Xie Zhedong, Li Chao, Yang Zhuang, Zhang Zhen, Jiang Jiazhuo, Guo Hongyu
College of Engineering and Technology, Jilin Agricultural University, Changchun 130118, China.
Electronic Information Technology Research Department, Jilin Province Agricultural Internet of Things Technology Collaborative Innovation Center, Changchun 130118, China.
Plants (Basel). 2024 Aug 19;13(16):2303. doi: 10.3390/plants13162303.
Ensuring the healthy growth of eggplants requires the precise detection of leaf diseases, which can significantly boost yield and economic income. Improving the efficiency of plant disease identification in natural scenes is currently a crucial issue. This study aims to provide an efficient detection method suitable for disease detection in natural scenes. A lightweight detection model, YOLOv5s-BiPCNeXt, is proposed. This model utilizes the MobileNeXt backbone to reduce network parameters and computational complexity and includes a lightweight C3-BiPC neck module. Additionally, a multi-scale cross-spatial attention mechanism (EMA) is integrated into the neck network, and the nearest neighbor interpolation algorithm is replaced with the content-aware feature recombination operator (CARAFE), enhancing the model's ability to perceive multidimensional information and extract multiscale disease features and improving the spatial resolution of the disease feature map. These improvements enhance the detection accuracy for eggplant leaves, effectively reducing missed and incorrect detections caused by complex backgrounds and improving the detection and localization of small lesions at the early stages of brown spot and powdery mildew diseases. Experimental results show that the YOLOv5s-BiPCNeXt model achieves an average precision (AP) of 94.9% for brown spot disease, 95.0% for powdery mildew, and 99.5% for healthy leaves. Deployed on a Jetson Orin Nano edge detection device, the model attains an average recognition speed of 26 FPS (Frame Per Second), meeting real-time requirements. Compared to other algorithms, YOLOv5s-BiPCNeXt demonstrates superior overall performance, accurately detecting plant diseases under natural conditions and offering valuable technical support for the prevention and treatment of eggplant leaf diseases.
确保茄子健康生长需要精确检测叶片病害,这可以显著提高产量和经济收入。提高自然场景下植物病害识别的效率是当前的一个关键问题。本研究旨在提供一种适用于自然场景病害检测的高效检测方法。提出了一种轻量级检测模型YOLOv5s-BiPCNeXt。该模型利用MobileNeXt主干来减少网络参数和计算复杂度,并包括一个轻量级的C3-BiPC颈部模块。此外,在颈部网络中集成了多尺度交叉空间注意力机制(EMA),并用内容感知特征重组算子(CARAFE)取代最近邻插值算法,增强了模型感知多维信息和提取多尺度病害特征的能力,提高了病害特征图的空间分辨率。这些改进提高了茄子叶片的检测精度,有效减少了复杂背景导致的漏检和误检,改善了褐斑病和白粉病早期小病变的检测和定位。实验结果表明,YOLOv5s-BiPCNeXt模型对褐斑病的平均精度(AP)达到94.9%,对白粉病为95.0%,对健康叶片为99.5%。该模型部署在Jetson Orin Nano边缘检测设备上,平均识别速度达到26帧每秒(FPS),满足实时要求。与其他算法相比,YOLOv5s-BiPCNeXt表现出卓越的整体性能,能够在自然条件下准确检测植物病害,为茄子叶片病害的防治提供了有价值的技术支持。