Conditional Image Prior for Uncertainty Quantification in Full Waveform Inversion

Lingyun Yang, Omar M. Saad, Guochen Wu, Tariq Alkhalifah
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Abstract

Full Waveform Inversion (FWI) is a technique employed to attain a high resolution subsurface velocity model. However, FWI results are effected by the limited illumination of the model domain and the quality of that illumination, which is related to the quality of the data. Additionally, the high computational cost of FWI, compounded by the high dimensional nature of the model space, complicates the evaluation of model uncertainties. Recent work on applying neural networks to represent the velocity model for FWI demonstrated the network's ability to capture the salient features of the velocity model. The question we ask here is how reliable are these features in representing the observed data contribution within the model space (the posterior distribution). To address this question, we propose leveraging a conditional Convolutional Neural Network (CNN) as image prior to quantify the neural network uncertainties. Specifically, we add to the deep image prior concept a conditional channel, enabling the generation of various models corresponding to the specified condition. We initially train the conditional CNN to learn (store) samples from the prior distribution given by Gaussian Random Fields (GRF) based perturbations of the current velocity model. Subsequently, we use FWI to update the CNN model representation of the priors so that it can generate samples from the posterior distribution. These samples can be used to measure the approximate mean and standard deviation of the posterior distribution, as well as draw samples representing the posterior distribution. We demonstrate the effectiveness of the proposed approach on the Marmousi model and in a field data application.
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用于全波形反演不确定性量化的条件图像先验
全波形反演(FWI)是一种用于获得高分辨率地下速度模型的技术。然而,全波形反演的结果受到模型域的有限光照和光照质量的影响,而光照质量又与数据质量有关。此外,FWI 的计算成本很高,再加上模型空间的高维特性,使得模型不确定性的评估变得更加复杂。为了解决这个问题,我们建议利用条件卷积神经网络(CNN)作为图像先验来量化神经网络的不确定性。具体来说,我们在深度图像先验概念中添加了条件通道,从而能够生成与指定条件相对应的各种模型。最初,我们训练条件 CNN 从基于高斯随机场(GRF)的当前速度模型扰动给出的先验分布中学习(存储)样本。随后,我们使用 FWI 更新 CNN 模型对先验分布的表示,以便从后验分布中生成样本。这些样本可用于测量后验分布的近似平均值和标准偏差,以及绘制代表后验分布的样本。
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