From canteen food to daily meals: generalizing food recognition to more practical scenarios

The precise recognition of food categories plays a pivotal role for intelligent health management, attracting significant research attention in recent years. Prominent benchmarks, such as Food-101 and VIREO Food-172, provide abundant food image resources that catalyze the prosperity of research in t...

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Main Authors: LIU, Guoshan, JIAO, Yang, CHEN, Jingjing, ZHU, Bin, JIANG, Yu-Gang
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Language:English
Published: Institutional Knowledge at Singapore Management University 2024
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Online Access:https://ink.library.smu.edu.sg/sis_research/9011
https://ink.library.smu.edu.sg/context/sis_research/article/10014/viewcontent/zhu_tmm24.pdf
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Institution: Singapore Management University
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spelling sg-smu-ink.sis_research-100142024-07-25T08:13:17Z From canteen food to daily meals: generalizing food recognition to more practical scenarios LIU, Guoshan JIAO, Yang CHEN, Jingjing ZHU, Bin JIANG, Yu-Gang The precise recognition of food categories plays a pivotal role for intelligent health management, attracting significant research attention in recent years. Prominent benchmarks, such as Food-101 and VIREO Food-172, provide abundant food image resources that catalyze the prosperity of research in this field. Nevertheless, these datasets are well-curated from canteen scenarios and thus deviate from food appearances in daily life. This discrepancy poses great challenges in effectively transferring classifiers trained on these canteen datasets to broader daily-life scenarios encountered by humans. Toward this end, we present two new benchmarks, namely DailyFood-172 and DailyFood-16, specifically designed to curate food images from everyday meals. These two datasets are used to evaluate the transferability of approaches from the well-curated food image domain to the everyday-life food image domain. In addition, we also propose a simple yet effective baseline method named Multi-Cluster Reference Learning (MCRL) to tackle the aforementioned domain gap. MCRL is motivated by the observation that food images in daily-life scenarios exhibit greater intra-class appearance variance compared with those in well-curated benchmarks. Notably, MCRL can be seamlessly coupled with existing approaches, yielding non-trivial performance enhancements. We hope our new benchmarks can inspire the community to explore the transferability of food recognition models trained on well-curated datasets toward practical real-life applications. 2024-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/9011 info:doi/10.1109/TMM.2024.3371212 https://ink.library.smu.edu.sg/context/sis_research/article/10014/viewcontent/zhu_tmm24.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Food datasets Food recognition Unsupervised Domain Adaptation Graphics and Human Computer Interfaces
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Food datasets
Food recognition
Unsupervised Domain Adaptation
Graphics and Human Computer Interfaces
spellingShingle Food datasets
Food recognition
Unsupervised Domain Adaptation
Graphics and Human Computer Interfaces
LIU, Guoshan
JIAO, Yang
CHEN, Jingjing
ZHU, Bin
JIANG, Yu-Gang
From canteen food to daily meals: generalizing food recognition to more practical scenarios
description The precise recognition of food categories plays a pivotal role for intelligent health management, attracting significant research attention in recent years. Prominent benchmarks, such as Food-101 and VIREO Food-172, provide abundant food image resources that catalyze the prosperity of research in this field. Nevertheless, these datasets are well-curated from canteen scenarios and thus deviate from food appearances in daily life. This discrepancy poses great challenges in effectively transferring classifiers trained on these canteen datasets to broader daily-life scenarios encountered by humans. Toward this end, we present two new benchmarks, namely DailyFood-172 and DailyFood-16, specifically designed to curate food images from everyday meals. These two datasets are used to evaluate the transferability of approaches from the well-curated food image domain to the everyday-life food image domain. In addition, we also propose a simple yet effective baseline method named Multi-Cluster Reference Learning (MCRL) to tackle the aforementioned domain gap. MCRL is motivated by the observation that food images in daily-life scenarios exhibit greater intra-class appearance variance compared with those in well-curated benchmarks. Notably, MCRL can be seamlessly coupled with existing approaches, yielding non-trivial performance enhancements. We hope our new benchmarks can inspire the community to explore the transferability of food recognition models trained on well-curated datasets toward practical real-life applications.
format text
author LIU, Guoshan
JIAO, Yang
CHEN, Jingjing
ZHU, Bin
JIANG, Yu-Gang
author_facet LIU, Guoshan
JIAO, Yang
CHEN, Jingjing
ZHU, Bin
JIANG, Yu-Gang
author_sort LIU, Guoshan
title From canteen food to daily meals: generalizing food recognition to more practical scenarios
title_short From canteen food to daily meals: generalizing food recognition to more practical scenarios
title_full From canteen food to daily meals: generalizing food recognition to more practical scenarios
title_fullStr From canteen food to daily meals: generalizing food recognition to more practical scenarios
title_full_unstemmed From canteen food to daily meals: generalizing food recognition to more practical scenarios
title_sort from canteen food to daily meals: generalizing food recognition to more practical scenarios
publisher Institutional Knowledge at Singapore Management University
publishDate 2024
url https://ink.library.smu.edu.sg/sis_research/9011
https://ink.library.smu.edu.sg/context/sis_research/article/10014/viewcontent/zhu_tmm24.pdf
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