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CNN Based Detection of Healthy and Unhealthy Wheat Crop

机译:基于CNN的健康和不健康小麦作物检测

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Abstract The diagnosis of leaf diseases depict a wide range of information about the crop status. Diagnosis plays a very crucial ro le on the amount of resources available the farmt It gets prioritize because it effects the nation’s gross domestic product (GDP) directly. It is beneficial for the analysis of crop in early stage to Verify the efficient crop yield. Automatic disease identification is one of the interesting and challenging problems in computer vision due to its potential applications. In this paper, a novel method has been proposed for disease identification. The proposed method suggests a feature extraction solution for the identification of healthy and unhealthy wheat plant. A deep convolutional neural network (DCNN) and transfer learning approach is used to train the model. Different CNN models like VGG16, VGG19, AlexNet, ResNet-34, Resnet-101, ResNet-50 and ResNet-18 are used to train our model for obtain ing better results. Accuracy achieved while training the model is up to 98%. Results have showed that the technique used in this paper is beneficial to farmers so that they can identify the spoiled area of a crop and utilizes the resources to increase their productivity.
机译:摘要叶病的诊断描述了有关作物状况的广泛信息。诊断对农场可利用的资源量起着至关重要的作用。诊断被优先考虑是因为它直接影响国家的国内生产总值(GDP)。验证有效的农作物产量对早期的农作物分析是有益的。由于其潜在的应用,自动疾病识别是计算机视觉中有趣且具有挑战性的问题之一。本文提出了一种新的疾病识别方法。提出的方法提出了一种特征提取解决方案,用于识别健康和不健康的小麦植物。使用深度卷积神经网络(DCNN)和传递学习方法来训练模型。使用不同的CNN模型(例如VGG16,VGG19,AlexNet,ResNet-34,Resnet-101,ResNet-50和ResNet-18)来训练我们的模型以获得更好的结果。训练模型时达到的准确性高达98%。结果表明,本文所使用的技术对农民有利,以便他们能够识别出作物的变质区域并利用资源来提高他们的生产力。

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