To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault detection tasks, we automatically generate 400 pairs of synthetic training datasets including 3D seismic images and the corresponding label images (including RGT and fault volumes) with the ground truth of the geologic structures simulated in the seismic images. 1) The "seis.zip" contains 400 3D seismic images and each image is with the dimension of 128X256X256; 2) The "rgt.zip" contains 400 RGT volumes and each volume is with the same dimension of 128X256X256. 3) The "fault.zip" contains 400 label images of the faults and each label image is with the same dimension of 128X256X256
4D Seismic data has proven invaluable in O&G asset management, however, it’s engineering challenges ...
Geophysical interpretation such as picking faults and geobodies, analyzing well logs, and picking ar...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
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...
RgtNet:using synthetic datasets to train an end-to-end CNN for 3-D RGT(Relative Geologic Time) estim...
The identification and characterization of faults is an important process that provides necessary kn...
To train our deep convolutional neural network for paleokarst delineation in 3D seismic images, we a...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
To train our deep convolutional neural network for paleokarst delineation in 3D seismic images, we a...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reser...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
4D Seismic data has proven invaluable in O&G asset management, however, it’s engineering challenges ...
Geophysical interpretation such as picking faults and geobodies, analyzing well logs, and picking ar...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
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...
RgtNet:using synthetic datasets to train an end-to-end CNN for 3-D RGT(Relative Geologic Time) estim...
The identification and characterization of faults is an important process that provides necessary kn...
To train our deep convolutional neural network for paleokarst delineation in 3D seismic images, we a...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
To train our deep convolutional neural network for paleokarst delineation in 3D seismic images, we a...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reser...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
4D Seismic data has proven invaluable in O&G asset management, however, it’s engineering challenges ...
Geophysical interpretation such as picking faults and geobodies, analyzing well logs, and picking ar...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...