CVJul 1, 2021

Egocentric Image Captioning for Privacy-Preserved Passive Dietary Intake Monitoring

arXiv:2107.00372v225 citations
AI Analysis

This work addresses privacy concerns in dietary monitoring for nutritionists and subjects, but it is incremental as it applies existing image captioning techniques to a new domain.

The paper tackles the problem of passive dietary intake monitoring by proposing an egocentric image captioning method that converts images into text descriptions, enabling nutritionists to assess dietary intake without viewing original images, and reports results from experiments on a new dataset captured in Ghana.

Camera-based passive dietary intake monitoring is able to continuously capture the eating episodes of a subject, recording rich visual information, such as the type and volume of food being consumed, as well as the eating behaviours of the subject. However, there currently is no method that is able to incorporate these visual clues and provide a comprehensive context of dietary intake from passive recording (e.g., is the subject sharing food with others, what food the subject is eating, and how much food is left in the bowl). On the other hand, privacy is a major concern while egocentric wearable cameras are used for capturing. In this paper, we propose a privacy-preserved secure solution (i.e., egocentric image captioning) for dietary assessment with passive monitoring, which unifies food recognition, volume estimation, and scene understanding. By converting images into rich text descriptions, nutritionists can assess individual dietary intake based on the captions instead of the original images, reducing the risk of privacy leakage from images. To this end, an egocentric dietary image captioning dataset has been built, which consists of in-the-wild images captured by head-worn and chest-worn cameras in field studies in Ghana. A novel transformer-based architecture is designed to caption egocentric dietary images. Comprehensive experiments have been conducted to evaluate the effectiveness and to justify the design of the proposed architecture for egocentric dietary image captioning. To the best of our knowledge, this is the first work that applies image captioning for dietary intake assessment in real life settings.

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