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Grapevine Varieties Classification Using Machine Learning

机译:基于机器学习的葡萄品种分类

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Viticulture has a major impact in the European economy and over the years the intensive grapevine production led to the proliferation of many varieties. Traditionally these varieties are manually catalogued in the field, which is a costly and slow process and being, in many cases, very challenging to classify even for an experienced ampelographer. This article presents a cost-effective and automatic method for grapevine varieties classification based on the analysis of the leaf's images, taken with an RGB sensor. The proposed method is divided into three steps: (1) color and shape features extraction; (2) training and; (3) classification using Linear Discriminant Analysis. This approach was applied in 240 leaf images of three different grapevine varieties acquired from the Douro Valley region in Portugal and it was able to correctly classify 87% of the grapevine leaves. The proposed method showed very promising classification capabilities considering the challenges presented by the leaves which had many shape irregularities and, in many cases, high color similarities for the different varieties. The obtained results compared with manual procedure suggest that it can be used as an effective alternative to the manual procedure for grapevine classification based on leaf features. Since the proposed method requires a simple and low-cost setup it can be easily integrated on a portable system with real-time processing to assist technicians in the field or other staff without any special skills and used offline for batch classification.
机译:葡萄栽培对欧洲经济产生重大影响,多年来,密集的葡萄生产导致许多品种的扩散。传统上,这些变种是在现场手动分类的,这是一个昂贵且缓慢的过程,而且在很多情况下,即使对于有经验的拼字员来说,也很难进行分类。本文介绍了一种基于RGB传感器对叶片图像进行分析的经济有效的自动葡萄品种分类方法。该方法分为三个步骤:(1)颜色和形状特征提取; (2)培训和; (3)使用线性判别分析进行分类。该方法应用于从葡萄牙杜罗河谷地区购得的三种不同葡萄品种的240张叶片图像中,并且能够正确分类87%的葡萄叶。考虑到叶片具有许多形状不规则以及在许多情况下不同品种的高度颜色相似性所带来的挑战,所提出的方法显示出非常有前途的分类能力。与手动程序相比,所获得的结果表明,它可以替代基于叶特征的手动葡萄藤分类方法。由于建议的方法需要简单且低成本的设置,因此可以轻松地将其集成到具有实时处理功能的便携式系统中,以帮助现场技术人员或其他员工,而无需任何特殊技能,并且可以离线用于批次分类。

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