Chen Yuan, Cohen Jonathan, Krolik Julian
Johns Hopkins University, USA.
IEEE Trans Vis Comput Graph. 2007 Nov-Dec;13(6):1448-55. doi: 10.1109/TVCG.2007.70595.
Most streamline generation algorithms either provide a particular density of streamlines across the domain or explicitly detect features, such as critical points, and follow customized rules to emphasize those features. However, the former generally includes many redundant streamlines, and the latter requires Boolean decisions on which points are features (and may thus suffer from robustness problems for real-world data). We take a new approach to adaptive streamline placement for steady vector fields in 2D and 3D. We define a metric for local similarity among streamlines and use this metric to grow streamlines from a dense set of candidate seed points. The metric considers not only Euclidean distance, but also a simple statistical measure of shape and directional similarity. Without explicit feature detection, our method produces streamlines that naturally accentuate regions of geometric interest. In conjunction with this method, we also propose a quantitative error metric for evaluating a streamline representation based on how well it preserves the information from the original vector field. This error metric reconstructs a vector field from points on the streamline representation and computes a difference of the reconstruction from the original vector field.
大多数流线生成算法要么在整个域中提供特定密度的流线,要么明确检测诸如临界点等特征,并遵循定制规则来突出这些特征。然而,前者通常包含许多冗余流线,而后者需要对哪些点是特征进行布尔决策(因此对于实际数据可能存在鲁棒性问题)。我们针对二维和三维稳定向量场的自适应流线放置采用了一种新方法。我们定义了一种流线之间局部相似性的度量,并使用该度量从密集的候选种子点集生长流线。该度量不仅考虑欧几里得距离,还考虑形状和方向相似性的简单统计度量。无需明确的特征检测,我们的方法就能生成自然突出几何感兴趣区域的流线。结合这种方法,我们还提出了一种定量误差度量,用于基于流线表示保留原始向量场信息的程度来评估流线表示。此误差度量从流线表示上的点重建向量场,并计算重建与原始向量场的差异。