基于支持向量机的玉米叶片营养缺乏症检测

Y. Sari, M. Maulida, Razak Maulana, J. Wahyudi, Ahmad Shalludin
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引用次数: 2

摘要

和其他植物一样,玉米也需要营养来维持生命。氮、磷和钾是除了玉米以外所有植物都需要的至少三种主要营养物质。有很多方法可以通过叶子来检测玉米的这三种营养成分,如叶子颜色图(LCC)、叶绿素仪、土壤植物分析开发(SPAD)和土壤测试试剂盒。农民们常用的一种通过玉米叶片检测营养成分的方法是叶片颜色图(LCC),因为它比其他两种方法成本更低。为了克服这个问题,数字图像处理可能是一个很好的解决方案,农民可以采用它来以一种更容易和更便宜的方式检查他们的植物的营养需求。本研究针对玉米叶片图像的数字图像处理系统,提出了色相、饱和度、值(HSV)的RGB提取方法。为了对其图像结果进行分类,本研究使用支持向量机(SVM)作为分类方法。利用该方法对玉米叶片养分含量进行检测,准确率达到80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Corn Leaves Nutrient Deficiency Using Support Vector Machine (SVM)
Like other plants in general, corns are also requiring nutrients for their life. Nitrogen, phosphorus, and potassium are at least three main nutrients that all plants always need except corn. There are so many methods that can use to examine these three nutrients for corn through its leaves such as Leaf Color Chart (LCC), Chlorophyll Meters Soil Plant Analysis Development (SPAD), and Soil Test Kit. One method that is mostly used by farmers to examine nutrients content through corn leaves is used Leaf Color Chart (LCC) because it cost less than the other two. To overcome this problem, digital image processing could be a good solution that can be adopted by farmers to examine their plant's nutrients needs in an easier and cheaper way. In this study, the RGB extraction method of Hue, Saturation, Value (HSV) is proposed for a digital image processing system for corn leaves images. To classified its images result, Support Vector Machine (SVM) is used as a classification method for this study. By using this proposed method, an accuracy value of 80% is achieved to detect nutrients content in corn leaves.
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