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基于改进的ShuffleNetV2对大田作物叶片病害进行识别。

Identification of leaf diseases in field crops based on improved ShuffleNetV2.

作者信息

Zhou Hanmi, Chen Jiageng, Niu Xiaoli, Dai Zhiguang, Qin Long, Ma Linshuang, Li Jichen, Su Yumin, Wu Qi

机构信息

College of Agricultural Engineering, Henan University of Science and Technology, Luoyang, China.

College of Water Resource, Shenyang Agricultural University, Shenyang, China.

出版信息

Front Plant Sci. 2024 Mar 11;15:1342123. doi: 10.3389/fpls.2024.1342123. eCollection 2024.

Abstract

Rapid and accurate identification and timely protection of crop disease is of great importance for ensuring crop yields. Aiming at the problems of large model parameters of existing crop disease recognition methods and low recognition accuracy in the complex background of the field, we propose a lightweight crop leaf disease recognition model based on improved ShuffleNetV2. First, the repetition number and the number of output channels of the basic module of the ShuffleNetV2 model are redesigned to reduce the model parameters to make the model more lightweight while ensuring the accuracy of the model. Second, the residual structure is introduced in the basic feature extraction module to solve the gradient vanishing problem and enable the model to learn more complex feature representations. Then, parallel paths were added to the mechanism of the efficient channel attention (ECA) module, and the weights of different paths were adaptively updated by learnable parameters, and then the efficient dual channel attention (EDCA) module was proposed, which was embedded into the ShuffleNetV2 to improve the cross-channel interaction capability of the model. Finally, a multi-scale shallow feature extraction module and a multi-scale deep feature extraction module were introduced to improve the model's ability to extract lesions at different scales. Based on the above improvements, a lightweight crop leaf disease recognition model REM-ShuffleNetV2 was proposed. Experiments results show that the accuracy and F1 score of the REM-ShuffleNetV2 model on the self-constructed field crop leaf disease dataset are 96.72% and 96.62%, which are 3.88% and 4.37% higher than that of the ShuffleNetV2 model; and the number of model parameters is 4.40M, which is 9.65% less than that of the original model. Compared with classic networks such as DenseNet121, EfficientNet, and MobileNetV3, the REM-ShuffleNetV2 model not only has higher recognition accuracy but also has fewer model parameters. The REM-ShuffleNetV2 model proposed in this study can achieve accurate identification of crop leaf disease in complex field backgrounds, and the model is small, which is convenient to deploy to the mobile end, and provides a reference for intelligent diagnosis of crop leaf disease.

摘要

快速准确地识别并及时防治作物病害对于确保作物产量至关重要。针对现有作物病害识别方法模型参数大以及在田间复杂背景下识别准确率低的问题,我们提出了一种基于改进的ShuffleNetV2的轻量级作物叶片病害识别模型。首先,重新设计了ShuffleNetV2模型基本模块的重复次数和输出通道数,以减少模型参数,在确保模型准确性的同时使模型更轻量级。其次,在基本特征提取模块中引入残差结构,解决梯度消失问题,使模型能够学习更复杂的特征表示。然后,在高效通道注意力(ECA)模块的机制中添加并行路径,并通过可学习参数自适应更新不同路径的权重,进而提出了高效双通道注意力(EDCA)模块,将其嵌入到ShuffleNetV2中以提高模型的跨通道交互能力。最后,引入多尺度浅层特征提取模块和多尺度深层特征提取模块,以提高模型提取不同尺度病斑的能力。基于上述改进,提出了轻量级作物叶片病害识别模型REM-ShuffleNetV2。实验结果表明,REM-ShuffleNetV2模型在自建的田间作物叶片病害数据集上的准确率和F1分数分别为96.72%和96.62%,比ShuffleNetV2模型分别高3.88%和4.37%;模型参数数量为4.40M,比原模型少9.65%。与DenseNet121、EfficientNet和MobileNetV3等经典网络相比,REM-ShuffleNetV2模型不仅具有更高的识别准确率,而且模型参数更少。本研究提出的REM-ShuffleNetV2模型能够在复杂的田间背景下实现作物叶片病害的准确识别,且模型体积小,便于部署到移动端,为作物叶片病害的智能诊断提供了参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9a5b/10961419/48236f88c984/fpls-15-1342123-g001.jpg

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