Identification and classification of fungal disease affected on agriculture/horticulture crops using image processing techniques

J. Pujari, Rajesh Yakkundimath, A. S. Byadgi
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引用次数: 37

Abstract

This paper presents a study on the image processing techniques used to identify and classify fungal disease symptoms affected on different agriculture/horticulture crops. Many diseases exhibit general symptoms that are be caused by different pathogens produced by leaves, roots etc. Images Often do not possess sufficient details to assist in diagnosis, resulting in waste of time, misshaping the diagnostician to arrive at incorrect diagnosis. Farmers experience great difficulties and also in changing from one disease control policy to another i.e. intensive use of pesticides. Farmers are also concerned about the huge costs involved in these activities and severe loss. The cost intensity, automatic correct identification and classification of diseases based on their particular symptoms is very useful to farmers and also agriculture scientists. Early detection of diseases is a major challenge in horticulture / agriculture science. Development of proper methodology, certainly of use in these areas. Plant diseases are caused by bacteria, fungi, virus, nematodes, etc., of which fungi is the main disease causing organism. The present study has been focused on early detection and classification of fungal disease and its related symptoms.
利用图像处理技术鉴定和分类影响农业/园艺作物的真菌病
本文介绍了用于识别和分类不同农业/园艺作物真菌病症状的图像处理技术的研究。许多疾病表现出一般症状,这些症状是由叶子、根等产生的不同病原体引起的。图像通常没有足够的细节来帮助诊断,导致时间的浪费,使诊断医师做出错误的诊断。农民在从一种疾病控制政策转变为另一种疾病控制政策(即密集使用杀虫剂)时遇到了很大的困难。农民还担心这些活动所涉及的巨大成本和严重损失。成本强度、基于特定症状的疾病自动正确识别和分类对农民和农业科学家非常有用。早期发现疾病是园艺/农业科学的一个主要挑战。开发适当的方法,当然可以在这些领域使用。植物病害是由细菌、真菌、病毒、线虫等引起的,其中真菌是主要的致病生物。目前的研究重点是真菌疾病及其相关症状的早期检测和分类。
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