The resolution of seismic section images can directly affect the subsequent interpretation of seismic data. In order to improve the spatial resolution of low-resolution seismic section images, a super-resolution reconstruction method based on multi-scale convolution is proposed. This method designs a multi-scale convolutional neural network to learn high-low resolution image feature pairs, and realizes mapping learning from low-resolution seismic section images to high-resolution seismic section images. This multi-scale convolutional neural network model consists of four convolutional layers and a sub-pixel convolutional layer. Convolution operations are used to learn abundant seismic section image features, and sub-pixel convolution layer ...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
To better extract feature maps from low-resolution (LR) images and recover high-frequency informatio...
Aiming at the problems of weak inter-layer connections, single network concerns and insufficient uti...
The resolution of seismic section images can directly affect the subsequent interpretation of seismi...
Seismic data plays a vital role in oil and gas exploration and geological exploration.Accurate and d...
Single-image super-resolution technology has made great progress with the development of the convolu...
Fault imaging follows the processing and migration imaging of seismic data, which is very important ...
Abstract Background Magnetic resonance (MR) images are usually limited by low spatial resolution, wh...
With the constant update of deep learning technology, the super-resolution reconstruction technology...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...
Image super-resolution reconstruction has been widely used in remote sensing, medicine and other fie...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
Deep convolutional neural networks (CNNs) are successful in single-image super-resolution. Tradition...
Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reser...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
To better extract feature maps from low-resolution (LR) images and recover high-frequency informatio...
Aiming at the problems of weak inter-layer connections, single network concerns and insufficient uti...
The resolution of seismic section images can directly affect the subsequent interpretation of seismi...
Seismic data plays a vital role in oil and gas exploration and geological exploration.Accurate and d...
Single-image super-resolution technology has made great progress with the development of the convolu...
Fault imaging follows the processing and migration imaging of seismic data, which is very important ...
Abstract Background Magnetic resonance (MR) images are usually limited by low spatial resolution, wh...
With the constant update of deep learning technology, the super-resolution reconstruction technology...
A common issue of seismic data analysis consists in the lack of regular and densely sampled seismic ...
Image super-resolution reconstruction has been widely used in remote sensing, medicine and other fie...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
Deep convolutional neural networks (CNNs) are successful in single-image super-resolution. Tradition...
Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reser...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
Convolutional neural network- (CNN-) based deep learning (DL) architectures have achieved great succ...
To better extract feature maps from low-resolution (LR) images and recover high-frequency informatio...
Aiming at the problems of weak inter-layer connections, single network concerns and insufficient uti...