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Hauptverfasser: Tai, Chi-en Amy, Nair, Saeejith, Markham, Olivia, Keller, Matthew, Wu, Yifan, Chen, Yuhao, Wong, Alexander
Format: Preprint
Veröffentlicht: 2023
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Online-Zugang:https://arxiv.org/abs/2401.08598
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author Tai, Chi-en Amy
Nair, Saeejith
Markham, Olivia
Keller, Matthew
Wu, Yifan
Chen, Yuhao
Wong, Alexander
author_facet Tai, Chi-en Amy
Nair, Saeejith
Markham, Olivia
Keller, Matthew
Wu, Yifan
Chen, Yuhao
Wong, Alexander
contents Dietary intake estimation plays a crucial role in understanding the nutritional habits of individuals and populations, aiding in the prevention and management of diet-related health issues. Accurate estimation requires comprehensive datasets of food scenes, including images, segmentation masks, and accompanying dietary intake metadata. In this paper, we introduce NutritionVerse-Real, an open access manually collected 2D food scene dataset for dietary intake estimation with 889 images of 251 distinct dishes and 45 unique food types. The NutritionVerse-Real dataset was created by manually collecting images of food scenes in real life, measuring the weight of every ingredient and computing the associated dietary content of each dish using the ingredient weights and nutritional information from the food packaging or the Canada Nutrient File. Segmentation masks were then generated through human labelling of the images. We provide further analysis on the data diversity to highlight potential biases when using this data to develop models for dietary intake estimation. NutritionVerse-Real is publicly available at https://www.kaggle.com/datasets/nutritionverse/nutritionverse-real as part of an open initiative to accelerate machine learning for dietary sensing.
format Preprint
id arxiv_https___arxiv_org_abs_2401_08598
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle NutritionVerse-Real: An Open Access Manually Collected 2D Food Scene Dataset for Dietary Intake Estimation
Tai, Chi-en Amy
Nair, Saeejith
Markham, Olivia
Keller, Matthew
Wu, Yifan
Chen, Yuhao
Wong, Alexander
Computer Vision and Pattern Recognition
Dietary intake estimation plays a crucial role in understanding the nutritional habits of individuals and populations, aiding in the prevention and management of diet-related health issues. Accurate estimation requires comprehensive datasets of food scenes, including images, segmentation masks, and accompanying dietary intake metadata. In this paper, we introduce NutritionVerse-Real, an open access manually collected 2D food scene dataset for dietary intake estimation with 889 images of 251 distinct dishes and 45 unique food types. The NutritionVerse-Real dataset was created by manually collecting images of food scenes in real life, measuring the weight of every ingredient and computing the associated dietary content of each dish using the ingredient weights and nutritional information from the food packaging or the Canada Nutrient File. Segmentation masks were then generated through human labelling of the images. We provide further analysis on the data diversity to highlight potential biases when using this data to develop models for dietary intake estimation. NutritionVerse-Real is publicly available at https://www.kaggle.com/datasets/nutritionverse/nutritionverse-real as part of an open initiative to accelerate machine learning for dietary sensing.
title NutritionVerse-Real: An Open Access Manually Collected 2D Food Scene Dataset for Dietary Intake Estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.08598