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Primary-space Adaptive Control Variates Using Piecewise-polynomial Approximations

机译:主要空间自适应控制使用分段 - 多项式近似变体

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We present an unbiased numerical integration algorithm that handles both low-frequency regions and high-frequency details of multidimensional integrals. It combines quadrature and Monte Carlo integration by using a quadrature-based approximation as a control variate of the signal. We adaptively build the control variate constructed as a piecewise polynomial, which can be analytically integrated, and accurately reconstructs the low-frequency regions of the integrand. We then recover the high-frequency details missed by the control variate by using Monte Carlo integration of the residual. Our work leverages importance sampling techniques by working in primary space, allowing the combination of multiple mappings; this enables multiple importance sampling in quadrature-based integration. Our algorithm is generic and can be applied to any complex multidimensional integral. We demonstrate its effectiveness with four applications with low dimensionality: transmittance estimation in heterogeneous participating media, low-order scattering in homogeneous media, direct illumination computation, and rendering of distribution effects. Finally, we show how our technique is extensible to integrands of higher dimensionality by computing the control variate on Monte Carlo estimates of the high-dimensional signal, and accounting for such additional dimensionality on the residual as well. In all cases, we show accurate results and faster convergence compared to previous approaches.
机译:我们介绍了一种无偏的数值集成算法,处理多维积分的低频区域和高频细节。它通过使用基于正交的近似作为信号的控制变化来结合正交和蒙特卡罗集成。我们自适应地构建作为分段多项式构造的控制变化,这可以进行分析整合,并且精确地重建整个块的低频区域。然后,我们通过使用蒙特卡罗的剩余融合来恢复控制变化的高频细节。我们的作品通过在主要空间中工作来利用重要的采样技术,允许多次映射组合;这使得能够在基于正交的集成中进行多重重视采样。我们的算法是通用的,可以应用于任何复杂的多维积分。我们展示了其具有低维度的四种应用的有效性:异构参与介质中的透射率估计,均匀介质中的低阶散射,直接照明计算和分配效果的渲染。最后,我们通过计算高维信号的Monte Carlo估计的控制变化,以及在剩余的额外维度占这些额外维度的情况下,我们如何通过计算更高维度的整合方式来扩展到更高的维度。在所有情况下,与先前的方法相比,我们显示了准确的结果和更快的融合。

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