of rice leaf blast.

Plant Methods

College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang, 110866, China.

Published: September 2024

AI Article Synopsis

  • Rice blast significantly affects rice yield and quality, making effective disease detection vital for sustainable agriculture.
  • The study introduces a new detection method called Pyramid-YOLOv8, which enhances the YOLOv8x framework with a multi-attention feature fusion network and a lightweight C2F-Pyramid module for improved efficiency.
  • Pyramid-YOLOv8 demonstrated superior performance with an average precision of 84.3%, faster detection speed at 62.5 FPS, and reduced model size and computational requirements, showcasing its effectiveness for rice leaf blast detection.

Article Abstract

Rice blast is the primary disease affecting rice yield and quality, and its effective detection is essential to ensure rice yield and promote sustainable agricultural production. To address traditional disease detection methods' time-consuming and inefficient nature, we proposed a method called Pyramid-YOLOv8 for rapid and accurate rice leaf blast disease detection in this study. The algorithm is built on the YOLOv8x network framework and features a multi-attention feature fusion network structure. This structure enhances the original feature pyramid structure and works with an additional detection head for improved performance. Additionally, this study designs a lightweight C2F-Pyramid module to enhance the model's computational efficiency. In the comparison experiments, Pyramid-YOLOv8 shows excellent performance with a mean Average Precision (mAP) of 84.3%, which is an improvement of 9.9%, 4.3%, 7.4%, 6.1%, 1.5%, 3.7%, and 8.2% compared to the models Faster-RCNN, RT-DETR, YOLOv3-SPP, YOLOv5x, YOLOv9e, and YOLOv10x, respectively. Additionally, it reaches a detection speed of 62.5 FPS; the model comprises only 42.0 M parameters. Meanwhile, the model size and Floating Point Operations (FLOPs) are reduced by 41.7% and 23.8%, respectively. These results demonstrate the high efficiency of Pyramid-YOLOv8 in detecting rice leaf blast. In summary, the Pyramid-YOLOv8 algorithm developed in this study offers a robust theoretical foundation for rice disease detection and introduces a new perspective on disease management and prevention strategies in agricultural production.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11437801PMC
http://dx.doi.org/10.1186/s13007-024-01275-3DOI Listing

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