Clustered edge routing

Quirijn W. Bouts, B. Speckmann
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引用次数: 12

Abstract

The classic method to depict graphs is a node-link diagram where vertices (nodes) are associated with each object and edges (links) connect related objects. However, node-link diagrams quickly appear cluttered and unclear, even for moderately sized graphs. If the positions of the nodes are fixed then suitable link routing is the only option to reduce clutter. We present a novel link clustering and routing algorithm which respects (and if desired refines) user-defined clusters on links. If no clusters are defined a priori we cluster based on geometric criteria, that is, based on a well-separated pair decomposition (WSPD).We route link clusters individually on a sparse visibility spanner. To completely avoid ambiguity we draw each individual link and ensure that clustered links follow the same path in the routing graph. We prove that the clusters induced by the WSPD consist of compatible links according to common similarity measures as formalized by Holten and van Wijk [17]. The greedy sparsification of the visibility graph allows us to easily route around obstacles. Our experimental results are visually appealing and convey a sense of abstraction and order.
聚类边缘路由
描述图形的经典方法是节点链接图,其中顶点(节点)与每个对象相关联,边(链接)连接相关对象。然而,即使对于中等大小的图,节点链接图也会很快显得混乱和不清晰。如果节点的位置是固定的,那么合适的链路路由是减少混乱的唯一选择。我们提出了一种新的链路聚类和路由算法,该算法尊重(并在需要时改进)链路上的用户自定义聚类。如果没有先验地定义聚类,我们基于几何准则聚类,即基于分离良好的对分解(WSPD)。我们在稀疏可见性扳手上单独路由链接集群。为了完全避免歧义,我们绘制每个单独的链路,并确保集群链路在路由图中遵循相同的路径。我们根据Holten和van Wijk[17]的共同相似度量证明了由WSPD诱导的聚类由兼容链接组成。可见性图的贪婪稀疏化使我们能够轻松地绕过障碍物。我们的实验结果在视觉上很有吸引力,传达了一种抽象和秩序感。
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