人工视觉保证咖啡豆品质

E. Carrillo, Alexander Aristizábal Peñaloza
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引用次数: 15

摘要

本文研究了利用咖啡豆的颜色、形状和大小特征对其进行分类的可能性。获取图像的过程是在受控的光照条件下完成的。在对图像进行分割的基础上,通过开发计算机程序对咖啡豆进行分类,提供了绿咖啡豆在生长和干燥过程中对咖啡风味和口感产生影响的物理变化信息。在对彩色图像进行RGB空间分析的情况下,对图像进行预处理,以降低噪声,与背景分离,增强其特征。该位置被用于识别和设置轮廓椭圆的算法,马氏距离分类器算法,称为洪水生长的算法,用于分割这些缺陷颗粒。利用技术进步的方法的出现是一种选择,它的好处鼓励了对新的可能性的研究。在整个图像分析过程中对咖啡豆进行分类是一种非常有前途的方法,因为它是一种微创方法,并且暴露在不可见的颗粒中会显着恶化。许多农民用手分拣咖啡豆,但只有几千美元投资于Sortex或Xeltron等自动分拣光学机器。本文提出了一种基于图像处理技术的缺陷豆分类算法
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Artificial vision to assure coffee-Excelso beans quality
This paper studies the possibility of classifying coffee beans by using their features of color, shape and size. The process of acquiring the images were done in controlled lighting conditions. Based on segmented images, color, shape and size provide information about the physical alteration in green coffee beans, during the growing and drying process that affect the flavor and taste of the drink by Developing a computer program to sort coffee beans by types In the case of color images are analyzed in RGB space, which were preprocessor in order to reduce noise and separate from the background and enhance its features. The location was used for an algorithm for identifying and setting contours ellipse, an algorithm Mahalanobis distance classifier, an algorithm called Flood of growth, for the segmentation of those defective grains. The emergence of methods that take advantage of technological advances is an option whose benefits encourage the study of new possibilities. The classification of coffee beans throughout the analysis of images is a very promising because it is a minimally invasive method and the exposure of the grains are not visible to look deteriorates significantly. Many farmers sort their coffee beans by hand but only a few thousand dollars invested in a automatic sorting optical machine such us Sortex or Xeltron. In this paper we develop algorithms based on image processing techniques for the classification of defective beans
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