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Deep Structured Convolutional Neural Network for Tomato Diseases Detection

机译:用于番茄病害检测的深度结构卷积神经网络

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Plant diseases outbreaks can cause significant threat to food security. Early detection of the diseases using machine learning could avoid such disaster. Currently, deep learning, which is a recent technology in machine learning, gained much popularity for object recognition tasks. Convolutional neural network (CNN) is one major techniques for object identification in deep learning. In this paper, we evaluate the effect of different depth of CNN architectures on the detection accuracies of the plant diseases detection. Various CNN architectures with different depth are investigated. They are simple CNN baseline (with two layer of convolutional layers), AlexNet (with five convolutional layers), and VGGNet (with 13 convolutional layers). We also evaluate GoogleNet architectures. Unlike previously mentioned architectures, GoogleNet use convolutional layers with various resolutions to be concantenated with each other, emphasizing the effect on not only the deep architecture but also a wide one. The experimental results suggest that CNN with deeper architecture, i.e. VGGNet, outperforms others, indicating that having deeper architectures may be more benefit for this task.
机译:植物病害的爆发可能对粮食安全造成重大威胁。使用机器学习及早发现疾病可以避免此类灾难。当前,深度学习是机器学习中的最新技术,它在对象识别任务中非常受欢迎。卷积神经网络(CNN)是深度学习中对象识别的一种主要技术。在本文中,我们评估了不同深度的CNN架构对植物病害检测准确性的影响。研究了具有不同深度的各种CNN架构。它们是简单的CNN基线(具有两层卷积层),AlexNet(具有五层卷积层)和VGGNet(具有13层卷积层)。我们还将评估GoogleNet架构。与前面提到的体系结构不同,GoogleNet使用具有不同分辨率的卷积层相互融合,着重强调了不仅对深层体系结构而且对广泛体系结构的影响。实验结果表明,具有更深架构的CNN(即VGGNet)优于其他CNN,这表明具有更深架构的CNN可能会更有利于此任务。

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