Title :
On digital signal modelling and classification with the teleseismic data
Author_Institution :
Southeastern Massachusetts University, Massachusetts
Abstract :
The first part of the paper deals with unified signal modelling with the teleseismic data by using the linear prediction theory in time series analysis. For an all-pole model, the unique relations among the linear prediction coefficients, cepstral coefficients, reflection coefficients, maximum entropy spectral estimation form a basis for a class of effective feature sets in seismic recognition. A good spectral fit is available with 15 linear prediction coefficients for a 1024- point digital seismic record. The second part of the paper deals with the classification of a seismic data base of 323 records. A short-term spectral feature set provides a 94.17% correct recognition based on 50 good learning samples per class and a weighted - distance one - nearest - neighbor decision rule. This result is superior to the 87.92% correct recognition by using Bayes decision rule with multivariate Gaussian density assumption, and to the 89.32% correct recognition by using autocovariance features as reported by the author at the 1977 IEEE ASSP Conference.
Keywords :
Cepstral analysis; Entropy; Explosions; Filters; Geophysics computing; Nearest neighbor searches; Prediction theory; Predictive models; Reflection; Testing;
Conference_Titel :
Acoustics, Speech, and Signal Processing, IEEE International Conference on ICASSP '78.
DOI :
10.1109/ICASSP.1978.1170380