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A Novel Method of Maize Leaf Disease Image Identification Based on a Multichannel convolutional neural network

机译:基于多通道卷积神经网络的玉米叶片疾病图像识别的一种新型方法

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Traditional methods for detecting maize leaf diseases (such as leaf blight, sooty blotch, brown spot, rust, and purple leaf sheaf) are typically labor-intensive and strongly subjective. With the aim of achieving high accuracy and efficiency in the identification of maize leaf diseases from digital imagery, this article proposes a novel multichannel convolu-tional neural network (MCNN). The MCNN is composed of an input layer, five convolutional layers, three subsampling layers, three fully connected layers, and an output layer. Using a method that imitates human visual behavior in video saliency detection, the first and second subsampling layers are connected directly with the first fully connected layer. In addition, the mixed modes of pooling and normalization methods, rectified linear units (ReLU), and dropout are introduced to prevent overfitting and gradient diffusion. The learning process corresponding to the network structure is also illustrated. At present, there are no large-scale images ofmaize leaf disease for use as experimental samples. To test the proposed MCNN, I0,820 RGB images containing five types of disease were collected from maize planting areas in Shandong Province, China. The original images could not be used directly in identification experiments because of noise and irrelevant regions. They were therefore denoised and segmented by homomorphic filtering and region of interest (ROI) segmentation to construct a standard database. A series of experiments on 8 GB graphics processing units (GPUs) showed that the MCNN could achieve an average accuracy of 92.31% and a high efficiency in the identification of maize leaf diseases. The multichannel design and the integration of different innovations proved to be helpful methods forboosting performance.
机译:用于检测玉米叶片疾病的传统方法(如叶片枯萎,烟灰,棕色点,锈蚀,紫色叶片)通常是劳动密集型和强烈主观的。旨在实现高精度和效率的鉴定玉米叶片疾病的数字图像,本文提出了一种新颖的多通道卷积神经网络(MCNN)。 MCNN由输入层,五个卷积层,三个数据采样层,三个完全连接层和输出层组成。使用模仿视频显着性检测中的人类视觉行为的方法,第一和第二附带层直接与第一完全连接的层连接。另外,引入了汇集和归一化方法的混合模式,整流的线性单元(Relu)和丢弃器,以防止过度拟合和梯度扩散。还示出了与网络结构相对应的学习过程。目前,没有大规模的叶片疾病图像用作实验样品。为了测试所提出的MCNN,从中国山东省玉米种植区收集了包含五种疾病的I0,820 RGB图像。由于噪音和不相关的区域,原始图像不能直接在识别实验中使用。因此,它们被同型滤波和感兴趣区域(ROI)分割区域被去除并分割,以构建标准数据库。在8 GB图形处理单元(GPU)上的一系列实验表明,MCNN可以在玉米叶片疾病鉴定中达到92.31%的平均精度和高效率。多通道设计和不同创新的整合被证明是有用的措施抵消性能的方法。

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