论文标题
基于gan的先验,用于量化不确定性
GAN-based Priors for Quantifying Uncertainty
论文作者
论文摘要
考虑到两者通过数学模型链接时相关场的测量值,贝叶斯推断可广泛用于量化推断场中的不确定性。尽管有许多应用程序,贝叶斯推论在推断具有较大维度的离散表示的字段时会面临挑战,并且/或具有数学上很难表征的先前分布。在这项工作中,我们证明了如何将深层生成对抗网络(GAN)学到的近似分布用作贝叶斯更新中的先验来解决这两个挑战。我们证明了这种方法在两个不同且非常广泛的问题类别上的功效。一流的一类导致对图像分类的监督学习算法,并具有出色的分配检测和准确性,以及用于内置方差估计的图像插图。第二类导致无监督的学习算法用于图像denoising和解决物理驱动的逆问题。
Bayesian inference is used extensively to quantify the uncertainty in an inferred field given the measurement of a related field when the two are linked by a mathematical model. Despite its many applications, Bayesian inference faces challenges when inferring fields that have discrete representations of large dimension, and/or have prior distributions that are difficult to characterize mathematically. In this work we demonstrate how the approximate distribution learned by a deep generative adversarial network (GAN) may be used as a prior in a Bayesian update to address both these challenges. We demonstrate the efficacy of this approach on two distinct, and remarkably broad, classes of problems. The first class leads to supervised learning algorithms for image classification with superior out of distribution detection and accuracy, and for image inpainting with built-in variance estimation. The second class leads to unsupervised learning algorithms for image denoising and for solving physics-driven inverse problems.