With the wide usage of data visualizations, a huge number of Scalable Vector Graphic (SVG)-based visualizations have been created and shared online. Accordingly, there has been an increasing interest in exploring how to retrieve perceptually similar visualizations from a large corpus, since it can benefit various downstream applications such as visualization recommendation. Existing methods mainly focus on the visual appearance of visualizations by regarding them as bitmap images. However, the structural information intrinsically existing in SVG-based visualizations is ignored. Such structural information can delineate the spatial and hierarchical relationship among visual elements, and characterize visualizations thoroughly from a new perspective. This paper presents a structure-aware method to advance the performance of visualization retrieval by collectively considering both the visual and structural information. We extensively evaluated our approach through quantitative comparisons, a user study and case studies. The results demonstrate the effectiveness of our approach and its advantages over existing methods.
翻译:由于广泛使用数据可视化,大量基于可缩放矢量图的可视化在网上创建和共享了大量基于可缩放矢量图的可视化,因此,人们越来越有兴趣探讨如何从大体中获取概念上相似的可视化,因为这可以有益于各种下游应用,例如可视化建议。现有方法主要侧重于视觉化的视觉外观,将其称为位图图像。然而,SVG基于可视化的内在结构信息被忽略了。这种结构信息可以描述视觉要素之间的空间和等级关系,并从新的角度对可视化进行彻底描述。本文介绍了一种结构认知的方法,通过共同考虑视觉和结构信息来推进可视化检索的性能。我们通过定量比较、用户研究和案例研究,广泛评价了我们的方法。结果表明我们的方法的有效性及其相对于现有方法的优势。