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FoodieQA: A Multimodal Dataset for Fine-Grained Understanding of Chinese Food Culture

FoodieQA, a fine-grained image-text dataset, evaluates vision-language models and LLMs on regional food culture across China, revealing significant challenges in multi-image VQA.

Year
2024
Venue
arXiv 2024
Authors
12
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arxiv.org/abs/2406.11030v2ARXIV-DEFAULT
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Abstract

Food is a rich and varied dimension of cultural heritage, crucial to both individuals and social groups. To bridge the gap in the literature on the often-overlooked regional diversity in this domain, we introduce FoodieQA, a manually curated, fine-grained image-text dataset capturing the intricate features of food cultures across various regions in China. We evaluate vision-language Models (VLMs) and large language models (LLMs) on newly collected, unseen food images and corresponding questions. FoodieQA comprises three multiple-choice question-answering tasks where models need to answer questions based on multiple images, a single image, and text-only descriptions, respectively. While LLMs excel at text-based question answering, surpassing human accuracy, the open-sourced VLMs still fall short by 41% on multi-image and 21% on single-image VQA tasks, although closed-weights models perform closer to human levels (within 10%). Our findings highlight that understanding food and its cultural implications remains a challenging and under-explored direction.

Authors

12