基于图像处理的农作物叶片病害检测

T. Venkatesh, K. Prathyush, S. Deepak, U.V.S.A.M. Preetham
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引用次数: 0

摘要

我们都知道农业在印度经济中扮演着重要的角色,大多数人都依赖于它,并在全球范围内提供了大量的作物。这些作物的病害通常是由于叶片的影响,导致园艺产品的质量和数量下降。要正确认识作物病害,才能解决问题。如果我们不发现这种疾病并进行适当的治疗,将会造成巨大的损失。为了观察被污染的树叶的细微变化,自然之眼的视野并没有那么多基础。在本报告中,我们给出了一个自然识别和整理植物叶病的编程答案。在这方面,我们利用图像制备方法来表征排列,并可以根据感染快速找到。该方法将有效地提高产量效率,并能得到准确的病害,帮助我们找到病害作物的解决方案。通过对这些图像的获取、图像预处理、分割、亮点提取和基于遗传算法的分组等几个步骤进行了研究。关于土地的耕种,效率是经济特别依赖的东西。这就是植物病害鉴定在农业经营领域承担重要工作的原因之一,因为植物病害是很正常的。如果这里没有采取合理的考虑,那么就会对工厂造成严重后果,因为每件产品的质量、数量或效率都会受到影响。通过一些程序化的步骤来识别植物感染是有益的,因为它避免了大量检查农田收成的工作。在作物收割的开始阶段,它就会显示出这些疾病的副作用或症状。该方法通过区分作物病害的影响,形成了一种新的程序化方法。我们正在使用一些图像处理技术来识别这种疾病。此外,还对植物叶片排列中各种病害排序策略的研究进展进行了综述。图像分割是植物叶片排列中病害识别的重要视点,通过输入RGB掩膜图像完成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agriculture Crop Leaf Disease Detection using Image Processing
As we all know that the Agriculture plays an important role in the Indian economy and majority of the individuals depends upon it and offers huge amount of the crops through the worldwide. The Illnesses in these crops are generally on the leaf's influences on the decrease of both quality and number of horticultural items. We should know the disease of the crop correctly to solve the problem. There will be a huge loss if we do not find the disease and treat properly. The view of natural eye isn't so a lot more grounded in order to watch minutevariety in the contaminated piece of leaf. In thisreport, we are giving a programming answer fornaturally identify and arrange plant leaf diseases. In this we are utilizing picture preparing methods to characterize alignments and rapidly finding can be completed according to infection. This methodology will upgrade the efficiency of yields in a efficient way and can get us the accurate disease which helps us to find the solution for the diseased crop. It observes a few stages with the help of these pictures obtaining, picture pre-handling, division, highlights extraction and genetic algorithm-based grouping. Relating to the cultivation of land, efficiency is something on which economy exceptionally depends. This is the one of the reasons that sickness identification in plants assumes a significant job in the agriculture business field, as having the illness in plants are very normal. In an event that legitimate consideration isn't taken here, at that point it causes true consequences for plantsand because of which quality of each and every item, amount or efficiency is being influenced. The recognition of plant infections through some programmed step is gainful as it avoids a huge work of checking in huge homesteads of harvests. At the beginning of the crop harvesting step itself, it shows the side effects or the symptoms of the diseases. This proposed method surfaces into a new programmed manner by distinguishing the effects of the crop plant diseases. We are using some image processing techniques for the identification of the disease. Additionally, it watches the review on the various diseases order strategies which also can be utilized for plant leaf alignment. Picture division, which is a significant viewpoint for sickness identificationin a plant leaf alignment, is finalized by the input RGB mask images.
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