A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic traces. This problem is commonly tackled by rank optimization or statistical features learning algorithms, which allow interpolation and denoising of corrupted data. In this paper, we propose a completely novel approach for reconstructing missing traces of pre-stack seismic data, taking inspiration from computer vision and image processing latest developments. More specifically, we exploit a specific kind of convolutional neural networks known as convolutional autoencoder. We illustrate the advantages of using deep learning strategies with respect to state-of-the-art by comparing the achieved results over a well-known seismic dataset
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
This thesis studies imaging Earth’s interior with seismic wavefields for seismic exploration and mon...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...
Seismic data has often missing traces due to technical acquisition or economical constraints. A comp...
A properly designed skip-connection convolutional autoencoder deep generator is able to capture the ...
Irregularity and coarse spatial sampling of seismic data strongly affect the performances of process...
Acquisition of incomplete data, i.e., blended, sparsely sampled, and narrowband data, allows for cos...
For economic and efficiency reasons, blended acquisition of seismic data is becoming increasingly co...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Interpolation of seismic data is an important pre-processing step in most seismic processing workflo...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
In this work, we explore three deep learning algorithms apply to seismic interpolation: deep prior i...
Because of the restriction of complex field conditions and economic circumstance, seismic data is us...
Seismic studies exhibit gaps in the recorded data due to surface obstacles. To fill in the gaps with...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
This thesis studies imaging Earth’s interior with seismic wavefields for seismic exploration and mon...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...
Seismic data has often missing traces due to technical acquisition or economical constraints. A comp...
A properly designed skip-connection convolutional autoencoder deep generator is able to capture the ...
Irregularity and coarse spatial sampling of seismic data strongly affect the performances of process...
Acquisition of incomplete data, i.e., blended, sparsely sampled, and narrowband data, allows for cos...
For economic and efficiency reasons, blended acquisition of seismic data is becoming increasingly co...
During seismic acquisition, reflected waves from the subsurface are recorded by sensors in seismic c...
Interpolation of seismic data is an important pre-processing step in most seismic processing workflo...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
In this work, we explore three deep learning algorithms apply to seismic interpolation: deep prior i...
Because of the restriction of complex field conditions and economic circumstance, seismic data is us...
Seismic studies exhibit gaps in the recorded data due to surface obstacles. To fill in the gaps with...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
This thesis studies imaging Earth’s interior with seismic wavefields for seismic exploration and mon...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...