Transfer function design based on user selected samples for intuitive multivariate volume exploration

Liang Zhou, C. Hansen
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引用次数: 28

Abstract

Multivariate volumetric datasets are important to both science and medicine. We propose a transfer function (TF) design approach based on user selected samples in the spatial domain to make multivariate volumetric data visualization more accessible for domain users. Specifically, the user starts the visualization by probing features of interest on slices and the data values are instantly queried by user selection. The queried sample values are then used to automatically and robustly generate high dimensional transfer functions (HDTFs) via kernel density estimation (KDE). Alternatively, 2D Gaussian TFs can be automatically generated in the dimensionality reduced space using these samples. With the extracted features rendered in the volume rendering view, the user can further refine these features using segmentation brushes. Interactivity is achieved in our system and different views are tightly linked. Use cases show that our system has been successfully applied for simulation and complicated seismic data sets.
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基于用户选择样本的传递函数设计,用于直观的多元体积探索
多变量体积数据集对科学和医学都很重要。本文提出了一种基于空间域用户选择样本的传递函数(TF)设计方法,使域用户更容易访问多变量体数据可视化。具体来说,用户通过探测切片上感兴趣的特征来开始可视化,并通过用户选择立即查询数据值。然后使用查询的样本值通过核密度估计(KDE)自动和鲁棒地生成高维传递函数(hdtf)。或者,可以使用这些样本在降维空间中自动生成二维高斯tf。在体绘制视图中呈现提取的特征后,用户可以使用分割刷进一步细化这些特征。我们的系统实现了交互性,不同的视图紧密相连。用例表明,该系统已成功应用于模拟和复杂地震数据集。
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