论文标题
饮食评估的移动食品识别系统
A Mobile Food Recognition System for Dietary Assessment
论文作者
论文摘要
食品识别是各种应用程序的重要任务,包括管理健康状况和帮助视力障碍者。几项食品识别研究集中在通用类型的食物或特定美食上,但是,关于中东美食的食物识别尚未得到探索。因此,在本文中,我们着重于开发一种以辅助生活目的为中东美食友好的中东美食识别申请。为了启用低延迟,高准确性食品分类系统,我们选择使用Mobilenet-V2深度学习模型。由于某些食物比其他食物更受欢迎,因此使用的中东食物数据集中每个类别的样本数量相对不平衡。为了弥补此问题,数据增强方法应用于代表性不足的类别。实验结果表明,在准确性和内存使用方面,使用Mobilenet-V2体系结构进行此任务都是有益的。随着模型在23种食品类别上达到94%的精度,开发的移动应用程序有可能通过图像为自动食品识别的视力障碍提供。
Food recognition is an important task for a variety of applications, including managing health conditions and assisting visually impaired people. Several food recognition studies have focused on generic types of food or specific cuisines, however, food recognition with respect to Middle Eastern cuisines has remained unexplored. Therefore, in this paper we focus on developing a mobile friendly, Middle Eastern cuisine focused food recognition application for assisted living purposes. In order to enable a low-latency, high-accuracy food classification system, we opted to utilize the Mobilenet-v2 deep learning model. As some of the foods are more popular than the others, the number of samples per class in the used Middle Eastern food dataset is relatively imbalanced. To compensate for this problem, data augmentation methods are applied on the underrepresented classes. Experimental results show that using Mobilenet-v2 architecture for this task is beneficial in terms of both accuracy and the memory usage. With the model achieving 94% accuracy on 23 food classes, the developed mobile application has potential to serve the visually impaired in automatic food recognition via images.