VisImages: A Fine-Grained Expert-Annotated Visualization Dataset (2007.04584v5)
Abstract: Images in visualization publications contain rich information, e.g., novel visualization designs and implicit design patterns of visualizations. A systematic collection of these images can contribute to the community in many aspects, such as literature analysis and automated tasks for visualization. In this paper, we build and make public a dataset, VisImages, which collects 12,267 images with captions from 1,397 papers in IEEE InfoVis and VAST. Built upon a comprehensive visualization taxonomy, the dataset includes 35,096 visualizations and their bounding boxes in the images.We demonstrate the usefulness of VisImages through three use cases: 1) investigating the use of visualizations in the publications with VisImages Explorer, 2) training and benchmarking models for visualization classification, and 3) localizing visualizations in the visual analytics systems automatically.
- Dazhen Deng (13 papers)
- Yihong Wu (149 papers)
- Xinhuan Shu (12 papers)
- Jiang Wu (58 papers)
- Siwei Fu (11 papers)
- Weiwei Cui (53 papers)
- Yingcai Wu (47 papers)