基于k近邻和人工神经网络的樱桃咖啡分类

S. Anita, Albarda
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引用次数: 6

摘要

咖啡的品质由种植时的60%、烘焙时的30%和冲泡时的10%决定。本研究更深入地探讨了用干燥法分选咖啡樱桃的过程。有可能解决这种咖啡樱桃水果分类问题的技术是图像处理,这是因为目前的传统方法是使用人眼和手进行分类。这种分选过程旨在分离优质水果(红色、半红色、破碎红色、棕色)。(黑色、半黑色、橙色、黄色和绿色)劣质水果(斑点、发霉、有一个洞和多个洞)和咖啡樱桃(圆形、椭圆形、破碎、完美)。本研究的目的是开发一种更快、更准确的咖啡樱桃分选机技术,以取代传统的咖啡樱桃分选工艺。使用GLCM(灰度共生矩阵)算法进行特征提取,并使用KNN (k-最近邻)和ANN(人工神经网络)分类算法将咖啡樱桃分为成熟的,未煮熟的,生的和损坏的樱桃。newrb。研究结果表明,人工神经网络的准确率为24.41%,使用KNN方法的准确率为72.12%。通过仿真,可以在356.02秒或相当于6分钟的时间内完成数量为1885的咖啡樱桃分类过程。作者确定了咖啡樱桃的指标:果皮颜色(红色、半红色、裂红色、棕色、黑色、半黑色、橙色、黄色和绿色)、樱桃形状(圆形、椭圆形、破碎、完美)和樱桃果皮缺陷(斑点、发霉、有一个孔和多个孔)。希望本研究的结果可以为发展更先进的民族咖啡产业提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification Cherry’s Coffee using k-Nearest Neighbor (KNN) and Artificial Neural Network (ANN)
The quality of coffee is determined from 60% when planted, 30% when roasted and 10% when brewed. This research examines more deeply the process of sorting the coffee cherries using the dry method. The technology that is possible to solve this coffee cherry fruit sorting problem is image processing, this is seen because the current conventional method uses human eyes and hands in sorting. This sorting process aims to separate superior fruit (red, half red, broken red, brown)., black, half black, orange, yellow, and green) of inferior fruit (spotted, moldy, with 1 hole, and more than 1 hole) and coffee cherries (round, oval, broken, perfect).The purpose of this study was to develop a coffee cherry sorting machine technology with faster and more accurate results so that it could replace the conventional coffee cherry sorting process. The coffee cherries are categorized into ripe, undercooked, raw, and damaged cherries using the GLCM (Gray-Level Co-Occurrence Matrix) algorithm for feature extraction and the KNN (k-Nearest Neighbor) and ANN (Artificial Neural Network) classification algorithm. newrb. The success obtained from this research is ANN accuracy of 24.41% and using the KNN method of 72.12%. With the simulation carried out, the coffee cherries classification process with an amount of 1,885 can be carried out in a total time of 356.02 seconds or the equivalent of 6 minutes. Author identifies indicators of coffee cherries as skin color (red, half red, cracked red, brown, black, half black, orange, yellow, and green), cherri shape (round, oval, broken, perfect), and cherries skin defects (speckled -button, moldy, with 1 hole, and more than 1 hole). It is hoped that the results of this study can serve as a consideration for developing a more advanced national coffee industry.
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