Generative Diffusion Model for Seismic Imaging Improvement of Sparsely Acquired Data and Uncertainty Quantification

Xingchen Shi, Shijun Cheng, Weijian Mao, Wei Ouyang
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Abstract

Seismic imaging from sparsely acquired data faces challenges such as low image quality, discontinuities, and migration swing artifacts. Existing convolutional neural network (CNN)-based methods struggle with complex feature distributions and cannot effectively assess uncertainty, making it hard to evaluate the reliability of their processed results. To address these issues, we propose a new method using a generative diffusion model (GDM). Here, in the training phase, we use the imaging results from sparse data as conditional input, combined with noisy versions of dense data imaging results, for the network to predict the added noise. After training, the network can predict the imaging results for test images from sparse data acquisition, using the generative process with conditional control. This GDM not only improves image quality and removes artifacts caused by sparse data, but also naturally evaluates uncertainty by leveraging the probabilistic nature of the GDM. To overcome the decline in generation quality and the memory burden of large-scale images, we develop a patch fusion strategy that effectively addresses these issues. Synthetic and field data examples demonstrate that our method significantly enhances imaging quality and provides effective uncertainty quantification.
用于改进稀疏采集数据地震成像和不确定性量化的生成扩散模型
稀疏采集数据的地震成像面临着图像质量低、不连续性和迁移摆动伪影等挑战。现有的基于卷积神经网络(CNN)的方法难以应对复杂的特征分布,无法有效评估不确定性,因此很难评估其处理结果的可靠性。为了解决这些问题,我们提出了一种使用生成扩散模型(GDM)的新方法。在训练阶段,我们使用稀疏数据的成像结果作为条件输入,结合高密度数据成像结果的噪声版本,让网络预测增加的噪声。经过训练后,网络就能利用条件控制的生成过程,预测稀疏数据采集的测试图像的成像结果。这种 GDM 不仅能提高图像质量,消除稀疏数据造成的伪影,还能利用 GDM 的概率性质自然地评估不确定性。为了克服生成质量下降和大规模图像的内存负担,我们开发了一种能有效解决这些问题的补丁融合策略。合成和实地数据实例表明,我们的方法显著提高了成像质量,并提供了有效的不确定性量化。
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