NutritionVerse: Empirical Study of Various Dietary Intake Estimation Approaches
Chi-en Amy Tai, Matthew Keller, Saeejith Nair, Yuhao Chen, Yifan Wu,, Olivia Markham, Krish Parmar, Pengcheng Xi, Heather Keller, Sharon, Kirkpatrick, Alexander Wong

TL;DR
This paper introduces large-scale synthetic and real datasets for dietary intake estimation, benchmarks various computer vision approaches, and explores synthetic-real data fusion to improve accuracy in food image analysis.
Contribution
It provides the first comprehensive synthetic dataset with multimodal annotations and benchmarks multiple dietary estimation methods, including synthetic-real data fusion techniques.
Findings
Synthetic data improves model training and robustness.
Fine-tuning on real images enhances estimation accuracy.
Open datasets accelerate research in dietary sensing.
Abstract
Accurate dietary intake estimation is critical for informing policies and programs to support healthy eating, as malnutrition has been directly linked to decreased quality of life. However self-reporting methods such as food diaries suffer from substantial bias. Other conventional dietary assessment techniques and emerging alternative approaches such as mobile applications incur high time costs and may necessitate trained personnel. Recent work has focused on using computer vision and machine learning to automatically estimate dietary intake from food images, but the lack of comprehensive datasets with diverse viewpoints, modalities and food annotations hinders the accuracy and realism of such methods. To address this limitation, we introduce NutritionVerse-Synth, the first large-scale dataset of 84,984 photorealistic synthetic 2D food images with associated dietary information and…
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Taxonomy
TopicsNutritional Studies and Diet · Advanced Chemical Sensor Technologies · Diet and metabolism studies
