Image Processing Technique for the Detection of Alberseem Leaves Diseases Based on Soft Computing

E. Abusham
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引用次数: 4

Abstract

Detecting plant diseases using the traditional method such as the naked eye can sometimes lead to incorrect identification and classification of the diseases. Consequently, this traditional method can strongly contribute to the losses of the crop. Image processing techniques have been used as an approach to detect and classify plant diseases. This study aims to focus on the diseases affecting the leaves of al-berseem and how to use image processing techniques to detect al-berseem diseases. Early detection of diseases important for finding appropriate treatment quickly and avoid economic losses. Detect the plant disease is based on the symptoms and signs that appear on the leaves. The detection steps include image preprocessing, segmentation, and identification. The image noise is removed in the preprocessing stage by using the MATLAB features energy, mean, homogeneity, and others. The k-mean-clustering is used to detect the affected area in leaves. Finally, KNN will be used to recognize unhealthy leaves and determines disease types (fungal diseases, pest diseases (shall), leaf minor (red spider), and deficiency of nutrient (yellow leaf)); these four types of diseases will detect in this thesis. Identification is the last step in which the disease will identify and classified.
基于软计算的阿尔贝叶病害检测图像处理技术
利用肉眼等传统方法检测植物病害,有时会导致病害的错误识别和分类。因此,这种传统方法可能会严重造成作物的损失。图像处理技术已成为植物病害检测和分类的重要手段。本研究的目的是集中研究影响白杨叶片的疾病,以及如何利用图像处理技术检测白杨叶片的疾病。早期发现疾病对于迅速找到适当的治疗方法和避免经济损失至关重要。检测植物病害是基于出现在叶子上的症状和体征。检测步骤包括图像预处理、分割和识别。在预处理阶段,利用MATLAB特征能量、均值、均匀性等去除图像噪声。k-均值聚类用于检测叶片中受影响的区域。最后,KNN将用于识别不健康的叶片并确定病害类型(真菌病、害虫病(shall)、叶片次要(红蜘蛛)和营养缺乏(黄叶));本文将对这四种疾病进行检测。鉴定是对疾病进行鉴定和分类的最后一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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