Zhang Mingdong, Li Quan, Chen Li, Yuan Xiaoru, Yong Junhai
IEEE Trans Vis Comput Graph. 2023 Apr;29(4):2067-2079. doi: 10.1109/TVCG.2021.3140153. Epub 2023 Feb 28.
Ensemble simulation is a crucial method to handle potential uncertainty in modern simulation and has been widely applied in many disciplines. Many ensemble contour visualization methods have been introduced to facilitate ensemble data analysis. On the basis of deep exploration and summarization of existing techniques and domain requirements, we propose a unified framework of ensemble contour visualization, EnConVis (Ensemble Contour Visualization), which systematically combines state-of-the-art methods. We model ensemble contour visualization as a four-step pipeline consisting of four essential procedures: member filtering, point-wise modeling, uncertainty band extraction, and visual mapping. For each of the four essential procedures, we compare different methods they use, analyze their pros and cons, highlight research gaps, and attempt to fill them. Specifically, we add Kernel Density Estimation in the point-wise modeling procedure and multi-layer extraction in the uncertainty band extraction procedure. This step shows the ensemble data's details accurately and provides abstract levels. We also analyze existing methods from a global perspective. We investigate their mechanisms and compare their effects, on the basis of which, we offer selection guidelines for them. From the overall perspective of this framework, we find choices and combinations that have not been tried before, which can be well compensated by our method. Synthetic data and real-world data are leveraged to verify the efficacy of our method. Domain experts' feedback suggests that our approach helps them better understand ensemble data analysis.
集成模拟是处理现代模拟中潜在不确定性的关键方法,已在许多学科中广泛应用。为便于进行集成数据分析,人们引入了许多集成等值线可视化方法。在对现有技术和领域需求进行深入探索和总结的基础上,我们提出了一个集成等值线可视化的统一框架EnConVis(Ensemble Contour Visualization),它系统地结合了最先进的方法。我们将集成等值线可视化建模为一个由四个基本步骤组成的流程:成员筛选、逐点建模、不确定性带提取和可视化映射。对于这四个基本步骤中的每一个,我们比较它们所使用的不同方法。分析其优缺点,突出研究差距,并尝试填补这些差距。具体而言,我们在逐点建模步骤中增加了核密度估计,并在不确定性带提取步骤中增加了多层提取。这一步骤准确地展示了集成数据的细节,并提供了抽象层次。我们还从全局角度分析现有方法。我们研究它们的机制并比较其效果,在此基础上,为它们提供选择指南。从这个框架的整体角度来看,我们发现了以前未尝试过的选择和组合,而我们的方法可以很好地弥补这些不足。我们利用合成数据和真实世界数据来验证我们方法的有效性。领域专家的反馈表明,我们的方法有助于他们更好地理解集成数据分析。