基于实例分割的中餐实时自动计费系统

Qiushi Guo, Yifan Chen, Yihang Yao, Tengteng Zhang, Jin Ma
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引用次数: 0

摘要

近年来,食品细分一直是学术界和工业界的热门话题。目前已经提出了西餐分割的解决方案,并取得了良好的效果,可以满足饮食管理和热量估算等应用的需求。受这些成果的启发,我们决定设计一个基于实例分割方法的中式食品价格自动计费系统。然而,由于食材和烹饪风格的多样性,如何对中餐进行分类仍然是一个挑战。收集到足够的图像来训练一个分割模型来检测各种潜在的中国食物是不可能的。为了克服这些问题,我们不再检测每个单一的菜肴,而是通过将一组选定的盘子与中国食物分割来重新制定任务。我们提出了一个FoodSyn模块,该模块通过裁剪UECFoodPIX中的食物部分并将其粘贴到盘子图像上来合成图像。然后将生成的图像输入到编码器-解码器网络中以分割实例进行训练。大量的实验表明,我们提出的方法在mIoU大于950/0的实际场景中表现良好。在一加9 Pro上部署时,fps超过20。论文一经录用,将发布代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Real-Time Chinese Food Auto Billing System Based on Instance Segmentation
Recently, food segmentation has been a hot topic in both academia and industry. Solutions for western food segmentation have been proposed and the performance is promising which meets the requirements in scenarios like diet managements and calorie estimation. Inspired by these achievements, we decide to design a Chinese food Price automatic billing system based on instance segmentation methods. However, how to segment Chinese food remains a challenge due to the wide variety of ingredients and cook styles. It's impossible to collect sufficient images to train a segmentation model to detect all kinds of potential Chinese food. To overcome these issues, rather than detecting each singular dish, we reformulate the task by segmenting a set of selected plates with Chinese food, we propose a FoodSyn module, which synthesis images by cropping food part in UECFoodPIX and pasting them on plates images. The generated images are then fed into encoder-decoder network to segment instances for training. Extensive experiments show that our proposed approach performs well in practical scenarios with mIoU over 950/0. The fps is over 20 when deployed on OnePlus 9 Pro. Codes will be released once the paper is accepted.
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