Zhao Gaoyuan, Lan Yubin, Zhang Yali, Deng Jizhong
College of Mechanical and Electrical Engineering, Lingnan Normal University, Zhanjiang 524048, China.
College of Engineering, South China Agricultural University, Guangzhou 510642, China.
Sensors (Basel). 2025 Jun 30;25(13):4072. doi: 10.3390/s25134072.
Traditional monitoring methods rely on manual field surveys, which are subjective, inefficient, and unable to meet the demand for large-scale, rapid monitoring. By using unmanned aerial vehicles (UAVs) to capture high-resolution images of rice canopy diseases and pests, combined with deep learning (DL) techniques, accurate and timely identification of diseases and pests can be achieved. We propose a method for identifying rice canopy diseases and pests using an improved YOLOv5 model (YOLOv5_DWMix). By incorporating deep separable convolutions, the MixConv module, attention mechanisms, and optimized loss functions into the YOLOv5 backbone, the model's speed, feature extraction capability, and robustness are significantly enhanced. Additionally, to tackle the challenges posed by complex field environments and small datasets, image augmentation is employed to train the YOLOv5_DWMix model for the recognition of four common rice canopy diseases and pests. Results show that the improved YOLOv5 model achieves 95.6% average precision in detecting these diseases and pests, a 4.8% improvement over the original YOLOv5 model. The YOLOv5_DWMix model is effective and advanced in identifying rice diseases and pests, offering a solid foundation for large-scale, regional monitoring.
传统的监测方法依赖于人工实地调查,这种方法主观、效率低,无法满足大规模、快速监测的需求。通过使用无人机(UAV)获取水稻冠层病虫害的高分辨率图像,并结合深度学习(DL)技术,可以实现对病虫害的准确及时识别。我们提出了一种使用改进的YOLOv5模型(YOLOv5_DWMix)识别水稻冠层病虫害的方法。通过将深度可分离卷积、MixConv模块、注意力机制和优化的损失函数纳入YOLOv5主干,显著提高了模型的速度、特征提取能力和鲁棒性。此外,为应对复杂田间环境和小数据集带来的挑战,采用图像增强技术训练YOLOv5_DWMix模型以识别四种常见的水稻冠层病虫害。结果表明,改进后的YOLOv5模型在检测这些病虫害时平均精度达到95.6%,比原始YOLOv5模型提高了4.8%。YOLOv5_DWMix模型在识别水稻病虫害方面有效且先进,为大规模区域监测提供了坚实基础。