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Enhanced Convolutional Neural Network (ECNN) for Maize Leaf Diseases Identification

机译:玉米叶片疾病的增强型卷积神经网络(ECNN)鉴定

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Livestock and plants are cultivated by an art and science called agriculture. In sedentary human civilization rise, key development is agriculture. Food surpluses are formed by domesticated species farming. In the absence of automatic diagnosis and identification of maize leaf disease, plants may be collapsed and even tend to die due to leaf disease which affects leaves of a plan to certain value. Vegetable and fruits supply may be drastically decreased by this disease in market. Different detection techniques for plant leaf disease are used in the literatures. Large areas are not covered to detect leaf disease in those methods, and they consumes more time. In maize leaf disease, convolutional neural networks (CNNs) and deep neural networks (DNNs) are used successfully for network parameter reduction and for improving maize leaf disease accuracy of identification. Diagnosis of maize leaf disease is done by enhanced convolutional neural network (ECNN) with receptive field's enlargement in this research. Four aspects are used to implement ECNN by this research. That includes ECNN framework, fused dilated convolutional layer, convolutional layer with one dimension, and ECNN motivation. Multiple pooling and stacked fused dilated convolutional layers, one input and one-dimensional convolutional layer are composed by ECNN. Estimated and real probability's cross-entropy is computed at final stage. ECNN weights are updated by a gradient descent method. Epochs of backpropagation are multiplied to compute optimum parameters. Unmodified models are used to make a result comparison of experimentation. Maize leaf disease is identified by proposed method. Google Web sites and plant village are used to gather around 500 images. This collection of images includes maize leaf disease's various stages. There are 9 classes of those images. Analysis of F-measure, accuracy, recall, and precision parameters is done by experimentation.
机译:牲畜和植物被艺术和科学培养,称为农业。在久坐不动人文文文明上升,关键发展是农业。食品盈余是通过驯化物种养殖形成的。在没有自动诊断和鉴定玉米叶疾病的情况下,植物可能会崩溃,甚至由于叶疾病而倾向于死于平面的叶片到某些值。在市场上这种疾病可能会急剧下降蔬菜和水果供应。文献中使用不同的植物叶病检测技术。大区域未被覆盖在这些方法中检测叶片疾病,它们会消耗更多时间。在玉米叶疾病中,成功使用卷积神经网络(CNNS)和深神经网络(DNN)进行网络参数减少和改善玉米叶疾病的鉴定精度。玉米叶疾病的诊断是通过增强的卷积神经网络(ECNN)在本研究中具有接受领域的扩大。通过这项研究,使用四个方面来实施ECNN。包括ECNN框架,熔融扩张的卷积层,具有一个维度的卷积层和ECNN动机。多个池和堆叠的熔化扩张的卷积层,一个输入和一维卷积层由Ecnn组成。估计和实际概率的跨熵在最终阶段计算。 ECNN权重由梯度滴定方法更新。 BackProjagation的时期乘以计算最佳参数。未经修改的模型用于进行实验的结果比较。通过提出的方法鉴定玉米叶疾病。 Google网站和工厂村用于收集大约500张图片。这种图像集合包括玉米叶疾病的各个阶段。这些图像有9个类。通过实验完成F测量,精度,召回和精密参数的分析。

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