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Cotton Leaf Disease Classification using Deep Convolution Neural Network for Sustainable Cotton Production

机译:基于深度卷积神经网络的棉花叶病分类可持续棉花生产

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The economic gainful of the country largely join on the crop production quality and quantity. The production profit can be improved by leaf disease detection in correct time. Many image processing methods have been developed for leaf disease detection. Technological improvement allows the task easier and faster at very early stage. Leaf disease is one of the major issue in the agriculture field. The Cotton leaves are affected by the disease named Cercospora, Bacterial blight, Ascochyta blight, and Target spot. General observation by farmers may time consume, expensive and sometimes inaccurate. For this, we introduce Deep Convolutional Neural Network based approach for identifying Cotton leaf diseases automatically. As per our understanding, Deep Convolutional Neural Network is used for the first time to detect cotton leaf disease. We train our data and assess the experimental result which displays the average accuracy of 96 %.
机译:该国的经济利益在很大程度上取决于农作物的生产质量和数量。通过在正确的时间检测叶病可以提高生产利润。已经开发出许多图像处理方法来检测叶病。技术上的改进使任务在很早的阶段就变得更加容易和快捷。叶病是农业领域的主要问题之一。棉叶受名为Cercospora,细菌性疫病,Ascochyta疫病和Target斑病的疾病的影响。农民的普遍观察可能会浪费时间,花费昂贵,有时甚至是不准确的。为此,我们引入了基于深度卷积神经网络的方法来自动识别棉叶病。根据我们的理解,深度卷积神经网络首次用于检测棉叶病。我们训练数据并评估显示96%的平均准确度的实验结果。

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