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Crop Disease Classification using Texture Analysis

机译:使用纹理分析的作物疾病分类

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摘要

With the Agriculture Sector being the backbone of not only a large number of industries but also society as a whole, there is a rising need to grow good quality crops which in turn will give a high yield. For this to happen, it is crucial to monitor the crops throughout their growth period. In this paper, Image processing is used to detect and classify sunflower crop diseases based on the image of their leaf. The images are taken through a high resolution digital camera and after preprocessing, are subjected to k-means clustering to get the diseased part of the leaf. These are then run through the various machine learning algorithms and classified based on their color and texture features. A comparison based on accuracy between various machine learning algorithms is done namely K-Nearest Neighbors, Multi-Class Support Vector Machine, Naive Bayes and Multinomial Logistic Regression to achieve maximum accuracy. The implementation has been done using MATLAB.
机译:随着农业部门的骨干不仅是大量行业,而且还有整体社会,需要增加良好的品质作物,这反过来会产生高收益率。为此,在整个生长期内监测农作物至关重要。在本文中,图像处理用于根据叶子的图像来检测和分类向日葵作物疾病。通过高分辨率数码相机和预处理之后进行图像,经受K-means聚类以获得叶片的患病部分。然后通过各种机器学习算法运行这些算法,并根据其颜色和纹理特征进行分类。基于各种机器学习算法之间的准确性的比较是K-Collect邻居,多级支持向量机,天真贝叶斯和多项式逻辑回归来实现最大精度。实现了使用MATLAB完成。

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