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Importance-driven feature enhancement in volume visualization

机译:体积可视化中由重要性驱动的功能增强

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This paper presents importance-driven feature enhancement as a technique for the automatic generation of cut-away and ghosted views out of volumetric data. The presented focus+context approach removes or suppresses less important parts of a scene to reveal more important underlying information. However, less important parts are fully visible in those regions, where important visual information is not lost, i.e., more relevant features are not occluded. Features within the volumetric data are first classified according to a new dimension, denoted as object importance. This property determines which structures should be readily discernible and which structures are less important. Next, for each feature, various representations (levels of sparseness) from a dense to a sparse depiction are defined. Levels of sparseness define a spectrum of optical properties or rendering styles. The resulting image is generated by ray-casting and combining the intersected features proportional to their importance (importance compositing). The paper includes an extended discussion on several possible schemes for levels of sparseness specification. Furthermore, different approaches to importance compositing are treated.
机译:本文介绍了重要性驱动的功能增强,这是一种自动从体积数据中生成剖视图和幻影视图的技术。提出的焦点+上下文方法可以删除或抑制场景中次要的部分,以显示更重要的基础信息。但是,在那些重要视觉信息不会丢失的区域中,不太重要的部分是完全可见的,即,不会遮盖更相关的特征。首先根据新维度对体积数据中的特征进行分类,称为对象重要性。此属性确定哪些结构应易于辨别,哪些结构次要。接下来,针对每个特征,定义从密集到稀疏描绘的各种表示形式(稀疏程度)。稀疏级别定义了一系列光学特性或渲染样式。通过射线投射并将相交的特征按其重要性成比例地组合(重要性合成)来生成结果图像。本文包括有关稀疏性规范级别的几种可能方案的扩展讨论。此外,对待重要性合成的不同方法。

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