基于图像处理、人工神经网络和K近邻的咖啡豆种类分类

Edwin R. Arboleda, Arnel C. Fajardo, Ruji P. Medina
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引用次数: 54

摘要

咖啡豆的品质因产地的地理位置而异。咖啡豆的质量通常是通过目测来确定的,这是主观的,需要大量的精力和时间,而且容易出错。这就要求发展一种精确、非破坏性和客观的替代方法。本文的目的是开发一种适当的计算机程序,可以表征来自菲律宾Cavite不同城镇的咖啡豆。采用成像技术对不同种类的咖啡豆进行自动分类。从195张训练图像和60张测试图像中提取了基于形态学的重要咖啡豆特征,如咖啡豆面积、周长、等效直径和圆度百分比。采用人工神经网络(ANN)和K近邻(KNN)对咖啡豆进行自动分类。使用人工神经网络的分类得分为96.66%,使用KNN的分类得分为84.12%(k=1)、84.10%(k=2)、81.53%(k=3)、82.56%(k=4)、75.38%(k=5)、80.35% (k=6)、38.79%(k=7)、77.44%(k=8)、72.82%(k=9)和78.45% (k=10)。综上所述,本研究结果表明,成像技术可以作为一种有效的咖啡豆种类分类方法。在咖啡豆分类中,ANN比KNN更受青睐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of coffee bean species using image processing, artificial neural network and K nearest neighbors
The quality of coffee beans differs from each other based on the geographic locations of its sources. The coffee bean quality is conventionally determined by visual inspection, which is subjective, requiring considerable effort and time and prone to error. This calls for the development of an alternative method that is precise, non-destructive and objective. This paper was conducted with the objective of developing an appropriate computer routine that can characterize coffee beans from the different towns of Cavite, Philippines. Imaging techniques were employed to automatically classify the coffee bean samples according to their specie. Important coffee bean features based in morphology such as area of the bean, perimeter, equivalent diameter, and percentage of roundness were extracted from 195 training images and 60 testing images. Artificial neural network (ANN) and K nearest neighbor (KNN) were employed to automatically categorize the coffee beans. Using ANN, classification scores of 96.66% were achieved while using KNN the following classification scores were achieved 84.12%(k=1), 84.10%(k=2), 81.53%(k=3), 82.56%(k=4), 75.38%(k=5),80.35% (k=6), 38.79%(k=7), 77.44%(k=8), 72.82%(k=9) and 78.45% (k=10). In conclusion, the results of this study have revealed that imaging technique could be used as an effective method to classify coffee bean species. ANN is the more preferred method over KNN in classifying coffee beans.
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