AbstractAnalyzing seismic data to get information about earthquakes has always been a major task for seismologists and, more in general, for geophysicists. Recently, thanks to the technological development of observation systems, more and more data are available to perform such tasks. However, this data "grow up" makes "human possibility" of data processing more complex in terms of required efforts and time demanding. That is why new technological approaches such as artificial intelligence are becoming very popular and more and more exploited. In this paper, we explore the possibility of interpreting seismic waveform segments by means of pre-trained deep learning. More specifically, we apply convolutional networks to seismological waveforms...
Abstract We present a new strategy for reliable automatic classification of local seismic signals an...
We present a new strategy for reliable automatic classification of local seismic signals and volcano...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
AbstractWe examine the plausibility of using an Artificial Neural Network (ANN) and an Importance-Ai...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
To optimally monitor earthquake‐generating processes, seismologists have sought to lower detection s...
As seismic networks continue to spread and monitoring sensors become more ef¿cient, the abundance of...
Most seismological analysis methods require knowledge of the geographic location of the stations com...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
Reliable earthquake forecasting methods have long been sought after, and so the rise of modern data ...
The ultimate goal of seismic data analysis is to retrieve high-resolution information about the subs...
A preliminary study is performed to test the ability of an artificial neural network (ANN) to detect...
The increase of available seismic data prompts the need for automatic processing procedures to fully...
Abstract We present a new strategy for reliable automatic classification of local seismic signals an...
We present a new strategy for reliable automatic classification of local seismic signals and volcano...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
AbstractWe examine the plausibility of using an Artificial Neural Network (ANN) and an Importance-Ai...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
To optimally monitor earthquake‐generating processes, seismologists have sought to lower detection s...
As seismic networks continue to spread and monitoring sensors become more ef¿cient, the abundance of...
Most seismological analysis methods require knowledge of the geographic location of the stations com...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
Reliable earthquake forecasting methods have long been sought after, and so the rise of modern data ...
The ultimate goal of seismic data analysis is to retrieve high-resolution information about the subs...
A preliminary study is performed to test the ability of an artificial neural network (ANN) to detect...
The increase of available seismic data prompts the need for automatic processing procedures to fully...
Abstract We present a new strategy for reliable automatic classification of local seismic signals an...
We present a new strategy for reliable automatic classification of local seismic signals and volcano...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...