IEEE Trans Vis Comput Graph. 2020 Jan;26(1):611-621. doi: 10.1109/TVCG.2019.2934555. Epub 2019 Aug 22.
We present Scalable Insets, a technique for interactively exploring and navigating large numbers of annotated patterns in multiscale visualizations such as gigapixel images, matrices, or maps. Exploration of many but sparsely-distributed patterns in multiscale visualizations is challenging as visual representations change across zoom levels, context and navigational cues get lost upon zooming, and navigation is time consuming. Our technique visualizes annotated patterns too small to be identifiable at certain zoom levels using insets, i.e., magnified thumbnail views of the annotated patterns. Insets support users in searching, comparing, and contextualizing patterns while reducing the amount of navigation needed. They are dynamically placed either within the viewport or along the boundary of the viewport to offer a compromise between locality and context preservation. Annotated patterns are interactively clustered by location and type. They are visually represented as an aggregated inset to provide scalable exploration within a single viewport. In a controlled user study with 18 participants, we found that Scalable Insets can speed up visual search and improve the accuracy of pattern comparison at the cost of slower frequency estimation compared to a baseline technique. A second study with 6 experts in the field of genomics showed that Scalable Insets is easy to learn and provides first insights into how Scalable Insets can be applied in an open-ended data exploration scenario.
我们提出了 Scalable Insets,这是一种用于交互探索和导航多尺度可视化(如图像、矩阵或地图)中大量注释模式的技术。在多尺度可视化中探索许多但分布稀疏的模式是具有挑战性的,因为视觉表示在缩放级别之间发生变化,上下文和导航线索在缩放时丢失,并且导航很耗时。我们的技术使用插图(即注释模式的放大缩略图视图)可视化在某些缩放级别下太小而无法识别的注释模式。插图支持用户搜索、比较和上下文化模式,同时减少所需的导航量。它们可以动态放置在视口内或视口边界上,以在局部性和上下文保留之间提供折衷。注释模式按位置和类型进行交互聚类。它们以聚合插图的形式表示,以在单个视口中提供可扩展的探索。在一项有 18 名参与者的受控用户研究中,我们发现与基线技术相比,Scalable Insets 可以加快视觉搜索速度并提高模式比较的准确性,但代价是频率估计速度较慢。第二项涉及 6 位基因组学领域专家的研究表明,Scalable Insets 易于学习,并提供了有关如何在开放式数据探索场景中应用 Scalable Insets 的初步见解。