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引用次数: 3

摘要

体可视化是一种流行的分析三维数据集的技术,特别是在医学领域。一个沉浸式的视觉环境提供了通过渲染数据集更容易的导航。然而,可视化只是问题的一部分。在直接体绘制(DVR)中,寻找合适的传递函数(TF)来映射颜色和不透明度值是很困难的。本文将CAVE自动虚拟环境的优点与DVR生成TF的新方法相结合,消除了传统的低级别颜色和不透明度参数操作。TF的生成过程隐藏在球面自组织映射(SSOM)之后。用户在移动设备上与SSOM网格的可视化形式进行交互,同时在CAVE中实时查看相应的体数据集渲染。SSOM格是通过从体数据集中提取高维特征得到的。TF的颜色和不透明度值是根据用户的感知自动生成的。因此,生成的TF可以在几秒钟内暴露数据集中的复杂结构,用户可以通过完全沉浸来轻松有效地分析。
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ImmerVol: An immersive volume visualization system
Volume visualization is a popular technique for analyzing 3D datasets, especially in the medical domain. An immersive visual environment provides easier navigation through the rendered dataset. However, visualization is only one part of the problem. Finding an appropriate Transfer Function (TF) for mapping color and opacity values in Direct Volume Rendering (DVR) is difficult. This paper combines the benefits of the CAVE Automatic Virtual Environment with a novel approach towards TF generation for DVR, where the traditional low-level color and opacity parameter manipulations are eliminated. The TF generation process is hidden behind a Spherical Self Organizing Map (SSOM). The user interacts with the visual form of the SSOM lattice on a mobile device while viewing the corresponding rendering of the volume dataset in real time in the CAVE. The SSOM lattice is obtained through high-dimensional features extracted from the volume dataset. The color and opacity values of the TF are automatically generated based on the user's perception. Hence, the resulting TF can expose complex structures in the dataset within seconds, which the user can analyze easily and efficiently through complete immersion.
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