Earthquake detection and phase identification are fundamental and challenging tasks in observational seismology. Deep learning has achieved considerable progress in these two tasks. To overcome the limitations of existing methods, mainly because of the lack of large labeled seismic datasets and the separation of detection and identification tasks, we introduced the continuous wavelet transform (CWT)- convolutional neural networks (CNN) Few-shot learning Earthquake model (CCFE), a deep learning model for simultaneous earthquake detection and phase identification. CCFE can perform few-shot learning with minimal labeled seismic data by utilizing continuous wavelet transform and lightweight convolutional neural networks with fewer layers. We te...
The authors here present a deep learning model that simultaneously detects earthquake signals and me...
Typical seismic waveform datasets comprise hundreds of thousands to millions of records. Compilation...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
Automatic detection of low-magnitude earthquakes has become an increasingly important research topic...
Abstract Low-frequency tremors have been widely detected in many tectonic zones, and are often locat...
The increasing volume of seismic data from long-term continuous monitoring motivates the development...
Earthquakes threaten people, homes, and infrastructure. Early warning systems provide prior warning ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
A major goal of installing seismic arrays is to detect and locate earthquakes. Earthquake detection ...
The increase of available seismic data prompts the need for automatic processing procedures to fully...
International audienceMachine learning is becoming increasingly important in scientific and technolo...
The detection and picking of seismic waves is the first step toward earthquake catalog building, ear...
When recording seismic ground motion in multiple sites using independent recording stations one need...
Passive seismics help us understand subsurface processes, for example, landslides, mining, geotherma...
The authors here present a deep learning model that simultaneously detects earthquake signals and me...
Typical seismic waveform datasets comprise hundreds of thousands to millions of records. Compilation...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
Automatic detection of low-magnitude earthquakes has become an increasingly important research topic...
Abstract Low-frequency tremors have been widely detected in many tectonic zones, and are often locat...
The increasing volume of seismic data from long-term continuous monitoring motivates the development...
Earthquakes threaten people, homes, and infrastructure. Early warning systems provide prior warning ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
A major goal of installing seismic arrays is to detect and locate earthquakes. Earthquake detection ...
The increase of available seismic data prompts the need for automatic processing procedures to fully...
International audienceMachine learning is becoming increasingly important in scientific and technolo...
The detection and picking of seismic waves is the first step toward earthquake catalog building, ear...
When recording seismic ground motion in multiple sites using independent recording stations one need...
Passive seismics help us understand subsurface processes, for example, landslides, mining, geotherma...
The authors here present a deep learning model that simultaneously detects earthquake signals and me...
Typical seismic waveform datasets comprise hundreds of thousands to millions of records. Compilation...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...