A review on vision-based analysis for automatic dietary assessment
Wei Wang, Weiqing Min, Tianhao Li, Xiaoxiao Dong, Haisheng Li and, Shuqiang Jiang

TL;DR
This review discusses recent advances in vision-based dietary assessment using AI, highlighting architectures, datasets, challenges, and future directions to improve automatic food intake monitoring.
Contribution
It provides a comprehensive overview of VBDA architectures, datasets, and identifies key challenges and future trends in AI-driven dietary assessment.
Findings
Multi-task end-to-end deep learning is a key trend.
Challenges include meal complexity and dataset limitations.
Future directions involve fine-grained analysis and volume estimation improvements.
Abstract
Background: Maintaining a healthy diet is vital to avoid health-related issues, e.g., undernutrition, obesity and many non-communicable diseases. An indispensable part of the health diet is dietary assessment. Traditional manual recording methods are not only burdensome but time-consuming, and contain substantial biases and errors. Recent advances in Artificial Intelligence (AI), especially computer vision technologies, have made it possible to develop automatic dietary assessment solutions, which are more convenient, less time-consuming and even more accurate to monitor daily food intake. Scope and approach: This review presents Vision-Based Dietary Assessment (VBDA) architectures, including multi-stage architecture and end-to-end one. The multi-stage dietary assessment generally consists of three stages: food image analysis, volume estimation and nutrient derivation. The prosperity of…
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