ViTextVQA: A Large-Scale Visual Question Answering Dataset for Evaluating Vietnamese Text Comprehension in Images
ViTextVQA Dataset
Welcome to ViTextVQA (Vietnamese Text-based Visual Question Answering) dataset! This dataset is the first high-quality large-scale dataset in Vietnamese specializing in understanding text appearing in images.
Overview
ViTextVQA contains over 16,000 images and over 50,000 questions with answers. The dataset is designed to evaluate the ability of AI models to comprehend text within images and answer questions based on that understanding.
Purpose
The purpose of ViTextVQA is to provide a benchmark for evaluating the reading comprehension ability of Visual Question Answering (VQA) models in the Vietnamese language. As a developing country, Vietnam is still in need of resources and benchmarks to advance research in AI and machine learning.
Key Features
- 16,762 images
- 50,342 questions with answers
- Focus on understanding text within images
- Meticulously crafted to ensure diverse and challenging questions
Importance of ViTextVQA
Understanding text in images is crucial for many real-world applications, such as assisting visually impaired individuals, enhancing image search engines, and improving AI's understanding of multimedia content. ViTextVQA fills a crucial gap by providing a large-scale dataset tailored to the Vietnamese language.
Usage
Researchers and developers can use ViTextVQA to train and evaluate their VQA models, analyze the performance of different approaches, and contribute to advancing research in this field. The dataset is freely available for research purposes.
Contributions
Create the first high-quality large-scale dataset for text-based VQA task in Vietnamese, focusing on scene text and text appearing in the image.
Analyze the challenge of the ViTextVQA dataset by evaluating the performance of the OCR system.
Through our extensive experiments, we found that VQA models using ViT5 as their backbone behave as the answer selector methods when OCR text is suffixed for the question.
Our experiments showed the effectiveness of arranging from top-left to bottom-right, resulting in remarkable enhancements in the performance.
Availability
The ViTextVQA dataset will be available for download after our article is accepted.
You can find it at the following link: ViTextVQA Dataset
Evaluation
Note that you should combine both dev and test files and submit them on Kaggle to get the most accurate evaluation results.
Citation
If you use ViTextVQA dataset in your research, please cite our paper (preprint):
Authors
Quan Van Nguyen
- Email: 21521333@gm.uit.edu.vn
Dan Quang Tran
- Email: 21521917@gm.uit.edu.vn
Huy Quang Pham
- Email: 21522163@gm.uit.edu.vn
Thang Kien-Bao Nguyen
- Email: 21521432@gm.uit.edu.vn
BS Nghia Hieu Nguyen
- Email: nghiangh@uit.edu.vn
MSc Kiet Van Nguyen
- Email: kietnv@uit.edu.vn
Assoc. Prof Ngan Luu-Thuy Nguyen
- Email: ngannlt@uit.edu.vn
Affiliations
- Faculty of Information Science and Engineering, University of Information Technology
- Vietnam National University, Ho Chi Minh City, Vietnam
Contact
For any inquiries or feedback regarding the ViTextVQA dataset, please contact 21521333@gm.uit.edu.vn or haryquan.minh@gmail.com.
Thank you for your interest in ViTextVQA! We hope this dataset contributes to the advancement of research in text-based Visual Question Answering around the world, especially in Vietnam.
April 15, 2024
- Downloads last month
- 379