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A Statistical Direct Volume Rendering Framework for Visualization of Uncertain Data

机译:用于不确定数据可视化的统计直接体积渲染框架

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With uncertainty present in almost all modalities of data acquisition, reduction, transformation, and representation, there is a growing demand for mathematical analysis of uncertainty propagation in data processing pipelines. In this paper, we present a statistical framework for quantification of uncertainty and its propagation in the main stages of the visualization pipeline. We propose a novel generalization of Irwin-Hall distributions from the statistical viewpoint of splines and box-splines, that enables interpolation of random variables. Moreover, we introduce a probabilistic transfer function classification model that allows for incorporating probability density functions into the volume rendering integral. Our statistical framework allows for incorporating distributions from various sources of uncertainty which makes it suitable in a wide range of visualization applications. We demonstrate effectiveness of our approach in visualization of ensemble data, visualizing large datasets at reduced scale, iso-surface extraction, and visualization of noisy data.
机译:在几乎所有数据采集,缩减,转换和表示形式中都存在不确定性的情况下,对数据处理管道中不确定性传播的数学分析的需求日益增长。在本文中,我们提出了一个统计框架,用于量化不确定性及其在可视化管道主要阶段中的传播。从样条曲线和箱形样条曲线的统计角度出发,我们提出了一种新的欧文-霍尔分布的一般化方法,可以对随机变量进行插值。此外,我们引入了概率传递函数分类模型,该模型允许将概率密度函数合并到体绘制积分中。我们的统计框架允许合并来自各种不确定性来源的分布,这使其适用于各种可视化应用程序。我们展示了我们的方法在整体数据可视化,缩小规模的大型数据集可视化,等值面提取以及嘈杂数据可视化方面的有效性。

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