利用颜色、纹理分析和人工神经网络进行水果病害检测

A. Awate, Damini Deshmankar, Gayatri Amrutkar, Utkarsha Bagul, Samadhan Sonavane
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引用次数: 61

摘要

如今,由于对农业的需求过高,水果的有效生长和提高产量是必要和重要的。为此,农民需要人工监测水果从收获到生长的过程。但人工监测并非每次都能得到满意的结果,往往需要专家给出满意的建议。因此,它需要提出一种高效的智能农业技术,这将有助于以更少的人力实现更高的产量和增长。介绍了一种对果实外源性疾病进行诊断和分类的技术。传统的系统使用数千个单词,导致语言的边界。而我们所提出的系统则是利用图像处理技术来实现的,因为图像是一种易于传递的方式。在本文中,采用OpenCV库进行实现。采用K-means聚类方法对图像进行分割,根据果实上孔洞的颜色、形态、纹理和结构四个特征向量对图像进行分类并映射到各自的病害类别中。该系统使用两个图像数据库,一个用于实现查询图像,另一个用于训练已存储的疾病图像。人工神经网络(ANN)的概念用于模式匹配和疾病分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fruit disease detection using color, texture analysis and ANN
Now-a-days as there is prohibitive demand for agricultural industry, effective growth and improved yield of fruit is necessary and important. For this purpose farmers need manual monitoring of fruits from harvest till its progress period. But manual monitoring will not give satisfactory result all the times and they always need satisfactory advice from expert. So it requires proposing an efficient smart farming technique which will help for better yield and growth with less human efforts. We introduce a technique which will diagnose and classify external disease within fruits. Traditional system uses thousands of words which lead to boundary of language. Whereas system that we have come up with, uses image processing techniques for implementation as image is easy way for conveying. In the proposed work, OpenCV library is applied for implementation. K-means clustering method is applied for image segmentation, the images are catalogue and mapped to their respective disease categories on basis of four feature vectors color, morphology, texture and structure of hole on the fruit. The system uses two image databases, one for implementation of query images and the other for training of already stored disease images. Artificial Neural Network (ANN) concept is used for pattern matching and classification of diseases.
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