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Journal ArticleDOI

Low-Frequency Desert Noise Intelligent Suppression in Seismic Data Based on Multiscale Geometric Analysis Convolutional Neural Network

Yuxing Zhao, +2 more
- 01 Jan 2020 - 
- Vol. 58, Iss: 1, pp 650-665
TLDR
A multiscale geometric analysis (MGA) convolutional neural network (CNN) is proposed, which can achieve good results even under a low SNR and can effectively suppress the low-frequency noise, and the effective signal almost has no energy loss.
Abstract
Existing denoising algorithms often need to meet some premise assumptions and applicable conditions, such as the signal-to-noise ratio (SNR) cannot be too low, and the noise needs to obey a specific distribution (such as Gaussian distribution) and to satisfy some properties (such as stationarity). For the desert noise that shares the same frequency band with the effective signal and has complex characteristics (nonlinear, nonstationary, and non-Gaussian), it is difficult to find a universally applicable method. In response to this problem, a multiscale geometric analysis (MGA) convolutional neural network (CNN) is proposed in this article. One of the most important features of the CNN is that it can extract data-rich intrinsic information from the training set without relying on a priori assumption. By introducing the CNN into the MGA, a new kind of denoising method can be created, which can achieve good results even under a low SNR. This article takes the nonsubsampled contourlet transform as an example to create a denoising network named NC-CNN for high-efficiency and intelligent denoising of desert seismic data. The processing results of synthetic seismic records and field seismic records prove that NC-CNN can effectively suppress the low-frequency noise (random noise and surface wave), and the effective signal almost has no energy loss. In addition, the reconstruction ability of the missing signals is also an advantage of this method.

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Citations
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Journal ArticleDOI

DCNNs-Based Denoising With a Novel Data Generation for Multidimensional Geological Structures Learning

TL;DR: The denoising results demonstrate that DCNNs learned from the multidimensional geological structures can accomplish the self-adaptive random noise attenuation, and meanwhile preserve spatial geological structures.
Journal ArticleDOI

Attention and Hybrid Loss Guided Deep Learning for Consecutively Missing Seismic Data Reconstruction

TL;DR: Wang et al. as discussed by the authors proposed a hybrid loss function for missing trace reconstruction, which combines the attention mechanism and the structural similarity loss to obtain more reasonable results than networks without attention mechanism in large gap situation.
Journal ArticleDOI

Attribute-Based Double Constraint Denoising Network for Seismic Data

TL;DR: Li et al. as mentioned in this paper proposed attribute-based double constraint denoising network (Att-DCDN), which applies encoder-decoder and attribute classifier to constitute the generative adversarial network (GAN) and attenuates seismic noise by controlling with/without target attributes (noise attribute and signal attribute).
Journal ArticleDOI

Seismic Random Noise Suppression by Using Adaptive Fractal Conservation Law Method Based on Stationarity Testing

TL;DR: An adaptive FCL methodology is proposed by combining the seismic noise analyzing theory and stationarity testing techniques that can remove the random noise from seismic record and effectively preserve the reflection events.
Journal ArticleDOI

Denoising Deep Learning Network Based on Singular Spectrum Analysis—DAS Seismic Data Denoising With Multichannel SVDDCNN

TL;DR: In this article , a denoising neural network based on singular spectrum analysis is proposed for vertical seismic profile (VSP) acquisition, which can simultaneously extract data features from singular spectrum instead of the time domain.
References
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Proceedings Article

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Journal ArticleDOI

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Journal ArticleDOI

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Journal ArticleDOI

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Book ChapterDOI

Translation-Invariant De-Noising

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