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Leaf Disease Detection using Neural Network Hybrid Models

机译:基于神经网络混合模型的叶片疾病检测

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Around the globe, food plays a major role in the Ecosystem. Diseases caused by pathogens amount to a loss of 16% [1] of the annual yield. This, in turn, causes damage to economy as well. Advancements in Machine learning algorithms and Image processing techniques have made the detection of leaf disease comparatively easier and efficient than ever before. AlexNet is a CNN that has been considered one of the best for Image Classification. Other State of the Art (SOTA) [2] CNNs have also been considered in this paper while determining the best model for the problem at hand. The paper gives comparative analysis to classify 12 crop species with 38 leaf diseases using the CNN models considered effective for leaf disease detection. A hybrid approach presented here AlexNet+SVM gives a validation accuracy of 99.9986% with less than 0.01 error percentage. This is presented here and is proven to have outperformed some of the State of the Art (SOTA) CNNs like ResNet, Inception V3, VGG16, and AlexNet.
机译:在全球范围内,食物在生态系统中扮演着重要角色。由病原体引起的疾病损失了年产量的16%[1]。反过来,这也对经济造成损害。机器学习算法和图像处理技术的进步使叶子疾病的检测比以往任何时候都更加容易和高效。 AlexNet是一个CNN,被认为是图像分类的最佳方法之一。在确定当前问题的最佳模型时,本文还考虑了其​​他现有技术(SOTA)[2]的CNN。本文使用被认为对叶病检测有效的CNN模型进行比较分析,以对12种具有38种叶病的农作物进行分类。这里介绍的一种混合方法AlexNet + SVM的验证精度为99.9986%,错误率小于0.01。本文介绍了此方法,事实证明它的性能优于某些现有的(SOTA)CNN,例如ResNet,Inception V3,VGG16和AlexNet。

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