Multiclass classification of Ethiopian coffee bean using deep learning

Getabalew Amtate, Dereje Teferi
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Abstract

Ethiopia is the homeland of Coffee Arabica. Coffee is the major export commodity and a high-income source of foreign currency for the country. In addition to this, coffee has a great role in social interaction between people and is also a source of income for the coffee-producing farmers. Several types of coffee beans grow in Ethiopia. These beans are distinct from each other in terms of quality, color, shape etc. based on their geographical origins. Classification of these coffee beans are based on growing origin, altitude, bean shape and color, preparation method and others. However, the quality of the coffee beans is determined by visual inspection, which is subjective, laborious, and prone to error. This creates the necessity for the development of an automatic method that is precise, non-destructive and objective. Thus, this research aims to develop a model that classifies coffee beans of six different origins of Ethiopia (Jimma, Limmu, Nekemte, Yirgacheffe, Bebeka, and Sidama) in to nine classes. The dataset for this research is collected from the Ethiopian Coffee Quality Inspection and Auction Center (ecqiac). This research followed design science research (dsr) to investigate the problem. Image processing and the state-of-the-art deep-learning techniques were employed to automatically classify coffee bean images into nine different classes grown in six different regions of Ethiopia. A total of 8646 coffee bean images were collected and 1190 images were added using augmentation to make the total dataset 9836. The model is trained and tested by tuning the hyper-parameters of the cnn algorithm. When 80% of the dataset is used for training, 10% for validation, and the remaining 10% for testing, the proposed model achieved a 99.89% overall classification accuracy with 0.92% generalization log-loss. In conclusion, the result of this research shows that deep learning is an effective technique for classification of Ethiopian coffee beans and can be implemented in the coffee industry.
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埃塞俄比亚咖啡豆的深度学习多类分类
埃塞俄比亚是阿拉比卡咖啡的故乡。咖啡是主要的出口商品,也是该国高收入的外汇来源。除此之外,咖啡在人与人之间的社会交往中起着很大的作用,也是咖啡种植者的收入来源。埃塞俄比亚有好几种咖啡豆。根据产地的不同,这些豆子在品质、颜色、形状等方面都各不相同。这些咖啡豆的分类是基于生长产地,海拔,豆的形状和颜色,制备方法等。然而,咖啡豆的质量是通过目测来确定的,这是主观的,费力的,而且容易出错。这就需要开发一种精确、非破坏性和客观的自动方法。因此,本研究旨在开发一个模型,将埃塞俄比亚六个不同产地的咖啡豆(Jimma, Limmu, Nekemte, Yirgacheffe, Bebeka和Sidama)分为九个类。本研究的数据集来自埃塞俄比亚咖啡质量检验和拍卖中心(ecqiac)。本研究采用设计科学研究(dsr)对该问题进行调查。采用图像处理和最先进的深度学习技术,将埃塞俄比亚六个不同地区种植的咖啡豆图像自动分为九个不同的类别。共收集了8646张咖啡豆图像,并利用增强技术添加了1190张图像,使总数据集9836。通过调整cnn算法的超参数对模型进行训练和测试。当80%的数据集用于训练,10%用于验证,剩余10%用于测试时,所提出的模型实现了99.89%的总体分类精度和0.92%的泛化对数损失。总之,本研究的结果表明,深度学习是一种有效的埃塞俄比亚咖啡豆分类技术,可以在咖啡行业中实施。
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