在传统的作物病害识别的深度学习模型中,存在检测精度与效率不高的问题.针对上述问题提出一种轻量化的改进型MobileNet V2模型CA-MobileNet V2(coordinate attention),在提升检测精度的同时,部署在移动端便于种植者使用.在MobileNetV2中嵌入坐标注意力模块,提升模型的精度;加入TanhExp激活函数,加速模型收敛,增强模型的鲁棒性和泛化性;将模型部署到移动端APP中,使模型具有良好的可视化应用效果.在PantifyDr和Turkey-PlantDataset数据集上的对比实验结果表明,CA-MobileNet V2具有精度高和轻量化的优势.
In the traditional deep learning models for crop disease identification,there are problem of low detection accuracy and efficiency.A lightweight and improved MobileNet V2 model,namely CA-MobileNet V2(coordinate attention),was proposed for the above problem,which was easy to use by growers while improving the detection accuracy and deploying on mobile termi-nal.The lightweight coordination attention module was embedded in MobileNet V2 to improve accuracy with almost no computa-tional overhead.TanhExp activation function was added for the lightweight network to accelerate model convergence and enhance model robustness and generalization.The model was deployed to the mobile APP,so that the model had better visual application effects.The results of comparison experiments on PantifyDr and Turkey-PlantDataset datasets show that CA-MobileNet V2 has the advantages of high accuracy and light weight.