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Kernel-Predicting Convolutional Networks for Denoising Monte Carlo Renderings

机译:用于蒙特卡洛渲染去噪的内核预测卷积网络

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Regression-based algorithms have shown to be good at denoising Monte Carlo (MC) renderings by leveraging its inexpensive by-products (e.g., feature buu001ders). However, when using higher-order models to handle complex cases, these techniques often overfit to noise in the input. For this reason, supervised learning methods have been proposed that train on a large collection of reference examples, but they use explicit filters that limit their denoising ability. To address these problems, we propose a novel, supervised learning approach that allows the filtering kernel to be more complex and general by leveraging a deep convolutional neural network (CNN) architecture. In one embodiment of our framework, the CNN directly predicts the final denoised pixel value as a highly non-linear combination of the input features. In a second approach, we introduce a novel, kernel-prediction network which uses the CNN to estimate the local weighting kernels used to compute each denoised pixel from its neighbors. We train and evaluate our networks on production data and observe improvements over state-of-theart MC denoisers, showing that our methods generalize well to a variety of scenes. We conclude by analyzing various components of our architecture and identify areas of further research in deep learning for MC denoising.
机译:基于回归的算法已显示出可以利用其廉价的副产品(例如特征buu001ders)对Monte Carlo(MC)渲染进行降噪的优势。但是,当使用高阶模型来处理复杂情况时,这些技术通常会过分适应输入中的噪声。因此,有人提出了有监督的学习方法,该方法以大量参考示例为训练对象,但是它们使用显式滤波器来限制其降噪能力。为了解决这些问题,我们提出了一种新颖的,有监督的学习方法,该方法可以利用深度卷积神经网络(CNN)架构使过滤内核更加复杂和通用。在我们框架的一个实施例中,CNN直接将最终去噪的像素值预测为输入特征的高度非线性组合。在第二种方法中,我们介绍了一种新颖的内核预测网络,该网络使用CNN估计用于从其邻居计算每个去噪像素的局部加权内核。我们根据生产数据训练和评估我们的网络,并观察到最新的MC去噪器的改进,这表明我们的方法可以很好地推广到各种场景。我们通过分析架构的各个组成部分得出结论,并确定深度学习中用于MC去噪的进一步研究领域。

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