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VisImages: A Fine-Grained Expert-Annotated Visualization Dataset

Dazhen Deng, Yihong Wu, Xinhuan Shu, Jiang Wu, Siwei Fu, Weiwei Cui, Yingcai Wu

2022IEEE Transactions on Visualization and Computer Graphics27 citationsDOIOpen Access PDF

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.

Topics & Concepts

VisualizationComputer scienceVisual analyticsBenchmarkingData visualizationInformation visualizationInformation retrievalData scienceAnalyticsInteractive visual analysisBounding overwatchHuman–computer interactionCreative visualizationGeovisualizationCultural analyticsData miningComputer graphics (images)Interactive visualizationTag cloudArtificial intelligenceWorld Wide WebData Visualization and AnalyticsMultimodal Machine Learning ApplicationsComputer Graphics and Visualization Techniques
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