DietGlance: Dietary Monitoring and Personalized Analysis at a Glance with Knowledge-Empowered AI Assistant
- URL: http://arxiv.org/abs/2502.01317v1
- Date: Mon, 03 Feb 2025 12:46:37 GMT
- Title: DietGlance: Dietary Monitoring and Personalized Analysis at a Glance with Knowledge-Empowered AI Assistant
- Authors: Zhihan Jiang, Running Zhao, Lin Lin, Yue Yu, Handi Chen, Xinchen Zhang, Xuhai Xu, Yifang Wang, Xiaojuan Ma, Edith C. H. Ngai,
- Abstract summary: We present DietGlance, a system that automatically monitors dietary in daily routines and delivers personalized analysis from knowledge sources.
DietGlance first detects ingestive episodes from multimodal inputs using eyeglasses, capturing privacy-preserving meal images of various dishes being consumed.
Based on the inferred food items and consumed quantities from these images, DietGlance further provides nutritional analysis and personalized dietary suggestions.
- Score: 36.806619917276414
- License:
- Abstract: Growing awareness of wellness has prompted people to consider whether their dietary patterns align with their health and fitness goals. In response, researchers have introduced various wearable dietary monitoring systems and dietary assessment approaches. However, these solutions are either limited to identifying foods with simple ingredients or insufficient in providing analysis of individual dietary behaviors with domain-specific knowledge. In this paper, we present DietGlance, a system that automatically monitors dietary in daily routines and delivers personalized analysis from knowledge sources. DietGlance first detects ingestive episodes from multimodal inputs using eyeglasses, capturing privacy-preserving meal images of various dishes being consumed. Based on the inferred food items and consumed quantities from these images, DietGlance further provides nutritional analysis and personalized dietary suggestions, empowered by the retrieval augmentation generation module on a reliable nutrition library. A short-term user study (N=33) and a four-week longitudinal study (N=16) demonstrate the usability and effectiveness of DietGlance.
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