KNN-based image segmentation for grapevine potassium deficiency diagnosis

Baldomero Manuel Sanchez Rangel, M. Aceves-Fernández, J. Murillo, J. Ortega, Juan Manuel Ramos Arreguín
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引用次数: 13

Abstract

In crops management, monitoring the plants health is an important task that allows early detection of nutritional deficiencies, diseases, pests, etc. that can result on important economic losses. With early detection there are more possibilities to react on an appropriate way to control the problem and assure the quality of the final products. Molecular methods performed in laboratories are a way to confirm the visual inspections on crops but the results can take valuable time. This makes the visual inspection an important task that allows early detection. Computer vision systems are an alternative solution to many problems of daily life. Many methods based on image processing have been developed focused on early detection of diseases and nutritional deficiencies. Specialized computer vision systems can be a support on decision making to appropriate crop management. In this paper, an image processing method to diagnose and classify grapevine leaves with certain level of potassium deficiency is proposed. The proposed segmentation method based on K-Nearest Neighbors (KNN) were compared to methods based on histogram. KNN proved to have better results specially when the environment were images are acquired is less controlled.
基于knn的葡萄缺钾诊断图像分割
在作物管理中,监测植物健康是一项重要任务,可以早期发现可能导致重大经济损失的营养缺乏、疾病、害虫等。有了早期的发现,就有更多的可能性采取适当的方式来控制问题,并确保最终产品的质量。在实验室中进行的分子方法是一种确认作物外观检查的方法,但结果可能需要宝贵的时间。这使得目视检查成为一项重要的任务,可以早期发现。计算机视觉系统是解决日常生活中许多问题的另一种方法。许多基于图像处理的方法已经开发出来,重点是早期发现疾病和营养缺乏。专门的计算机视觉系统可以为适当的作物管理决策提供支持。本文提出了一种图像处理方法来诊断和分类一定程度缺钾的葡萄叶片。将基于k近邻(KNN)的分割方法与基于直方图的分割方法进行了比较。KNN被证明具有更好的效果,特别是当图像获取环境控制较少时。
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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