Title :
P-RPF: Pixel-Based Random Parameter Filtering for Monte Carlo Rendering
Author :
Hyosub Park ; Bochang Moon ; Soomin Kim ; Sung-Eui Yoon
Abstract :
In this paper we propose Pixel-based Random Parameter Filtering (P-RPF) for efficiently denoising images generated from complex illuminations with a high sample count. We design various operations of our method to have time complexity that is independent from the number of samples per pixel. We compute feature weights by measuring the functional relationships between MC inputs and output in a sample basis. To accelerate this sample-basis process we propose to use an up sampling method for feature weights. We have applied our method to a wide variety of models with different rendering effects. Our method runs significantly faster than the original RPF, while maintaining visually pleasing and numerically similar results. As a result, our method shows more visually pleasing and numerically better results than RPF in an equal-time comparison.
Keywords :
Monte Carlo methods; computational complexity; filtering theory; image denoising; image sampling; rendering (computer graphics); Monte Carlo rendering; P-RPF; complex illuminations; feature weights; functional relationships; image denoising; pixel-based random parameter filtering; sample-basis process; sampling method; time complexity; Interpolation; Joints; Noise; Noise reduction; Rendering (computer graphics); Silicon; Vectors; Image space filtering; Monte Carlo rendering;
Conference_Titel :
Computer-Aided Design and Computer Graphics (CAD/Graphics), 2013 International Conference on
Conference_Location :
Guangzhou
DOI :
10.1109/CADGraphics.2013.24