Nowadays, an increasing amount of seismic data is collected by daily observatory routines. The basic step for successfully analyzing those data is the correct detection of various event types. However, the visually scanning process is a time-consuming task. Applying standard techniques for detection like the STA/LTA trigger still requires the manual control for classification. Here, we present a useful alternative. The incoming data stream is scanned automatically for events of interest. A stochastic classifier, called hidden Markov model, is learned for each class of interest enabling the recognition of highly variable waveforms. In contrast to other automatic techniques as neural networks or support vector machines the algorithm allows to...
International audienceThe prediction of volcanic eruptions and the evaluation of associated risks re...
Abstract We present a new strategy for reliable automatic classification of local seismic signals an...
Seismic energy radiation at Soufrière Hills volcano, Montserrat, is made up by various types of tran...
This paper presents a fully automatic method for seismic event classification within a sparse region...
AbstractThis paper presents a fully automatic method for seismic event classification within a spars...
Continuous seismic monitoring has achieved a key position in monitoring active volcanoes. However, i...
This paper reports on the classification of earthquakes and false events (thunders, quarry blasts an...
This paper reports on the classification of earthquakes and false events (thunders, quarry blasts an...
Snow avalanches generate seismic signals as many other mass movements. Detection of avalanches by se...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
We present a new strategy for reliable automatic classification of local seismic signals and volcano...
International audienceSeismic activity at La Soufrière volcano of Guadeloupe is composed of various ...
The computing techniques currently available for the seismic monitoring allow advanced analysis. How...
International audienceThe prediction of volcanic eruptions and the evaluation of associated risks re...
Abstract We present a new strategy for reliable automatic classification of local seismic signals an...
Seismic energy radiation at Soufrière Hills volcano, Montserrat, is made up by various types of tran...
This paper presents a fully automatic method for seismic event classification within a sparse region...
AbstractThis paper presents a fully automatic method for seismic event classification within a spars...
Continuous seismic monitoring has achieved a key position in monitoring active volcanoes. However, i...
This paper reports on the classification of earthquakes and false events (thunders, quarry blasts an...
This paper reports on the classification of earthquakes and false events (thunders, quarry blasts an...
Snow avalanches generate seismic signals as many other mass movements. Detection of avalanches by se...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
We present a new strategy for reliable automatic classification of local seismic signals and volcano...
International audienceSeismic activity at La Soufrière volcano of Guadeloupe is composed of various ...
The computing techniques currently available for the seismic monitoring allow advanced analysis. How...
International audienceThe prediction of volcanic eruptions and the evaluation of associated risks re...
Abstract We present a new strategy for reliable automatic classification of local seismic signals an...
Seismic energy radiation at Soufrière Hills volcano, Montserrat, is made up by various types of tran...