Random noise is unavoidable in seismic data acquisition due to anthropogenic impacts or environmental influences. Therefore, random noise suppression is a fundamental procedure in seismic signal processing. Herein, a deep denoising convolutional autoencoder network based on self-supervised learning was developed herein to attenuate seismic random noise. Unlike conventional methods, our approach did not use synthetic clean data or denoising results as a training label to build the training and test sets. We directly used patches of raw noise data to establish the training set. Subsequently, we designed a robust deep convolutional neural network (CNN), which only depended on the input noise dataset to learn hidden features. The mean square er...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Deep Convolutional Neural Networks (DCNN) have the ability to learn complex features and are thus wi...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...
Seismic field data are usually contaminated by random or complex noise, which seriously affect the q...
The aim of this thesis has been to look at the possibility of using a convolutional neural network t...
The noise attenuation of seismic data is an indispensable part of seismic data processing, directly ...
Seismic data often undergoes severe noise due to environmental factors, which seriously affects subs...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
The neural network denoising technique has achieved impressive results by being able to automaticall...
In recent years, distributed optical fiber acoustic sensing (DAS) technology has been increasingly u...
For economic and efficiency reasons, blended acquisition of seismic data is becoming increasingly co...
Marine seismic interference noise occurs when energy from nearby marine seismic source vessels is re...
When reconstructing seismic data, the traditional singular value decomposition (SVD) denoising metho...
Optical fiber seismic exploration technology has been widely used in marine oil and gas hydrate expl...
We propose a novel seismic signal processing approach to efficiently and effectively attenuate seism...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Deep Convolutional Neural Networks (DCNN) have the ability to learn complex features and are thus wi...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...
Seismic field data are usually contaminated by random or complex noise, which seriously affect the q...
The aim of this thesis has been to look at the possibility of using a convolutional neural network t...
The noise attenuation of seismic data is an indispensable part of seismic data processing, directly ...
Seismic data often undergoes severe noise due to environmental factors, which seriously affects subs...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
The neural network denoising technique has achieved impressive results by being able to automaticall...
In recent years, distributed optical fiber acoustic sensing (DAS) technology has been increasingly u...
For economic and efficiency reasons, blended acquisition of seismic data is becoming increasingly co...
Marine seismic interference noise occurs when energy from nearby marine seismic source vessels is re...
When reconstructing seismic data, the traditional singular value decomposition (SVD) denoising metho...
Optical fiber seismic exploration technology has been widely used in marine oil and gas hydrate expl...
We propose a novel seismic signal processing approach to efficiently and effectively attenuate seism...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Deep Convolutional Neural Networks (DCNN) have the ability to learn complex features and are thus wi...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...