蒙特卡罗体绘制

B. Csébfalvi, László Szirmay-Kalos
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引用次数: 52

摘要

本文提出了一种新的基于蒙特卡罗积分的体绘制技术。作为预处理的结果,使用归一化连续重构的体积作为概率密度函数生成随机样本的点云。将该点云投影到图像平面上,并为每个像素分配一个强度值,该强度值与投影到相应像素区域的样本数量成正比。这样就可以得到该体积的模拟x射线图像。理论上,对于固定的图像分辨率,存在M个样本,使得在量化误差水平下估计的像素强度的平均标准偏差与体素数无关。因此,蒙特卡罗体绘制(MCVR)主要用于大体积数据集的高效可视化。此外,还支持网络应用程序,因为通过使用渐进式细化,可以根据客户机/服务器连接的带宽调整图像质量和交互性之间的权衡。
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Monte Carlo volume rendering
In this paper a novel volume-rendering technique based on Monte Carlo integration is presented. As a result of a preprocessing, a point cloud of random samples is generated using a normalized continuous reconstruction of the volume as a probability density function. This point cloud is projected onto the image plane, and to each pixel an intensity value is assigned which is proportional to the number of samples projected onto the corresponding pixel area. In such a way a simulated X-ray image of the volume can be obtained. Theoretically, for a fixed image resolution, there exists an M number of samples such that the average standard deviation of the estimated pixel intensities us under the level of quantization error regardless of the number of voxels. Therefore Monte Carlo Volume Rendering (MCVR) is mainly proposed to efficiently visualize large volume data sets. Furthermore, network applications are also supported, since the trade-off between image quality and interactivity can be adapted to the bandwidth of the client/server connection by using progressive refinement.
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