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Health Detection for Potato Leaf with Convolutional Neural Network

机译:卷积神经网络在马铃薯叶片健康检测中的应用

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Potato is the fourth largest food crop in the world and grown in many places of the world. Potato crops mainly infected with fungi, and hence they got early blight diseases and late blight diseases. Real time control of disease and management can effectively increase production and reduce farmers' losses. The ability can identify infected crops automatically for farmers. Therefore, this paper proposes a CNN (Convolutional Neural Network) architecture which is suitable for potato disease detection. At first, we will create a database for our training set by means of image processing in the CNN. Adam is used as the optimizer, and cross entropy is used as the model analysis basis. Softmax is used as the final judgment function. The convolution layer and resources are minimized usage amount while maintaining high accuracy. The experimental results show that the parameter usage is 10,089,219 and the accuracy of the disease judgment can reach 99% under the preset model which is proposed in this paper.
机译:马铃薯是世界第四大粮食作物,在世界许多地方都有种植。马铃薯作物主要感染真菌,因此它们患有早疫病和晚疫病。疾病的实时控制和管理可以有效地增加产量并减少农民的损失。该功能可以为农民自动识别受感染的农作物。因此,本文提出了一种适用于马铃薯疾病检测的CNN(卷积神经网络)架构。首先,我们将通过CNN中的图像处理为我们的训练集创建一个数据库。 Adam被用作优化器,交叉熵被用作模型分析的基础。 Softmax用作最终判断函数。卷积层和资源在保持高精度的同时最小化了使用量。实验结果表明,在所提出的预设模型下,该参数的使用量为10,089,219,疾病判断的准确率可以达到99%。

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