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Can Deep Learning Identify Tomato Leaf Disease?

机译:深度学习可以识别番茄叶病吗?

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This paper applies deep convolutional neural network (CNN) to identify tomato leaf disease by transfer learning. AlexNet, GoogLeNet, and ResNet were used as backbone of the CNN. The best combined model was utilized to change the structure, aiming at exploring the performance of full training and fine-tuning of CNN. The highest accuracy of 97.28% for identifying tomato leaf disease is achieved by the optimal model ResNet with stochastic gradient descent (SGD), the number of batch size of 16, the number of iterations of 4992, and the training layers from the 37 layer to the fully connected layer (denote as “fc”). The experimental results show that the proposed technique is effective in identifying tomato leaf disease and could be generalized to identify other plant diseases.
机译:本文应用深度卷积神经网络(CNN)通过转移学习来识别番茄叶病。 AlexNet,GoogLeNet和ResNet被用作CNN的主干。利用最佳组合模型来更改结构,旨在探索CNN的完整训练和微调的性能。最佳模型ResNet具有随机梯度下降(SGD),批处理数量为16,迭代次数为4992以及从37层到完全连接的层(表示为“ fc”)。实验结果表明,该技术可以有效地识别番茄叶病,可以推广到其他植物病害的识别。

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