A new adaptive density estimator for particle-tracing radiosity

WongPing Wah
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引用次数: 2

Abstract

In particle-tracing radiosity algorithms, energy-carrying particles are traced through an environment for simulating global illumination. Illumination on a surface is reconstructed from particle "hit points" on the surface, which is a density estimation problem (B.W. Silverman, 1986). Several methods can be used to solve this problem, such as the adaptive meshing method (R.F. Tobler et al., 1997), the kernel method (B. Walter et al., 1997), and the orthogonal series estimator (M. Feda, 1996). An orthogonal series estimator is proposed to tackle the problem. In the new method, the appropriate number of terms that should be used in the series is determined adaptively and automatically. Moreover a surface subdivision scheme is combined with the estimator to increase the accuracy of estimation. The new method has several advantages over other existing methods: (1) it requires less memory than the adaptive meshing method; (2) it does not store all the particle-hit points as in the kernel method; (3) it determines automatically how many terms should be used in the orthogonal series; (4) it incorporates surface subdivision to further increase the accuracy of estimation.
一种新的自适应粒子追踪辐射密度估计方法
在粒子跟踪辐射算法中,携带能量的粒子通过模拟全局照明的环境进行跟踪。表面上的照明是由表面上的粒子“命中点”重建的,这是一个密度估计问题(B.W. Silverman, 1986)。有几种方法可以用来解决这个问题,如自适应网格划分方法(R.F. Tobler等人,1997),核方法(B. Walter等人,1997)和正交级数估计(M. Feda, 1996)。提出了一个正交级数估计来解决这个问题。该方法自适应地自动确定序列中应使用的适当项数。此外,为了提高估计精度,还将曲面细分方案与估计器相结合。与已有方法相比,该方法具有以下优点:(1)与自适应网格法相比,该方法占用的内存更少;(2)不像核方法那样存储所有的粒子命中点;(3)自动确定正交序列中应使用多少项;(4)结合地表细分,进一步提高估算精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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