Saved in:
Bibliographic Details
Main Authors: Tai, Chi-en Amy, Keller, Matthew, Nair, Saeejith, Chen, Yuhao, Wu, Yifan, Markham, Olivia, Parmar, Krish, Xi, Pengcheng, Keller, Heather, Kirkpatrick, Sharon, Wong, Alexander
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2309.07704
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916376013176832
author Tai, Chi-en Amy
Keller, Matthew
Nair, Saeejith
Chen, Yuhao
Wu, Yifan
Markham, Olivia
Parmar, Krish
Xi, Pengcheng
Keller, Heather
Kirkpatrick, Sharon
Wong, Alexander
author_facet Tai, Chi-en Amy
Keller, Matthew
Nair, Saeejith
Chen, Yuhao
Wu, Yifan
Markham, Olivia
Parmar, Krish
Xi, Pengcheng
Keller, Heather
Kirkpatrick, Sharon
Wong, Alexander
contents 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 multimodal annotations (including depth images, instance masks, and semantic masks). Additionally, we collect a real image dataset, NutritionVerse-Real, containing 889 images of 251 dishes to evaluate realism. Leveraging these novel datasets, we develop and benchmark NutritionVerse, an empirical study of various dietary intake estimation approaches, including indirect segmentation-based and direct prediction networks. We further fine-tune models pretrained on synthetic data with real images to provide insights into the fusion of synthetic and real data. Finally, we release both datasets (NutritionVerse-Synth, NutritionVerse-Real) on https://www.kaggle.com/nutritionverse/datasets as part of an open initiative to accelerate machine learning for dietary sensing.
format Preprint
id arxiv_https___arxiv_org_abs_2309_07704
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle NutritionVerse: Empirical Study of Various Dietary Intake Estimation Approaches
Tai, Chi-en Amy
Keller, Matthew
Nair, Saeejith
Chen, Yuhao
Wu, Yifan
Markham, Olivia
Parmar, Krish
Xi, Pengcheng
Keller, Heather
Kirkpatrick, Sharon
Wong, Alexander
Computer Vision and Pattern Recognition
Artificial Intelligence
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 multimodal annotations (including depth images, instance masks, and semantic masks). Additionally, we collect a real image dataset, NutritionVerse-Real, containing 889 images of 251 dishes to evaluate realism. Leveraging these novel datasets, we develop and benchmark NutritionVerse, an empirical study of various dietary intake estimation approaches, including indirect segmentation-based and direct prediction networks. We further fine-tune models pretrained on synthetic data with real images to provide insights into the fusion of synthetic and real data. Finally, we release both datasets (NutritionVerse-Synth, NutritionVerse-Real) on https://www.kaggle.com/nutritionverse/datasets as part of an open initiative to accelerate machine learning for dietary sensing.
title NutritionVerse: Empirical Study of Various Dietary Intake Estimation Approaches
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2309.07704