Typical seismic waveform data sets comprise hundreds of thousands to millions of records. Compilation is performed by time-consuming handpicking of phase arrival times, or signal processing algorithms such as cross-correlation. The latter generally underperform compared to handpicking. However, differences in picking methods creates variations in models and interpretation of Earth's structure. Here, we exploit the pattern recognition capabilities of Convolutional Neural Networks (CNN). Using a large handpicked data set, we train a CNN model to identify the seismic shear phase SS. This accelerates, automates, and makes consistent data compilation, a task usually completed by visual inspection and influenced by scientists' choices. The CNN mo...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
In recent years, Convolutional Neural Networks (CNNs), that are most commonly applied to visual imag...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
Typical seismic waveform data sets comprise hundreds of thousands to millions of records. Compilatio...
Typical seismic waveform datasets comprise hundreds of thousands to millions of records. Compilation...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
Shear wave splitting (SWS) analysis is widely used to provide critical constraints on crustal and ma...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
The ability to handle large amounts of data automatically is essential for any major tomographic inv...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
International audienceWith the deployment of high quality and dense permanent seismic networks over ...
A feasible solution for seismic event detection and phase picking is prototyped on an embedded syste...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
In recent years, Convolutional Neural Networks (CNNs), that are most commonly applied to visual imag...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
Typical seismic waveform data sets comprise hundreds of thousands to millions of records. Compilatio...
Typical seismic waveform datasets comprise hundreds of thousands to millions of records. Compilation...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
Shear wave splitting (SWS) analysis is widely used to provide critical constraints on crustal and ma...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
The ability to handle large amounts of data automatically is essential for any major tomographic inv...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
International audienceWith the deployment of high quality and dense permanent seismic networks over ...
A feasible solution for seismic event detection and phase picking is prototyped on an embedded syste...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
In recent years, Convolutional Neural Networks (CNNs), that are most commonly applied to visual imag...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...