Feasibility of identifying eating moments from first-person images leveraging human computation

Edison Thomaz, Aman Parnami, Irfan Essa, G. Abowd
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引用次数: 71

Abstract

There is widespread agreement in the medical research community that more effective mechanisms for dietary assessment and food journaling are needed to fight back against obesity and other nutrition-related diseases. However, it is presently not possible to automatically capture and objectively assess an individual's eating behavior. Currently used dietary assessment and journaling approaches have several limitations; they pose a significant burden on individuals and are often not detailed or accurate enough. In this paper, we describe an approach where we leverage human computation to identify eating moments in first-person point-of-view images taken with wearable cameras. Recognizing eating moments is a key first step both in terms of automating dietary assessment and building systems that help individuals reflect on their diet. In a feasibility study with 5 participants over 3 days, where 17,575 images were collected in total, our method was able to recognize eating moments with 89.68% accuracy.
利用人类计算能力从第一人称图像中识别进食时刻的可行性
医学研究界普遍认为,需要更有效的饮食评估和食物记录机制来对抗肥胖和其他与营养有关的疾病。然而,目前还不可能自动捕捉和客观评估一个人的饮食行为。目前使用的饮食评估和日志方法有一些局限性;它们给个人带来了沉重的负担,而且往往不够详细或准确。在本文中,我们描述了一种利用人类计算来识别用可穿戴相机拍摄的第一人称视角图像中的进食时刻的方法。无论是在自动化饮食评估方面,还是在建立帮助个人反思饮食的系统方面,识别进食时刻都是关键的第一步。在为期3天的5人可行性研究中,共收集了17575张图像,我们的方法能够识别进食时刻,准确率为89.68%。
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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