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Classification of Plant Leaf Diseases Based on Improved Convolutional Neural Network

机译:基于改进卷积神经网络的植物叶病分类

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摘要

Plant leaf diseases are closely related to people’s daily life. Due to the wide variety of diseases, it is not only time-consuming and labor-intensive to identify and classify diseases by artificial eyes, but also easy to be misidentified with having a high error rate. Therefore, we proposed a deep learning-based method to identify and classify plant leaf diseases. The proposed method can take the advantages of the neural network to extract the characteristics of diseased parts, and thus to classify target disease areas. To address the issues of long training convergence time and too-large model parameters, the traditional convolutional neural network was improved by combining a structure of inception module, a squeeze-and-excitation (SE) module and a global pooling layer to identify diseases. Through the Inception structure, the feature data of the convolutional layer were fused in multi-scales to improve the accuracy on the leaf disease dataset. Finally, the global average pooling layer was used instead of the fully connected layer to reduce the number of model parameters. Compared with some traditional convolutional neural networks, our model yielded better performance and achieved an accuracy of 91.7% on the test data set. At the same time, the number of model parameters and training time have also been greatly reduced. The experimental classification on plant leaf diseases indicated that our method is feasible and effective.
机译:植物叶片疾病与人们的日常生活息息相关。由于疾病的种类繁多,用人工眼识别和分类疾病不仅费时费力,而且容易以高误码率进行误认。因此,我们提出了一种基于深度学习的方法来识别和分类植物叶片疾病。所提出的方法可以利用神经网络的优势来提取患病部位的特征,从而对目标疾病区域进行分类。为了解决训练收敛时间长和模型参数太大的问题,传统的卷积神经网络通过合并初始模块,挤压和激励(SE)模块和全局池化层以识别疾病的结构进行了改进。通过Inception结构,将卷积层的特征数据进行多尺度融合,以提高叶病数据集的准确性。最后,使用全局平均池化层而不是完全连接层来减少模型参数的数量。与某些传统的卷积神经网络相比,我们的模型产生了更好的性能,并且在测试数据集上达到了91.7%的精度。同时,模型参数的数量和训练时间也大大减少了。对植物叶片病害的实验分类表明,该方法是可行和有效的。

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