计算机科学
口译(哲学)
人工智能
推论
引用
反向
机器学习
生成模型
生成语法
算法
图书馆学
数学
几何学
程序设计语言
作者
Fan Jiang,Konstantin Osypov,Julianna Toms
标识
DOI:10.1190/image2023-3907375.1
摘要
In this abstract, we show a novel machine learning-based diffusion model for seismic interpretation. In geophysics, reconstructing the subsurface structure from seismic data is an important inverse problem. Existing supervised machine learning (ML) solutions are to train a model to directly map measurements to seismic images, which are synthesized from images using a fixed velocity model. In this scenario, the generalization capability of models to the unknown measurement process could be hindered and out-of-distribution data could significantly reduce the inference accuracy from the pre-trained model. To address this issue, we implement the diffusion model, as a generative model, for the inverse interpretation problem and it provides a nature way to quantify uncertainty.
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