Source separation techniques applied to linear prediction
Other authors
Publication date
2000Abstract
The prediction filters are well known models for signal
estimation, in communications, control and many others
areas. The classical method for deriving linear
prediction coding (LPC) filters is often based on the
minimization of a mean square error (MSE).
Consequently, second order statistics are only required,
but the estimation is only optimal if the residue is
independent and identically distributed (iid) Gaussian.
In this paper, we derive the ML estimate of the
prediction filter. Relationships with robust estimation of
auto-regressive (AR) processes, with blind
deconvolution and with source separation based on
mutual information minimization are then detailed. The
algorithm, based on the minimization of a high-order
statistics criterion, uses on-line estimation of the residue
statistics. Experimental results emphasize on the
interest of this approach.
Document Type
Object of conference
Language
English
Keywords
Processament de la parla
Pages
6 p.
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- Documents de Congressos [174]
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