棉花病害检测

Katta Dakshinya, M. Roshitha, Parasa Akshitha Raj, C. Anuradha
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引用次数: 0

摘要

棉花是印度最重要的作物,维持棉花的生长至关重要。黄萎病、赤霉病、丝孢素叶斑病、细菌性叶枯病、红斑病等都是危害棉花叶片的病害。因此,引进了许多方法来帮助农民和提高作物生产力。除了这些模型外,本文还概述了一种奇妙的棉花病害检测方法。先前基于项目的工作是web应用程序。描述了一种利用基于偏微分方程(PDE)的图像分解、分割、特征提取、特征选择和分类来提高分类性能的策略,并提出了一种处理方案。为了将图像划分为纹理和目标分量,经常使用总变分模型。使用码本方法提取纹理、颜色和形状特征,然后组合成特征集。采用选择特征的救济技术,只保留相关属性。多类分类支持向量机(SVM)算法只允许分类中所考虑的元素的一个子集通过。尽管如此,我们还是使用CNN开发了一个疾病检测应用程序,其中包含了2000张叶子图像的数据集,其中包含了前面提到的因素。该技术将作为棉花叶病监测的图形界面。使用该应用程序,我们能够以92.5%的准确率识别植物的疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cotton Disease Detection
Cotton is India's most important crop, and maintaining the plants is crucial. Verticillium wilt, Alternaria spot, Cercosporin leaf spot, bacterial leaf blight, and red spot, are all diseases that harm cotton leaves. As a result, numerous methodologies have been introduced to aid farmers and increase crop productivity. Apart from those models, this paper outlines a fantastic method for detecting cotton plant diseases. A prior project-based effort is a web application. It describes a strategy that uses Partial Differential Equations (PDE)- based image decomposition, segmentation, feature extraction, feature selection, and classification to improve classification performance and propose a treatment plan. To partition the image into texture and object components, the total variation model is frequently utilized. The texture, color, and shape features are extracted using the codebook method and afterward combined into a feature set. The relief technique of selecting features is employed to keep only relevant attributes. Only a subset of the elements considered in classification is permitted to pass through the Multiclass classification Support Vector Machine (SVM) algorithm. Despite this, we developed a disease detection app using CNN, with a dataset of 2000 leaf images that incorporates the previously mentioned factors. The proposed technology will serve as a graphical interface for monitoring cotton leaf disease. We were able to identify the plants' diseases with 92.5 percent accuracy using the app.
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