An Incremental Learning Method for Preserving World Coffee Aromas by Using an Electronic Nose and Accumulated Specialty Coffee Datasets

I-Te Chen;Chien-Chang Chen;Hong-Jie Dai;Babam Rianto;Si-Kai Huang;Chung-Hong Lee
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Abstract

Specialty coffee beans have a unique aroma and flavor. The aromas of coffee in the world are affected by several issues, including growing area, climate, postharvest processing (such as dry and wet methods), roasting treatment, etc. These issues significantly contribute to the development of coffee-bean aromas. Since humans have a limited ability to recognize the aroma of coffee, we need a reliable system to resolve the method of characterizing the world's coffee aroma. Therefore, in this article, we proposed an incremental learning method for digitizing the complexity of coffee aromas using an electronic nose (E-nose) system. We also developed a method to create coffee-aroma fingerprints to represent their aromatic features among different coffees. In our experiments, the incremental learning model achieved high accuracy, proving the authenticity of recognizing various world specialty coffee aromas. The approach leverages an E-nose system and coffee-aroma datasets to preserve specialty coffee aromas around the world. In addition, the ultimate goal of this method is to build a scalable database of various coffee aromas while improving the accuracy of system recognition.
利用电子鼻和积累的特种咖啡数据集保存世界咖啡香气的渐进式学习方法
特种咖啡豆具有独特的香气和风味。世界上咖啡的香气受多个问题的影响,包括种植地区、气候、收获后处理(如干法和湿法)、烘焙处理等。这些问题对咖啡豆香气的形成有重要影响。由于人类识别咖啡香气的能力有限,我们需要一个可靠的系统来解决表征世界咖啡香气的方法问题。因此,我们在本文中提出了一种增量学习方法,利用电子鼻(E-nose)系统将复杂的咖啡香气数字化。我们还开发了一种创建咖啡香气指纹的方法,以表示不同咖啡的香气特征。在我们的实验中,增量学习模型达到了很高的准确度,证明了识别世界上各种特色咖啡香气的真实性。该方法利用电子鼻系统和咖啡香气数据集来保存世界各地的特色咖啡香气。此外,该方法的最终目标是建立一个可扩展的各种咖啡香气数据库,同时提高系统识别的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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