论文标题
通过自我监督的盲目痕迹深度学习方案抑制连贯的噪声
Coherent noise suppression via a self-supervised blind-trace deep learning scheme
论文作者
论文摘要
连贯的噪声会定期困扰地震记录,从而导致源自下线处理和成像任务的产品中的人工制品和不确定性。在自然图像和医学图像中,深度学习的出色能力最近刺激了神经网络在地震数据降级的背景下的许多应用。大多数此类方法的局限性是监督深度学习过程,并需要清洁(无噪声)数据作为培训网络的目标。最近提出了盲点网络来克服这一要求,从而使训练可以直接在嘈杂的场数据上进行,以作为随机噪声的强大抑制器。对盲点方法的仔细适应可以扩展到连贯的噪声抑制。在这项工作中,我们扩展了盲点网络的方法论,以创建一个成功消除痕量连贯噪声的盲目网络。通过广泛的合成分析,我们说明了Denoising过程对不同噪声水平的鲁棒性以及射击收集器中的嘈杂痕迹的数量。结果表明,当多达60%的原始痕迹嘈杂时,网络可以准确地学会抑制噪声。此外,提出的过程是在Stratton 3D字段数据集上实现的,并被证明可以恢复先前损坏的直接到达。我们适应用于自我监督,痕量抑制痕量噪声的盲点网络可能导致其他用例,例如抑制由井场活动,通过船只或附近的工业活动引起的相干噪声。
Coherent noise regularly plagues seismic recordings, causing artefacts and uncertainties in products derived from down-the-line processing and imaging tasks. The outstanding capabilities of deep learning in denoising of natural and medical images have recently spur a number of applications of neural networks in the context of seismic data denoising. A limitation of the majority of such methods is that the deep learning procedure is supervised and requires clean (noise-free) data as a target for training the network. Blindspot networks were recently proposed to overcome this requirement, allowing training to be performed directly on the noisy field data as a powerful suppressor of random noise. A careful adaptation of the blind-spot methodology allows for an extension to coherent noise suppression. In this work, we expand the methodology of blind-spot networks to create a blind-trace network that successfully removes trace-wise coherent noise. Through an extensive synthetic analysis, we illustrate the denoising procedure's robustness to varying noise levels, as well as varying numbers of noisy traces within shot gathers. It is shown that the network can accurately learn to suppress the noise when up to 60% of the original traces are noisy. Furthermore, the proposed procedure is implemented on the Stratton 3D field dataset and is shown to restore the previously corrupted direct arrivals. Our adaptation of the blind-spot network for self-supervised, trace-wise noise suppression could lead to other use-cases such as the suppression of coherent noise arising from wellsite activity, passing vessels or nearby industrial activity.