利用计算机视觉和机器学习算法进行植物叶片病害检测

Sunil S. Harakannanavar , Jayashri M. Rudagi , Veena I Puranikmath , Ayesha Siddiqua , R Pramodhini
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引用次数: 62

摘要

即使在人口迅速增长的情况下,农业也为所有人提供食物。在农业生产中,对植物病害进行早期预测,是保证粮食面向全体人口的重要手段。但是在作物生长早期就预测病害是很不幸的。这篇论文背后的想法是让农民意识到减少植物叶片疾病的尖端技术。由于番茄是一种单纯可用的蔬菜,因此确定了机器学习和图像处理的方法,并结合准确的算法来检测番茄植株的叶片病害。在本调查中,考虑了番茄叶片有病害的样品。有了这些番茄叶片的病样,农民可以根据早期症状很容易地发现疾病。首先将番茄叶片样本调整为256 × 256像素,然后利用直方图均衡化技术提高番茄样本的质量。引入k均值聚类方法将数据空间划分为Voronoi单元。采用轮廓跟踪的方法提取叶片样本的边界。利用离散小波变换、主成分分析和灰度共生矩阵等多重描述符提取叶片样本的信息特征。最后,使用支持向量机(SVM)、卷积神经网络(CNN)和k -近邻(K-NN)等机器学习方法对提取的特征进行分类。采用支持向量机(88%)、K-NN(97%)和CNN(99.6%)对番茄无序样本进行准确率测试。
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Plant leaf disease detection using computer vision and machine learning algorithms

Agriculture provides food to all the human beings even in case of rapid increase in the population. It is recommended to predict the plant diseases at their early stage in the field of agriculture is essential to cater the food to the overall population. But it unfortunate to predict the diseases at the early stage of the crops. The idea behind the paper is to bring awareness amongst the farmers about the cutting-edge technologies to reduces diseases in plant leaf. Since tomato is merely available vegetable, the approaches of machine learning and image processing with an accurate algorithm is identified to detect the leaf diseases in the tomato plant. In this investigation, the samples of tomato leaves having disorders are considered. With these disorder samples of tomato leaves, the farmers will easily find the diseases based on the early symptoms. Firstly, the samples of tomato leaves are resized to 256 × 256 pixels and then Histogram Equalization is used to improve the quality of tomato samples. The K-means clustering is introduced for partitioning of dataspace into Voronoi cells. The boundary of leaf samples is extracted using contour tracing. The multiple descriptors viz., Discrete Wavelet Transform, Principal Component Analysis and Grey Level Co-occurrence Matrix are used to extract the informative features of the leaf samples. Finally, the extracted features are classified using machine learning approaches such as Support Vector Machine (SVM), Convolutional Neural Network (CNN) and K-Nearest Neighbor (K-NN). The accuracy of the proposed model is tested using SVM (88%), K-NN (97%) and CNN (99.6%) on tomato disordered samples.

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