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A feasibility cachaca type recognition using computer vision and pattern recognition

机译:利用计算机视觉和模式识别进行可行性查卡卡类型识别

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Brazilian rum (also known as cachaca) is the third most commonly consumed distilled alcoholic drink in the world, with approximately 2.5 billion liters produced each year. It is a traditional drink with refined features and a delicate aroma that is produced mainly in Brazil but consumed in many countries. It can be aged in various types of wood for 1-3 years, which adds aroma and a distinctive flavor with different characteristics that affect the price. A research challenge is to develop a cheap automatic recognition system that inspects the finished product for the wood type and the aging time of its production. Some classical methods use chemical analysis, but this approach requires relatively expensive laboratory equipment. By contrast, the system proposed in this paper captures image signals from samples and uses an intelligent classification technique to recognize the wood type and the aging time. The classification system uses an ensemble of classifiers obtained from different wavelet decompositions. Each classifier is obtained with different wavelet transform settings. We compared the proposed approach with classical methods based on chemical features. We analyzed 105 samples that had been aged for 3 years and we showed that the proposed solution could automatically recognize wood types and the aging time with an accuracy up to 100.00% and 85.71% respectively, and our method is also cheaper. (C) 2016 Elsevier B.V. All rights reserved.
机译:巴西朗姆酒(也称为卡卡卡酒)是世界上第三大最常用的蒸馏酒精饮料,每年生产约25亿升。它是一种传统酒,具有精致的功能和淡淡的香气,主要在巴西生产,但在许多国家都消费。它可以在各种类型的木材中老化1-3年,从而增加香气和独特风味,并具有影响价格的不同特征。研究的挑战是开发一种廉价的自动识别系统,该系统可以检查成品的木材类型及其生产的老化时间。一些经典方法使用化学分析,但是这种方法需要相对昂贵的实验室设备。相比之下,本文提出的系统从样本中捕获图像信号,并使用智能分类技术来识别木材类型和老化时间。分类系统使用从不同小波分解中获得的一组分类器。使用不同的小波变换设置获得每个分类器。我们将提出的方法与基于化学特征的经典方法进行了比较。我们分析了105个已老化3年的样品,结果表明,该解决方案可以自动识别木材类型和老化时间,准确度分别高达100.00%和85.71%,而且我们的方法也更便宜。 (C)2016 Elsevier B.V.保留所有权利。

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