Title :
Classification of Seismic Volcanic Signals Using Hidden-Markov-Model-Based Generative Embeddings
Author :
Bicego, Manuele ; Acosta-Munoz, C. ; Orozco-Alzate, Mauricio
Author_Institution :
Dept. of Comput. Sci., Univ. of Verona, Verona, Italy
Abstract :
The automated classification of seismic volcanic signals has been faced with several different pattern recognition approaches. Among them, hidden Markov models (HMMs) have been advocated as a cost-effective option having the advantages of a straightforward Bayesian interpretation and the capacity of dealing with seismic sequences of different lengths. In the volcano seismology scenario, HMM-based classification schemes were only based on a standard and purely generative scheme, i.e., the Bayes rule: training an HMM per class and classifying an incoming seismic signal according to the class whose model shows the highest likelihood. In this paper, a novel HMM-based classification approach for pretriggered seismic volcanic signals is proposed. The main idea is to enrich the classical HMM scheme with a discriminative step that is able to recover from situations when the classical Bayes classification rule is not sufficient. More in detail, a generative embedding scheme is used, which employs the models to map the signals into a vector space, which is called generative embedding space. In such a space, any discriminative vector-based classifier can be applied. A thorough set of experiments, which is carried out on pretriggered signals recorded at Galeras Volcano in Colombia, shows that the proposed approach typically outperforms standard HMM-based classification schemes, also in some cross-station cases.
Keywords :
Bayes methods; geophysical signal processing; hidden Markov models; pattern recognition; seismology; signal classification; volcanology; Bayes rule; Colombia; Galeras Volcano; HMM; automated classification; classical Bayes classification rule; discriminative vector-based classifier; generative embedding space; hidden-Markov-model-based generative embeddings; pattern recognition approaches; pretriggered seismic volcanic signals; pretriggered signals; seismic sequences; seismic volcanic signal classification; straightforward Bayesian interpretation; vector space; volcano seismology scenario; Computational modeling; Earthquakes; Hidden Markov models; Standards; Training; Vectors; Volcanoes; Generative embeddings; hidden Markov models (HMMs); pattern recognition; seismic volcanic signals; volcano seismology;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2012.2220370