VinaFood21: A Novel Dataset for Evaluating Vietnamese Food Recognition

Trong-Thuan Nguyen, Thuan Q. Nguyen, D. Vo, Vien Nguyen, Ngoc Ho, Nguyen D. Vo, Kiet Van Nguyen, Khang Nguyen
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引用次数: 3

Abstract

Vietnam is such an attractive tourist destination with its stunning and pristine landscapes and its top-rated unique food and drink. Among thousands of Vietnamese dishes, foreigners and native people are interested in easy-to-eat tastes and easy-to-do recipes, along with reasonable prices, mouthwatering flavors, and popularity. Due to the diversity and almost all the dishes have significant similarities and the lack of quality Vietnamese food datasets, it is hard to implement an auto system to classify Vietnamese food, therefore, make people easier to discover Vietnamese food. This paper introduces a new Vietnamese food dataset named VinaFood21, which consists of 13,950 images corresponding to 21 dishes. We use 10,044 images for model training and 6,682 test images to classify each food in the VinaFood21 dataset and achieved an average accuracy of 74.81% when fine-tuning CNN EfficientNet-B0.
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VinaFood21:一个评估越南食物识别的新数据集
越南是一个极具吸引力的旅游目的地,拥有令人惊叹的原始景观和一流的独特食物和饮料。在成千上万的越南菜中,外国人和当地人感兴趣的是容易吃的味道和容易做的食谱,以及合理的价格、令人垂涎的味道和受欢迎的程度。由于越南食物种类繁多,几乎所有的菜肴都有明显的相似之处,而且缺乏高质量的越南食物数据集,因此很难实现对越南食物进行自动分类的系统,因此,让人们更容易发现越南食物。本文介绍了一个新的越南美食数据集VinaFood21,该数据集由21道菜对应的13950张图片组成。我们使用10044张图像进行模型训练,6682张测试图像对VinaFood21数据集中的每种食物进行分类,在对CNN EfficientNet-B0进行微调后,平均准确率达到74.81%。
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