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KERNEL-PREDICTING CONVOLUTIONAL NEURAL NETWORKS FOR DENOISING

机译:基于核的卷积神经网络去噪

摘要

Supervised machine learning using convolutional neural network (CNN) is applied to denoising images rendered by MC path tracing. The input image data may include pixel color and its variance, as well as a set of auxiliary buffers that encode scene information (e.g., surface normal, albedo, depth, and their corresponding variances). In some embodiments, a CNN directly predicts the final denoised pixel value as a highly non-linear combination of the input features. In some other embodiments, a kernel-prediction neural network uses a CNN to estimate the local weighting kernels, which are used to compute each denoised pixel from its neighbors. In some embodiments, the input image can be decomposed into diffuse and specular components. The diffuse and specular components are then independently preprocessed, filtered, and postprocessed, before recombining them to obtain a final denoised image.
机译:使用卷积神经网络(CNN)的有监督机器学习被应用于去噪由MC路径跟踪渲染的图像。输入图像数据可包括像素颜色及其方差,以及一组编码场景信息(例如,表面法线,反照率,深度及其对应方差)的辅助缓冲器。在一些实施例中,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。在一些其他实施例中,内核预测神经网络使用CNN来估计局部加权内核,该局部加权内核用于从其邻居计算每个去噪像素。在一些实施例中,输入图像可以被分解为漫射和镜面反射分量。然后,在重新组合漫反射和镜面反射分量以获得最终去噪图像之前,对它们进行独立的预处理,过滤和后处理。

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