Rice Disease Recognition and Feature Visualization Using a Convolutional Neural Network

Yan Wei, Zhibin Wang, Xiao-Jun Qiao
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Abstract

To achieve fast and accurate identification of rice diseases in the field, we propose an automatic rice disease classifier, in which the process of characterizing rice diseases is visualized and analyzed by a deconvolutional neural network. An AlexNet model, pretrained by ImageNet, is constructed and trained on rice disease images to classify them. After the training is completed, the signal is repositioned to the corresponding position of the input image by a deconvolutional neural network corresponding to the AlexNet structure. The set of pixels that contribute most to the prediction of the convolutional neural network is identified from the deconvolution visualization map. The experimental results demonstrated the effectiveness of the proposed method. The classifier achieved an accuracy of 90.03% for the rice disease dataset, which was 8.39% and 16.78% higher than the accuracies achieved by the LeNet and BP neural networks, respectively. The features of the middle layer of the convolutional neural network perform a hierarchical transformation from low-level information, such as color, to high-level information, such as contours and edges of disease spots. This transformation process matches the criteria for the actual identification of rice diseases. The proposed method lays the foundation for the accurate identification of crop diseases and the design and adjustment of deep convolutional neural network structures.
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基于卷积神经网络的水稻病害识别与特征可视化
为了实现对水稻病害的快速准确识别,提出了一种水稻病害自动分类器,该分类器采用反卷积神经网络对水稻病害的识别过程进行可视化分析。利用ImageNet预训练的AlexNet模型,对水稻病害图像进行分类训练。训练完成后,通过AlexNet结构对应的反卷积神经网络将信号重新定位到输入图像的相应位置。从反卷积可视化图中识别出对卷积神经网络预测贡献最大的像素集。实验结果证明了该方法的有效性。该分类器对水稻病害数据集的准确率为90.03%,比LeNet和BP神经网络分别提高8.39%和16.78%。卷积神经网络中间层的特征执行从低级信息(如颜色)到高级信息(如病斑的轮廓和边缘)的分层转换。这一转化过程符合实际鉴定水稻病害的标准。该方法为作物病害的准确识别和深度卷积神经网络结构的设计与调整奠定了基础。
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