The potential of self-supervised networks for random noise suppression in seismic data

Claire Birnie, Matteo Ravasi, Sixiu Liu, Tariq Alkhalifah
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引用次数: 31

Abstract

Noise suppression is an essential step in many seismic processing workflows. A portion of this noise, particularly in land datasets, presents itself as random noise. In recent years, neural networks have been successfully used to denoise seismic data in a supervised fashion. However, supervised learning always comes with the often unachievable requirement of having noisy-clean data pairs for training. Using blind-spot networks, we redefine the denoising task as a self-supervised procedure where the network uses the surrounding noisy samples to estimate the noise-free value of a central sample. Based on the assumption that noise is statistically independent between samples, the network struggles to predict the noise component of the sample due to its randomicity, whilst the signal component is accurately predicted due to its spatio-temporal coherency. Illustrated on synthetic examples, the blind-spot network is shown to be an efficient denoiser of seismic data contaminated by random noise with minimal damage to the signal; therefore, providing improvements in both the image domain and down-the-line tasks, such as post-stack inversion. To conclude our study, the suggested approach is applied to field data and the results are compared with two commonly used random denoising techniques: FX-deconvolution and sparsity-promoting inversion by Curvelet transform. By demonstrating that blind-spot networks are an efficient suppressor of random noise, we believe this is just the beginning of utilising self-supervised learning in seismic applications.

自监督网络抑制地震数据随机噪声的潜力
噪声抑制是许多地震处理工作流程中必不可少的一步。这种噪声的一部分,特别是在土地数据集中,表现为随机噪声。近年来,神经网络已成功地用于地震数据的监督降噪。然而,监督式学习总是伴随着通常无法实现的要求,即需要无噪声的数据对来进行训练。利用盲点网络,我们将去噪任务重新定义为一个自监督过程,其中网络使用周围的噪声样本来估计中心样本的无噪声值。基于样本间噪声在统计上独立的假设,网络由于其随机性而难以预测样本的噪声成分,而信号成分由于其时空相干性而被准确预测。综合算例表明,盲点网络能有效地去噪受随机噪声污染的地震数据,且对信号的破坏最小;因此,在图像域和下行任务(如叠后反演)方面都提供了改进。最后,将该方法应用于野外数据,并将结果与两种常用的随机去噪技术(fx -反卷积和Curvelet稀疏增强反演)进行了比较。通过证明盲点网络是随机噪声的有效抑制器,我们相信这只是在地震应用中利用自监督学习的开始。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.20
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