Statistical Hypothesis Testing for Assessing Monte Carlo Estimators: Applications to Image Synthesis

K. Subr, J. Arvo
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引用次数: 11

Abstract

Image synthesis algorithms are commonly compared on the basis of running times and/or perceived quality of the generated images. In the case of Monte Carlo techniques, assessment often entails a qualitative impression of convergence toward a reference standard and severity of visible noise; these amount to subjective assessments of the mean and variance of the estimators, respectively. In this paper we argue that such assessments should be augmented by well-known statistical hypothesis testing methods. In particular, we show how to perform a number of such tests to assess random variables that commonly arise in image synthesis such as those estimating irradiance, radiance, pixel color, etc. We explore five broad categories of tests: 1) determining whether the mean is equal to a reference standard, such as an analytical value, 2) determining that the variance is bounded by a given constant, 3) comparing the means of two different random variables, 4) comparing the variances of two different random variables, and 5) verifying that two random variables stem from the same parent distribution. The level of significance of these tests can be controlled by a parameter. We demonstrate that these tests can be used for objective evaluation of Monte Carlo estimators to support claims of zero or small bias and to provide quantitative assessments of variance reduction techniques. We also show how these tests can be used to detect errors in sampling or in computing the density of an importance function in MC integrations.
评估蒙特卡罗估计的统计假设检验:在图像合成中的应用
图像合成算法通常根据生成图像的运行时间和/或感知质量进行比较。在蒙特卡罗技术的情况下,评估往往需要对参考标准和可见噪声的严重程度收敛的定性印象;这相当于分别对估计器的均值和方差进行主观评估。在本文中,我们认为这种评估应该通过众所周知的统计假设检验方法来增强。特别是,我们展示了如何执行一些这样的测试来评估随机变量,通常出现在图像合成,如那些估计辐照度,亮度,像素颜色等。我们探讨了五大类检验:1)确定均值是否等于参考标准,如分析值;2)确定方差是否受给定常数的限制;3)比较两个不同随机变量的均值;4)比较两个不同随机变量的方差;5)验证两个随机变量是否来自同一母分布。这些检验的显著性水平可以通过一个参数来控制。我们证明,这些测试可用于蒙特卡罗估计器的客观评估,以支持零或小偏差的主张,并提供方差减少技术的定量评估。我们还展示了如何使用这些测试来检测采样或计算MC集成中重要函数的密度中的错误。
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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