Datasets:
FoodieQA: A Multimodal Dataset for Fine-Grained Understanding of Chinese Food Culture
Github Repo
๐ We release all tools and code used to create the dataset at https://github.com/lyan62/FoodieQA.
Paper
For more details about the dataset, please refer to ๐ FoodieQA: A Multimodal Dataset for Fine-Grained Understanding of Chinese Food Culture
Dataset Download
!!Note!! The Json files are in the FoodieQA.zip (click on the Files and Versions tab to download), or download the dataset directly with git clone.
Terms and Conditions for Data Usage
By downloading and using the data, you acknowledge that you have read, understood, and agreed to the following terms and conditions.
Research Purpose: The data is provided solely for research purposes and must not be used for any commercial activities.
Evaluation Only: The data may only be used for evaluation purposes and not for training models or systems.
Compliance: Users must comply with all applicable laws and regulations when using the data.
Attribution: Proper attribution must be given in any publications or presentations resulting from the use of this data.
License: The data is released under the CC BY-NC-ND 4.0 license. Users must adhere to the terms of this license.
Data Structure
/images
: contains all images needed for multi-image VQA and single-image VQA task.mivqa_tidy.json
questions for Multi-image VQA task.- data format
{ "question": "ๅชไธ้่้ๅๅๆฌขๅ่ ็ไบบ๏ผ", "choices": "", "answer": "0", "question_type": "ingredients", "question_id": qid, "ann_group": "้ฝ", "images": [ img1_path, img2_path, img3_path, img4_path ], "question_en": "Which dish is for people who like intestine?" }
- data format
sivqa_tidy.json
question for Single-image VQA task.- data format
{ "question": "ๅพ็ไธญ็้ฃ็ฉๆฏๅชไธชๅฐๅบ็็น่ฒ็พ้ฃ?", "choices": [ ... ], "answer": "3", "question_type": "region-2", "food_name": "ๆข ่ๆฃ่", "question_id": "vqa-34", "food_meta": { "main_ingredient": [ "่" ], "id": 253, "food_name": "ๆข ่ๆฃ่", "food_type": "ๅฎขๅฎถ่", "food_location": "้ค้ฆ", "food_file": img_path }, "question_en": translated_question, "choices_en": [ translated_choices1, ... ] }
- data format
textqa_tidy.json
- data format
{ "question": "้ ้ ฟๅๅญๅฑไบๅชไธช่็ณป?", "choices": [ ... ], "answer": "1", "question_type": "cuisine_type", "food_name": "้ ้ ฟๅๅญ", "cuisine_type": "่่", "question_id": "textqa-101" },
- data format
Models and results for the VQA tasks
Evaluation | Multi-image VQA (ZH) | Multi-image VQA (EN) | Single-image VQA (ZH) | Single-image VQA (EN) |
---|---|---|---|---|
Human | 91.69 | 77.22โ | 74.41 | 46.53โ |
Phi-3-vision-4.2B | 29.03 | 33.75 | 42.58 | 44.53 |
Idefics2-8B | 50.87 | 41.69 | 46.87 | 52.73 |
Mantis-8B | 46.65 | 43.67 | 41.80 | 47.66 |
Qwen-VL-12B | 32.26 | 27.54 | 48.83 | 42.97 |
Yi-VL-6B | - | - | 49.61 | 41.41 |
Yi-VL-34B | - | - | 52.73 | 48.05 |
GPT-4V | 78.92 | 69.23 | 63.67 | 60.16 |
GPT-4o | 86.35 | 80.64 | 72.66 | 67.97 |
Models and results for the TextQA task
Model | Best Accuracy | Prompt |
---|---|---|
Phi-3-medium | 41.28 | 1 |
Mistral-7B-instruct | 35.18 | 1 |
Llama3-8B-Chinese | 47.38 | 1 |
YI-6B | 25.53 | 3 |
YI-34B | 46.38 | 3 |
Qwen2-7B-instruct | 68.23 | 3 |
GPT-4 | 60.99 | 1 |
BibTeX Citation
@article{li2024foodieqa,
title={FoodieQA: A Multimodal Dataset for Fine-Grained Understanding of Chinese Food Culture},
author={Li, Wenyan and Zhang, Xinyu and Li, Jiaang and Peng, Qiwei and Tang, Raphael and Zhou, Li and Zhang, Weijia and Hu, Guimin and Yuan, Yifei and S{\o}gaard, Anders and others},
journal={arXiv preprint arXiv:2406.11030},
year={2024}
}
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