Gan Bo, Pu Guolin, Xing Weiyin, Wang Lianfang, Liang Shu
Dazhou Vocational and Technical College, Dazhou, 635000, China.
Sichuan ZhiShiYunTong Technology Co., Ltd, Chengdu, 610000, China.
Sci Rep. 2025 Jul 1;15(1):22179. doi: 10.1038/s41598-025-06843-8.
Detecting rice leaf diseases is essential for agricultural stability and crop health. However, the diversity of these diseases, their uneven distribution, and complex field environments create challenges for precise, multi-scale detection. While YOLO object detection algorithms show strong performance in automated detection, their feature extraction capabilities remain limited in complex agricultural settings. Moreover, their high computational demands hinder deployment on resource-constrained devices, necessitating further optimization.To overcome these issues, This paper presents G-YOLO, a novel architecture that combines a Lightweight and Efficient Detection Head (LEDH) with Multi-scale Spatial Pyramid Pooling Fast (MSPPF). The LEDH enhances detection speed by simplifying the network structure while maintaining accuracy, reducing computational demands. The MSPPF improves the model's ability to capture intricate details of rice leaf diseases at various scales by fusing multi-level feature maps. On the RiceDisease dataset, G-YOLO surpasses YOLOv8n with 4.4% higher mAP@0.5, 3.9% higher mAP@0.75, and a 13.1% increase in FPS, making it well-suited for resource-constrained devices due to its efficient design.
检测水稻叶部病害对于农业稳定和作物健康至关重要。然而,这些病害的多样性、分布不均以及复杂的田间环境给精确的多尺度检测带来了挑战。虽然YOLO目标检测算法在自动检测中表现出强大的性能,但在复杂的农业环境中,其特征提取能力仍然有限。此外,它们对计算资源的高要求阻碍了在资源受限设备上的部署,因此需要进一步优化。为了克服这些问题,本文提出了G-YOLO,这是一种新颖的架构,它将轻量级高效检测头(LEDH)与多尺度空间金字塔池化快速版(MSPPF)相结合。LEDH通过简化网络结构在保持准确性的同时提高检测速度,降低计算需求。MSPPF通过融合多级特征图提高了模型在不同尺度上捕捉水稻叶部病害复杂细节的能力。在水稻病害数据集上,G-YOLO的平均精度均值(mAP)在0.5阈值下比YOLOv8n高4.4%,在0.75阈值下高3.9%,帧率(FPS)提高了13.1%,由于其高效的设计,非常适合资源受限的设备。