基于自监督学习的自我中心图像聚类被动饮食监测

Jiachuan Peng, Peilun Shi, Jianing Qiu, Xinwei Ju, F. P. Lo, Xiao Gu, Wenyan Jia, T. Baranowski, M. Steiner-Asiedu, A. Anderson, M. McCrory, E. Sazonov, M. Sun, G. Frost, Benny P. L. Lo
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引用次数: 3

摘要

在我们最近在加纳进行的被动饮食监测的饮食评估实地研究中,我们收集了超过25万张野外图像。该数据集是一项正在进行的工作,目的是利用被动监测相机技术,促进对低收入和中等收入国家个人食物和营养摄入量的准确测量。目前的数据集涉及来自加纳农村和城市地区的20个家庭(74名受试者),研究中使用了两种不同类型的可穿戴相机。一旦启动,可穿戴相机就会持续捕捉受试者的活动,这些活动会产生大量数据,需要在进行分析之前进行清理和注释。为了简化数据后处理和注释任务,我们提出了一种新的自监督学习框架,将大量以自我为中心的图像聚类到单独的事件中。每个事件都由一系列时间上连续且上下文相似的图像组成。通过将图像聚类到单独的事件中,注释者和营养师可以更有效地检查和分析数据,并促进后续的饮食评估过程。在一个带有地面真值标签的测试集上验证,所提出的框架在聚类质量和分类精度方面优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Egocentric Images in Passive Dietary Monitoring with Self-Supervised Learning
In our recent dietary assessment field studies on passive dietary monitoring in Ghana, we have collected over 250k in-the-wild images. The dataset is an ongoing effort to facilitate accurate measurement of individual food and nutrient intake in low and middle income countries with passive monitoring camera technologies. The current dataset involves 20 households (74 subjects) from both the rural and urban regions of Ghana, and two different types of wearable cameras were used in the studies. Once initiated, wearable cameras continuously capture subjects' activities, which yield massive amounts of data to be cleaned and annotated before analysis is conducted. To ease the data post-processing and annotation tasks, we propose a novel self-supervised learning framework to cluster the large volume of egocentric images into separate events. Each event consists of a sequence of temporally continuous and contextually similar images. By clustering images into separate events, annotators and dietitians can examine and analyze the data more efficiently and facilitate the subsequent dietary assessment processes. Validated on a held-out test set with ground truth labels, the proposed framework outperforms baselines in terms of clustering quality and classification accuracy.
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