Unhealthy region of citrus leaf detection using image processing techniques

Kiran R. Gavhale, U. Gawande, K. Hajari
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引用次数: 153

Abstract

Producing agricultural products are difficult task as the plant comes to an attack from various micro-organisms, pests and bacterial diseases. The symptoms of the attacks are generally distinguished through the leaves, steams or fruit inspection. The present paper discusses the image processing techniques used in performing early detection of plant diseases through leaf features inspection. The objective of this work is to implement image analysis and classification techniques for extraction and classification of leaf diseases. Leaf image is captured and then processed to determine the status of each plant. Proposed framework is model into four parts image preprocessing including RGB to different color space conversion, image enhancement; segment the region of interest using K-mean clustering for statistical usage to determine the defect and severity areas of plant leaves, feature extraction and classification. texture feature extraction using statistical GLCM and color feature by means of mean values. Finally classification achieved using SVM. This technique will ensure that chemicals only applied when plant leaves are detected to be effected with the disease.
利用图像处理技术检测柑橘叶片的不健康区域
生产农产品是一项艰巨的任务,因为植物受到各种微生物、害虫和细菌性疾病的攻击。这种病的症状一般是通过检查叶子、蒸汽或果实来区分的。本文讨论了通过叶片特征检测进行植物病害早期检测的图像处理技术。本工作的目的是实现图像分析和分类技术的提取和分类叶片病害。捕获叶片图像,然后对其进行处理,以确定每株植物的状态。提出的框架将图像预处理模型分为四部分,包括RGB到不同色彩空间的转换、图像增强;利用k均值聚类对感兴趣区域进行分割,用于统计,确定植物叶片的缺陷和严重区域,进行特征提取和分类。采用统计GLCM提取纹理特征,采用均值提取颜色特征。最后利用支持向量机实现分类。这项技术将确保只有在检测到植物叶片受到病害影响时才施用化学品。
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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