说明性流线放置和可视化

Liya Li, Hsien-Hsi Hsieh, Han-Wei Shen
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引用次数: 63

摘要

受艺术中图表绘制的抽象性、聚焦性和解释性的启发,本文提出了一种新的播种策略,在二维矢量场中生成具有代表性和说明性的流线,以增强视觉清晰度和证据性。我们算法的一个特别重点是用最小的流线集有效而简洁地描述底层流模式。为了实现这一目标,生成2D距离字段,以编码字段中每个网格点到附近流线的距离。导出了一个局部度量来度量原始场的矢量与由距离场计算的近似场之间的不相似度。在局部误差的基础上,采用全局度量来度量流线之间的不相似性,以决定是否在局部点投放新的种子。迭代此过程以生成流线,直到没有发现与现有流线不同的流线为止。我们展示了由算法生成的图像示例,并报告了定性分析和用户研究的结果。
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Illustrative Streamline Placement and Visualization
Inspired by the abstracting, focusing and explanatory qualities of diagram drawing in art, in this paper we propose a novel seeding strategy to generate representative and illustrative streamlines in 2D vector fields to enforce visual clarity and evidence. A particular focus of our algorithm is to depict the underlying flow patterns effectively and succinctly with a minimum set of streamlines. To achieve this goal, 2D distance fields are generated to encode the distances from each grid point in the field to the nearby streamlines. A local metric is derived to measure the dissimilarity between the vectors from the original field and an approximate field computed from the distance fields. A global metric is used to measure the dissimilarity between streamlines based on the local errors to decide whether to drop a new seed at a local point. This process is iterated to generate streamlines until no more streamlines can be found that are dissimilar to the existing ones. We present examples of images generated from our algorithm and report results from qualitative analysis and user studies.
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