Seismic data noise processing is an important part of seismic exploration data processing, and the effect of noise elimination is directly related to the follow-up processing of data. In response to this problem, many authors have proposed methods based on rank reduction, sparse transformation, domain transformation, and deep learning. However, such methods are often not ideal when faced with strong noise. Therefore, we propose to use diffusion model theory for noise removal. The Bayesian equation is used to reverse the noise addition process, and the noise reduction work is divided into multiple steps to effectively deal with high-noise situations. Furthermore, we propose to evaluate the noise level of blind Gaussian seismic data using pri...
The noise attenuation of seismic data is an indispensable part of seismic data processing, directly ...
An ever-present feature in seismic data, noise affects outcomes of processing and imaging algorithms...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
Random noise attenuation in seismic data requires employing leading-edge methods to attain reliable ...
Seismic field data are usually contaminated by random or complex noise, which seriously affect the q...
Seismic data often undergoes severe noise due to environmental factors, which seriously affects subs...
In recent years, distributed optical fiber acoustic sensing (DAS) technology has been increasingly u...
A constant feature in seismic data, noise is particularly troublesome for passive seismic monitoring...
Seismic signals are generally spread across many data samples of the recorded data. Applying a mathe...
In seismic exploration, random noise deteriorates the quality of acquired data. This study analyzed ...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Simultaneous shooting achieves a much faster seismic acquisition but poses a challenging problem for...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
International audienceNoise attenuation is a major seismic data processing concern. In seismic data,...
Random noise is unavoidable in seismic data acquisition due to anthropogenic impacts or environmenta...
The noise attenuation of seismic data is an indispensable part of seismic data processing, directly ...
An ever-present feature in seismic data, noise affects outcomes of processing and imaging algorithms...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
Random noise attenuation in seismic data requires employing leading-edge methods to attain reliable ...
Seismic field data are usually contaminated by random or complex noise, which seriously affect the q...
Seismic data often undergoes severe noise due to environmental factors, which seriously affects subs...
In recent years, distributed optical fiber acoustic sensing (DAS) technology has been increasingly u...
A constant feature in seismic data, noise is particularly troublesome for passive seismic monitoring...
Seismic signals are generally spread across many data samples of the recorded data. Applying a mathe...
In seismic exploration, random noise deteriorates the quality of acquired data. This study analyzed ...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Simultaneous shooting achieves a much faster seismic acquisition but poses a challenging problem for...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
International audienceNoise attenuation is a major seismic data processing concern. In seismic data,...
Random noise is unavoidable in seismic data acquisition due to anthropogenic impacts or environmenta...
The noise attenuation of seismic data is an indispensable part of seismic data processing, directly ...
An ever-present feature in seismic data, noise affects outcomes of processing and imaging algorithms...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...