Weighted maximum likelihood autoregressive and moving average spectrum modeling

We propose new algorithms for estimating autoregressive (AR), moving average (MA), and ARM A models in the spectral domain. These algorithms are derived from a maximum likelihood approach, where spectral weights are introduced in order to selectively enhance the accuracy on a predefined set of frequencies, while ignoring the other ones. This is of particular interest for modeling the spectral envelope of harmonic signals, whose spectrum only contains a discrete set of relevant coefficients. In the context of speech processing, our simulation results show that the proposed method provides a more accurate ARMA modeling of nasal vowels than the Durbin method.

[1]  James Durbin,et al.  The fitting of time series models , 1960 .

[2]  Piet M. T. Broersen,et al.  Time series analysis in a frequency subband , 2003, IEEE Trans. Instrum. Meas..

[3]  Axel Röbel,et al.  Improving Lpc Spectral Envelope Extraction Of Voiced Speech By True-Envelope Estimation , 2006, 2006 IEEE International Conference on Acoustics Speech and Signal Processing Proceedings.

[4]  Luis Weruaga All-Pole Estimation in Spectral Domain , 2007, IEEE Transactions on Signal Processing.

[5]  Amro El-Jaroudi,et al.  Discrete all-pole modeling , 1991, IEEE Trans. Signal Process..

[6]  Roland Badeau,et al.  High-resolution spectral analysis of mixtures of complex exponentials modulated by polynomials , 2006, IEEE Transactions on Signal Processing.

[7]  Steven Kay,et al.  Modern Spectral Estimation: Theory and Application , 1988 .