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基于轻量化卷积神经网络的油茶病害识别OA北大核心CSTPCD

Research on Camellia oleifera disease recognition based on lightweight convolutional neural network

中文摘要英文摘要

[目的]针对自然环境下油茶叶部病害图像识别准确率不高等问题,提出基于轻量化卷积神经网络ShuffleNet V2改进的多尺度油茶病害识别模型COLDR-Net(Camellia oleifera leaf disease recognition net).[方法]通过嵌入高效注意力模块ECA(efficient channel attention)来增强图像中病斑特征信息.设计了一种多尺度特征提取单元MFE(multi-scale feature extraction)提升对细微病斑的识别能力.引入焦点损失(focal loss)函数替换交叉熵损失函数,缓解了样本类别分布不均衡导致模型对不同类别病害识别效果差异大的问题.采用Mish激活函数,避免了输入为负时产生的梯度消失问题,提升模型的表达能力.通过修剪网络层数及调整输出通道数优化网络结构,降低了模型的运算量和参数量,实现了模型的轻量化.[结果]该模型在油茶病害数据集上准确率和F1 分数分别为 97.19%和 97.08%,相比于AlexNet(93.04%)、VGG16(94.18%)、ResNet18(94.5%)、ResNet50(95.45%)以及MobileNetV3-Large(93.41%)准确率均有提升,较改进前的模型提高了4.07%.模型参数量为2.61 M,FLOPs为0.24 G,移动端单张图像平均推理时间为67 ms.将模型部署在移动端Android平台开发了油茶病害识别系统.[结论]COLDR-Net模型能够有效满足油茶病害的实时识别需求,可为油茶病害防治和诊断及在移动终端等资源受限设备上应用提供参考.

[Objective]A multi-scale Camellia oleifera Leaf Disease Recognition Net(COLDR-Net)based on improved lightweight convolutional neural network ShuffleNet V2 was proposed to address the issue of low accuracy in image recognition of Camellia oleifera leaf diseases in natural environments.[Method]The model enhanced the disease spot feature information in the image with the embedded Efficient Channel Attention(ECA).Additionally,a Multi-scale Feature Extraction(MEF)unit was designed to enhance the recognition ability of fine spots.Focal Loss was used to replace the Cross-Entropy Loss function,which alleviated the unbalanced distribution of sample categories leading to large differences in the effectiveness of the model for different categories of disease identification.The Mish activation function was used to avoid the problem of gradient disappearance when the input was negative and to improve the expression ability of the model.The network structure was optimized by trimming the number of network layers and optimizing the number of output channels to reduce the number of computations and model parameters to achieve the lightweight of the model.[Result]The results showed that the accuracy and F1-score of COLDR-Net on the disease dataset of Camellia oleifera leaf were 97.19%and 97.08%,respectively.Its accuracy was higher when compared with that of AlexNet(93.04%),VGG16(94.18%),ResNet18(94.5%),ResNet50(95.45%)and MobileNetV3-Large(93.41%).The accuracy was 4.07%better than the model before improvement.The number of model parameters were 2.61M,the FLOPs were 0.24G,and the average inference time for a single image on the mobile devices were 67ms.The model was deployed on the mobile Android platform to develop a leaf disease identification system for Camellia oleifera.[Conclusion]The proposed COLDR-Net model effectively meets the demand for real-time identification of Camellia oleifera leaf diseases,which can provide valuable reference for disease control,diagnosis,and resource-constrained mobile terminals.

聂刚刚;饶洪辉;康丽春;李泽锋;刘木华

江西农业大学 工学院,江西 南昌 330045||江西省现代农业装备重点实验室,江西 南昌 330045

农业工程

深度学习;图像识别;油茶;病害;轻量化;ShuffleNet V2

deep learning;image recognition;Camellia oleifera;diseases;lightweight;ShuffleNet V2

《江西农业大学学报》 2024 (002)

502-515 / 14

江西省科技计划项目(20202BBFL63042) Project supported by Jiangxi Science and Technology Planning Project(20202BBFL63042)

10.3724/aauj.2024046

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