【24h】

Hierarchical Streamline Bundles

机译:分层流线捆绑

获取原文
获取原文并翻译 | 示例
       

摘要

Effective 3D streamline placement and visualization play an essential role in many science and engineering disciplines. The main challenge for effective streamline visualization lies in seed placement, i.e., where to drop seeds and how many seeds should be placed. Seeding too many or too few streamlines may not reveal flow features and patterns either because it easily leads to visual clutter in rendering or it conveys little information about the flow field. Not only does the number of streamlines placed matter, their spatial relationships also play a key role in understanding the flow field. Therefore, effective flow visualization requires the streamlines to be placed in the right place and in the right amount. This paper introduces hierarchical streamline bundles, a novel approach to simplifying and visualizing 3D flow fields defined on regular grids. By placing seeds and generating streamlines according to flow saliency, we produce a set of streamlines that captures important flow features near critical points without enforcing the dense seeding condition. We group spatially neighboring and geometrically similar streamlines to construct a hierarchy from which we extract streamline bundles at different levels of detail. Streamline bundles highlight multiscale flow features and patterns through clustered yet not cluttered display. This selective visualization strategy effectively reduces visual clutter while accentuating visual foci, and therefore is able to convey the desired insight into the flow data.
机译:有效的3D流线型放置和可视化在许多科学和工程学科中都扮演着至关重要的角色。有效的流线可视化的主要挑战在于种子放置,即在哪里放置种子以及应放置多少种子。播种太多或太少的流线可能无法揭示流的特征和模式,因为它很容易导致渲染时出现视觉混乱,或者传达的流场信息很少。流线放置的数量不仅重要,而且它们的空间关系在理解流场方面也起着关键作用。因此,有效的流程可视化要求将流线放置在正确的位置并放置正确的数量。本文介绍了分层流线束,这是一种简化和可视化规则网格上定义的3D流场的新颖方法。通过放置种子并根据流的显着性生成流线,我们生成了一组流线,这些流线捕获了关键点附近的重要流特征而无需执行密集的播种条件。我们将空间相邻的和几何上相似的流线进行分组,以构建一个层次结构,从该层次结构中我们提取不同细节级别的流线束。流线束通过成簇但不混乱的显示突出显示多尺度流特征和模式。这种选择性的可视化策略有效地减少了视觉混乱,同时加重了视觉焦点,因此能够将所需的见解传达到流数据中。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号