Smart Conveyor Belt Sushi Bill Payment with a Mobile Shot

Rangrak Maitriboriruks, Patchariya Piya-Aromrat, Y. Limpiyakorn
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Abstract

Organization must automate wherever and whenever they can, particularly during today's global changes in daily lifestyles. Trends regarding the use of technology, especially AI has emerged as a key enabler for disruptive innovation. This paper thus presents the application programming interface of object detector implemented with YOLOv4 and OpenCV for classifying the prices of sushi plates distinguished by colors. The object detector is part of the smart cross-platform mobile application to facilitate billing process for conveyor belt sushi business. The frontend is developed with Flutter to build single codebase for UIs. To handle the variants of image colors resulting from the use of different mobile cameras, color transfer is used for transferring the image dataset colors to images captured by users. Microservices architecture is adopted for the backend. Orchestration of YOLOv4, OpenCV and Spring Boot REST API will create APIs to calculate food cost, generate QR code for bill payment, and maintain customer membership benefits. The constructed object detection model achieved the precision of 97%, recall of 97%, F1-score of 97% and mAP of 97.3%. The smart billing system presented in this work would accelerate the workflow, increase productivity, reduce waste and drive moving for contactless society.
智能传送带寿司账单支付与移动拍摄
组织必须随时随地实现自动化,特别是在当今日常生活方式的全球变化中。技术使用的趋势,尤其是人工智能,已经成为颠覆性创新的关键推动者。因此,本文给出了用YOLOv4和OpenCV实现的目标检测器的应用编程接口,用于根据颜色区分寿司盘的价格分类。目标检测器是智能跨平台移动应用程序的一部分,用于简化传送带寿司业务的计费流程。前端是用Flutter开发的,为ui构建单一的代码库。为了处理由于使用不同的移动相机而导致的图像颜色的变化,使用颜色转移将图像数据集的颜色转移到用户捕获的图像中。后端采用微服务架构。YOLOv4, OpenCV和Spring Boot REST API的编排将创建API来计算食品成本,生成账单支付的QR码,并维护客户会员权益。所构建的目标检测模型准确率为97%,召回率为97%,F1-score为97%,mAP为97.3%。这项工作中提出的智能计费系统将加速工作流程,提高生产力,减少浪费并推动非接触式社会的发展。
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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