Hardware-Accelerated Adaptive EWA Volume Splatting - Robotics Institute Carnegie Mellon University

Hardware-Accelerated Adaptive EWA Volume Splatting

Wei Chen, Liu Ren, Matthias Zwicker, and Hanspeter Pfister
Conference Paper, Proceedings of IEEE Conference on Visualization, pp. 67 - 74, October, 2004

Abstract

We present a hardware-accelerated adaptive EWA (elliptical weighted average) volume splatting algorithm. EWA splatting combines a Gaussian reconstruction kernel with a low-pass image filter for high image quality without aliasing artifacts or excessive blurring. We introduce a novel adaptive filtering scheme to reduce the computational cost of EWA splatting. We show how this algorithm can be efficiently implemented on modern graphics processing units (GPUs). Our implementation includes interactive classification and fast lighting. To accelerate the rendering we store splat geometry and 3D volume data locally in GPU memory. We present results for several rectilinear volume datasets that demonstrate the high image quality and interactive rendering speed of our method.

Notes
Quicktime Video available at: http://graphics.cs.cmu.edu/projects/adpewa/videos/fullfinal.mov

BibTeX

@conference{Chen-2004-9059,
author = {Wei Chen and Liu Ren and Matthias Zwicker and Hanspeter Pfister},
title = {Hardware-Accelerated Adaptive EWA Volume Splatting},
booktitle = {Proceedings of IEEE Conference on Visualization},
year = {2004},
month = {October},
pages = {67 - 74},
}