首页> 外文期刊>IEEE transactions on visualization and computer graphics >Structure-significant representation of structured datasets
【24h】

Structure-significant representation of structured datasets

机译:结构化数据集的结构重要表示

获取原文
获取原文并翻译 | 示例
       

摘要

Numerical simulation of physical phenomena is an accepted way of scientific inquiry. However, the field is still evolving, with a profusion of new solution and grid generation techniques being continuously proposed. Concurrent and retrospective visualization are being used to validate the results. There is a need for representation schemes which allow access of structures in an increasing order of smoothness. We describe our methods on datasets obtained from curvilinear grids. Our target application required visualization of a computational simulation performed on a very remote supercomputer. Since no grid adaptation was performed, it was not deemed necessary to simplify or compress the grid. Inherent to the identification of significant structures is determining the location of the scale coherent structures and assigning saliency values to them. Scale coherent structures are obtained as a result of combining the coefficients of a wavelet transform across scales. The result of this operation is a correlation mask that delineates regions containing significant structures. A spatial subdivision is used to delineate regions of interest. The mask values in these subdivided regions are used as a measure of information content. Later, another wavelet transform is conducted within each subdivided region and the coefficients are sorted based on a perceptual function with bandpass characteristics. This allows for ranking of structures based on the order of significance, giving rise to an adaptive and embedded representation scheme. We demonstrate our methods on two datasets from computational field simulations. We show how our methods allow the ranked access of significant structures. We also compare our adaptive representation scheme with a fixed blocksize scheme.
机译:物理现象的数值模拟是科学探究的一种公认方式。但是,随着新解决方案的大量涌现和网格生成技术的不断提出,该领域仍在不断发展。并发和追溯可视化用于验证结果。需要一种表示方案,其允许以增加的平滑度顺序访问结构。我们在从曲线网格获得的数据集上描述我们的方法。我们的目标应用程序需要在非常远程的超级计算机上可视化计算仿真。由于没有执行网格调整,因此没有必要简化或压缩网格。确定重要结构的本质是确定标尺相关结构的位置并为其分配显着性值。通过组合跨尺度的小波变换的系数,可以获得尺度的相干结构。此操作的结果是一个关联掩码,该掩码描绘了包含重要结构的区域。使用空间细分来描绘感兴趣的区域。这些细分区域中的掩码值用作信息内容的度量。随后,在每个细分区域内进行另一个小波变换,并基于具有带通特性的感知函数对系数进行排序。这允许基于重要性顺序对结构进行排名,从而产生了一种自适应的嵌入式表示方案。我们通过计算场模拟在两个数据集上展示了我们的方法。我们展示了我们的方法如何允许对重要结构进行分级访问。我们还将自适应表示方案与固定块大小方案进行比较。

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