Fourier Analysis of Stochastic Sampling Strategies or Assessing Bias and Variance in Integration
نویسندگان
چکیده
Each pixel in a photorealistic, computer generated picture is calculated by approximately integrating all the light arriving at the pixel, from the virtual scene. A common strategy to calculate these highdimensional integrals is to average the estimates at stochastically sampled locations. The strategy with which the sampled locations are chosen is of utmost importance in deciding the quality of the approximation, and hence rendered image. We derive connections between the spectral properties of stochastic sampling patterns and the first and second order statistics of estimates of integration using the samples. Our equations provide insight into the assessment of stochastic sampling strategies for integration. We show that the amplitude of the expected Fourier spectrum of sampling patterns is a useful indicator of the bias when used in numerical integration. We deduce that estimator variance is directly dependent on the variance of the sampling spectrum over multiple realizations of the sampling pattern. We then analyse Gaussian jittered sampling, a simple variant of jittered sampling, that allows a smooth trade-off of bias for variance in uniform (regular grid) sampling. We verify our predictions using spectral measurement, quantitative integration experiments and qualitative comparisons of rendered images.
منابع مشابه
Analyse spatiale et spectrale des motifs d'échantillonnage pour l'intégration Monte Carlo. (Spatial and spectral analysis of sampling patterns for Monte Carlo integration)
Sampling is a key step in rendering pipeline. It allows the integration of light arriving to a point of the scene in order to calculate its color. Monte Carlo integration is generally the most used method to approximate that integral by choosing a finite number of samples. Reducing the bias and the variance of Monte Carlo integration has become one of the most important issues in realistic rend...
متن کاملVariance reduction in sample approximations of stochastic programs
This paper studies the use of randomized Quasi-Monte Carlo methods (RQMC) in sample approximations of stochastic programs. In high dimensional numerical integration, RQMC methods often substantially reduce the variance of sample approximations compared to MC. It seems thus natural to use RQMC methods in sample approximations of stochastic programs. It is shown, that RQMC methods produce epi-con...
متن کاملConstant Step Size Least-Mean-Square: Bias-Variance Trade-offs and Optimal Sampling Distributions
We consider the least-squares regression problem and provide a detailed asymptotic analysis of the performance of averaged constant-step-size stochastic gradient descent (a.k.a. least-mean-squares). In the strongly-convex case, we provide an asymptotic expansion up to explicit exponentially decaying terms. Our analysis leads to new insights into stochastic approximation algorithms: (a) it gives...
متن کاملSampling and Variance Analysis for Monte Carlo Integration in Spherical Domain. (Analyse de Variance et Échantillonnage pour l'intégration Monte Carlo sur la sphère)
This dissertation introduces a theoretical framework to study different sampling patterns in the spherical domain and their effects in the evaluation of global illumination integrals. Evaluating illumination (light transport) is one of the most essential aspect in image synthesis to achieve realism which involves solving multi-dimensional space integrals. Monte Carlo based numerical integration...
متن کاملMonte Carlo Convergence Analysis for Anisotropic Sampling Power Spectra
Traditional Monte Carlo (MC) integration methods use point samples to numerically approximate the underlying integral. This approximation introduces variance in the integrated result, and this error can depend critically on the sampling patterns used during integration. Most of the well known samplers used for MC integration in graphics, e.g. jitter, Latin hypercube (n-rooks), multi-jitter, are...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2013