噪音(视频)
计算机科学
降噪
地质学
衰减
区域地质
领域(数学)
监督学习
人工智能
地震学
人工神经网络
末端学
图像(数学)
数学
构造学
物理
纯数学
光学
作者
Sixiu Liu,Claire Birnie,Andrey Bakulin,Ali Dawood,Ilya Silvestrov,Tariq Alkhalifah
标识
DOI:10.1111/1365-2478.13522
摘要
Abstract In recent years, self‐supervised procedures have advanced the field of seismic noise attenuation, due to not requiring a massive amount of clean labelled data in the training stage, an unobtainable requirement for seismic data. However, current self‐supervised methods usually suppress simple noise types, such as random and trace‐wise noise, instead of the complicated, aliased ground roll. Here, we propose an adaptation of a self‐supervised procedure, namely, blind‐fan networks, to remove aliased ground roll within seismic shot gathers without any requirement for clean data. The self‐supervised denoising procedure is implemented by designing a noise mask with a predefined direction to avoid the coherency of the ground roll being learned by the network while predicting one pixel's value. Numerical experiments on synthetic and field seismic data demonstrate that our method can effectively attenuate aliased ground roll.
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