论文标题
2D矢量场特征跟踪,选择和比较的多级鲁棒性
Multilevel Robustness for 2D Vector Field Feature Tracking, Selection, and Comparison
论文作者
论文摘要
关键点跟踪是科学可视化的核心主题,用于理解时变矢量场数据的动态行为。最近引入了鲁棒性的拓扑概念,以量化关键点的结构稳定性,也就是说,临界点的鲁棒性是对矢量场取消其的最小扰动量。先前已经建立了一个理论基础,该基础将关键点跟踪与鲁棒性概念相关联,特别是,可以根据其稳定性的亲密度来跟踪临界点,该临界点是通过稳健性来衡量的,而不是域内的距离接近。但是,实际上,当临界点接近域的边界时,经典鲁棒性的计算可能会产生伪像。因此,我们没有对其本地社区内的向量场行为的完整图片。为了减轻这些问题,我们引入了一个多级鲁棒性框架,以研究第二天变化的向量领域。我们计算各个社区的临界点的鲁棒性,以捕获数据的多尺度性质,并减轻经典鲁棒性计算所产生的边界效应。我们通过实验证明,这种新的鲁棒性概念可以与现有的功能跟踪算法无缝结合,以在特征跟踪,选择和大规模科学模拟的比较方面提高向量场的视觉解释性。我们首次观察到,最小多级鲁棒性与领域科学家在研究现实世界热带气旋数据集时使用的物理量高度相关。这种观察有助于提高鲁棒性的物理解释性。
Critical point tracking is a core topic in scientific visualization for understanding the dynamic behavior of time-varying vector field data. The topological notion of robustness has been introduced recently to quantify the structural stability of critical points, that is, the robustness of a critical point is the minimum amount of perturbation to the vector field necessary to cancel it. A theoretical basis has been established previously that relates critical point tracking with the notion of robustness, in particular, critical points could be tracked based on their closeness in stability, measured by robustness, instead of just distance proximities within the domain. However, in practice, the computation of classic robustness may produce artifacts when a critical point is close to the boundary of the domain; thus, we do not have a complete picture of the vector field behavior within its local neighborhood. To alleviate these issues, we introduce a multilevel robustness framework for the study of 2D time-varying vector fields. We compute the robustness of critical points across varying neighborhoods to capture the multiscale nature of the data and to mitigate the boundary effect suffered by the classic robustness computation. We demonstrate via experiments that such a new notion of robustness can be combined seamlessly with existing feature tracking algorithms to improve the visual interpretability of vector fields in terms of feature tracking, selection, and comparison for large-scale scientific simulations. We observe, for the first time, that the minimum multilevel robustness is highly correlated with physical quantities used by domain scientists in studying a real-world tropical cyclone dataset. Such observation helps to increase the physical interpretability of robustness.