命名实体识别和光学字符识别检测清真食品成分:印度尼西亚案例研究

D. Khairani, Dwi Adi Bangkit, N. Rozi, S. Masruroh, S. Oktaviana, Tabah Rosyadi
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引用次数: 0

摘要

本研究提供了使用OCR和NER技术读取和识别包装产品上列出的成分实体的解决方案。本研究的目的是指导穆斯林消费者识别消费者产品的成分,我们在NER中定义了三个食品类别实体:Halal, Haram, Syubhat(可疑)。动机是为了满足穆斯林对清真产品的需求,清真保证应该支持。由于消费者更容易接触到各种进口产品,希望消费者可以自由选择自己喜欢的消费产品,包括进口产品,同时保持清真保证。我们提出的系统使用OCR来扫描包装产品上列出的成分,并使用训练好的NER模型进行处理;对模型的评价得到F-Score值为0.967,在系统测试中,通过对24种包装产品的测试,得到的OCR准确率值为90%,NER模型的准确率为90%。食物的读数为84%。
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Named-Entity Recognition and Optical Character Recognition for Detecting Halal Food Ingredients: Indonesian Case Study
This study offers solutions using OCR and NER technology to read and recognize the compositional entities listed on packaged product. The purpose of this study is to guide Muslim consumers identifying ingredients of a consumers products, we define three food category entities in NER: Halal, Haram, Syubhat (doubtful). The motivation is to meet the needs of a Muslim for halal products that halal guarantees should support. Because consumers have easier access to various imported products, it is hoped that consumers can freely choose the consumption products they like, including imported ones, while maintaining the halal guarantee. Our proposed system is built using OCR to scan the composition listed on packaged products and processed with the trained NER Model; the evaluation of the model gets an F-Score value of 0.967, and in system testing, by testing 24 packaged products, it produces an OCR accuracy value of 90% and the accuracy of the NER model. for a food reading of 84%.
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