KoViDoRe - VQA v1.0
This dataset is part of the KoViDoRe Benchmark for Korean visual document retrieval evaluation. Specifically, it is focused on Visual Question Answering (VQA) tasks for Korean document images.
Dataset Summary
- Domain: Korean structured document images (e.g., 환경기상, 공공행정 등 다양한 카테고리)
- Task: Visual document retrieval (text question → relevant document image)
- Format: BEIR-compatible (corpus, queries, qrels)
Statistics:
- Number of Documents (Pages): 1,100+
- Number of Queries: 1,500
- Number of Relevance Judgments (qrels): 1,500
- All text queries are in Korean.
Dataset Structure
- corpus
corpus-id: Unique page IDimage: Document page image (PIL Image)category: Document category label (e.g., 환경기상, 공공행정 등)
- queries
query-id: Unique query IDquery: Korean text question
- qrels
query-idcorpus-idscore: (1 = relevant)
Usage
This dataset is intended for benchmarking the performance of visual retrieval systems on on real-world Korean document images.
Note:
Due to licensing restrictions, original images are not redistributed with this dataset.
Please download the required image data directly from AI Hub (시각화 자료 질의응답 데이터) and place them as instructed in the KoVidore-benchmark GitHub repository.
Acknowledgments
- Based on data provided by AI Hub (시각화 자료 질의응답 데이터)
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