Li Rujia, He Yiting, Li Yadong, Qin Weibo, Abbas Arzlan, Ji Rongbiao, Li Shuang, Wu Yehui, Sun Xiaohai, Yang Jianping
School of Big Data, Yunnan Agricultural University, Kunming, China.
College of Plant Protection, Jilin Agricultural University, Changchun, China.
Front Plant Sci. 2024 Feb 20;15:1348402. doi: 10.3389/fpls.2024.1348402. eCollection 2024.
The study addresses challenges in detecting cotton leaf pests and diseases under natural conditions. Traditional methods face difficulties in this context, highlighting the need for improved identification techniques.
The proposed method involves a new model named CFNet-VoV-GCSP-LSKNet-YOLOv8s. This model is an enhancement of YOLOv8s and includes several key modifications: (1) CFNet Module. Replaces all C2F modules in the backbone network to improve multi-scale object feature fusion. (2) VoV-GCSP Module. Replaces C2F modules in the YOLOv8s head, balancing model accuracy with reduced computational load. (3) LSKNet Attention Mechanism. Integrated into the small object layers of both the backbone and head to enhance detection of small objects. (4) XIoU Loss Function. Introduced to improve the model's convergence performance.
The proposed method achieves high performance metrics: Precision (P), 89.9%. Recall Rate (R), 90.7%. Mean Average Precision (mAP@0.5), 93.7%. The model has a memory footprint of 23.3MB and a detection time of 8.01ms. When compared with other models like YOLO v5s, YOLOX, YOLO v7, Faster R-CNN, YOLOv8n, YOLOv7-tiny, CenterNet, EfficientDet, and YOLOv8s, it shows an average accuracy improvement ranging from 1.2% to 21.8%.
The study demonstrates that the CFNet-VoV-GCSP-LSKNet-YOLOv8s model can effectively identify cotton pests and diseases in complex environments. This method provides a valuable technical resource for the identification and control of cotton pests and diseases, indicating significant improvements over existing methods.
本研究探讨了在自然条件下检测棉花叶病虫害的挑战。传统方法在此背景下面临困难,凸显了改进识别技术的必要性。
所提出的方法涉及一种名为CFNet-VoV-GCSP-LSKNet-YOLOv8s的新模型。该模型是对YOLOv8s的增强,包括几个关键修改:(1)CFNet模块。替换骨干网络中的所有C2F模块,以改善多尺度对象特征融合。(2)VoV-GCSP模块。替换YOLOv8s头部的C2F模块,在降低计算量的同时平衡模型准确性。(3)LSKNet注意力机制。集成到骨干和头部的小对象层中,以增强对小对象的检测。(4)XIoU损失函数。引入以改善模型的收敛性能。
所提出的方法实现了高性能指标:精度(P)为89.9%,召回率(R)为90.7%,平均精度均值(mAP@0.5)为93.7%。该模型的内存占用为23.3MB,检测时间为8.01ms。与YOLO v5s、YOLOX、YOLO v7、Faster R-CNN、YOLOv8n、YOLOv7-tiny、CenterNet、EfficientDet和YOLOv8s等其他模型相比,其平均准确率提高了1.2%至21.8%。
该研究表明,CFNet-VoV-GCSP-LSKNet-YOLOv8s模型能够在复杂环境中有效地识别棉花病虫害。此方法为棉花病虫害的识别与防治提供了宝贵的技术资源,表明相对于现有方法有显著改进。