Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reservoir characterization, and well placement. Basically, faults have the appearance of lateral reflection discontinuities in seismic images and are interpreted using seismic attributes that measure those discontinuities such as coherence, and curvature. However, methods based on seismic attributes are often more challenging, time-consuming, and may suffer from noises and sensitivity of stratigraphic features, which also tie in reflection discontinuities. Therefore, we propose a solution for delineating faults from 3D seismic images using a supervised fully convolutional neural network (CNN). This approach uses a pixel-by-pixel prediction in 3D s...
Tectonic interpretation is critical to a coal mine’s safe production, and fault interpretation is an...
Fault detection technique using neural networks have been successfully applied to a seismic data vol...
For hydrocarbon exploration, large volumes of data are acquired and used in physical modeling-based ...
The identification and characterization of faults is an important process that provides necessary kn...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
Seismic fault structures are important for the detection and exploitation of hydrocarbon resources. ...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
Fault imaging follows the processing and migration imaging of seismic data, which is very important ...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Tectonic interpretation is critical to a coal mine’s safe production, and fault interpretation is an...
Fault detection technique using neural networks have been successfully applied to a seismic data vol...
For hydrocarbon exploration, large volumes of data are acquired and used in physical modeling-based ...
The identification and characterization of faults is an important process that provides necessary kn...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
Seismic fault structures are important for the detection and exploitation of hydrocarbon resources. ...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
Fault imaging follows the processing and migration imaging of seismic data, which is very important ...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Tectonic interpretation is critical to a coal mine’s safe production, and fault interpretation is an...
Fault detection technique using neural networks have been successfully applied to a seismic data vol...
For hydrocarbon exploration, large volumes of data are acquired and used in physical modeling-based ...