首页> 外文会议>2019 International Conference on Automation, Computational and Technology Management >CNN based on Overlapping Pooling Method and Multi-layered Learning with SVM KNN for American Cotton Leaf Disease Recognition
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CNN based on Overlapping Pooling Method and Multi-layered Learning with SVM KNN for American Cotton Leaf Disease Recognition

机译:基于重叠合并方法的CNN和SVM和KNN的多层学习用于美国棉叶病识别

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摘要

The cotton agriculture industry faces the economic losses due to the pest infections and bacterial or viral contagions, the farmers lose nearly 10-20% of the total profit on an average annually in India. In this paper, a solution to the problem related to agriculture has been suggested, which involves the cotton leaf disease recognition by using the visual features. This paper implements the expert system for the recognition of crop diseases in the given set of images. The overlapping pooling has been utilized with the multi-layered perceptrons (MLP) with flexible layering mechanism to classify the plant leaves for detection of infected and healthy leaves. The graph based MLP network model has been employed to dynamically transform the feature orientation to discover the similar components in the given database. The k-nearest neighbor (kNN) and support vector machine (SVM) are utilized for the overlapping layer of classification to minimize the errors by double layered modeling. Various techniques like morphological segmentation, pattern matching, hue matching are combined in this model to accurately localize the disease region with more than 96% accuracy.
机译:棉花农业因虫害感染和细菌或病毒传染而面临经济损失,印度农民平均每年损失近10-20%的总利润。在本文中,已经提出了解决与农业有关的问题的方案,该方案涉及利用视觉特征来识别棉叶病。本文实现了在给定图像集中识别作物病害的专家系统。重叠池已与具有灵活分层机制的多层感知器(MLP)一起使用,以对植物叶片进行分类,以检测受感染和健康的叶片。基于图的MLP网络模型已用于动态转换特征方向,以发现给定数据库中的相似组件。将k最近邻(kNN)和支持向量机(SVM)用于分类的重叠层,以通过双层建模使误差最小化。在此模型中结合了形态学分割,模式匹配,色相匹配等各种技术,可以以96%以上的准确度准确定位疾病区域。

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