Bundling-Aware Graph Drawing Revisited.

IF 6.5
Markus Wallinger, Tommaso Piselli, Alessandra Tappini, Daniel Archambault, Giuseppe Liotta, Martin Nollenburg
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引用次数: 0

Abstract

Edge bundling algorithms can significantly improve the visualization of dense graphs by identifying and bundling together suitable groups of edges and thus reducing visual clutter. As such, bundling is often viewed as a post-processing step applied to a drawing, and the vast majority of edge bundling algorithms consider a graph and its drawing as input. A different way of thinking about edge bundling is to simultaneously optimize both the drawing and the bundling, which we investigate in this paper. We build on an earlier work where we introduced a novel algorithmic framework for bundling-aware graph drawing consisting of three main steps, namely Filter for a skeleton subgraph, Draw the skeleton, and Bundle the remaining edges against the drawing of the skeleton. We propose several alternative implementations and experimentally compare them against each other and the simple idea of first drawing the full graph and subsequently applying edge bundling to it. The experiments confirm that bundled drawings created by our Filter-Draw-Bundle framework outperform previous approaches according to metrics for edge bundling and graph drawing.

重新审视捆绑感知图形绘制。
边缘捆绑算法通过识别和捆绑合适的边缘组,可以显著提高密集图的可视化效果,从而减少视觉杂波。因此,绑定通常被视为应用于绘图的后处理步骤,并且绝大多数边缘绑定算法将图形及其绘图视为输入。另一种考虑边缘捆绑的方法是同时优化绘制和捆绑,本文对此进行了研究。我们建立在早期工作的基础上,在那里我们引入了一个新的算法框架,用于感知捆绑的图形绘制,包括三个主要步骤,即过滤骨架子图,绘制骨架,以及根据骨架的绘制捆绑剩余的边缘。我们提出了几种替代实现,并通过实验将它们相互比较,并首先绘制完整的图,然后对其应用边缘捆绑的简单想法。实验证实,根据边缘捆绑和图形绘制的指标,我们的Filter-Draw-Bundle框架创建的捆绑图优于以前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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