posted on 2010-02-04, 17:20authored bySaeid Sanei, Wenwu Wang, Jonathon Chambers
Permutation of the outputs at different frequency bins
remains as a major problem in the convolutive blind source
separation (BSS). In this work a coupled Hidden Markov
model (CHMM) effectively exploits the psychoacoustic
characteristics of signals to mitigate such permutation. A
joint diagonalization algorithm for convolutive BSS, which
incorporates a non-unitary penalty term within the crosspower
spectrum-based cost function in the frequency
domain, has been used. The proposed CHMM system
couples a number of conventional HMMs, equivalent to the
number of outputs, by making state transitions in each
model dependent not only on its own previous state, but
also on some aspects of the state of the other models. Using
this method the permutation effect has been substantially
reduced, and demonstrated using a number of simulation
studies.
History
School
Mechanical, Electrical and Manufacturing Engineering
Citation
SANEI, S., WANG, W. and CHAMBERS, J.A., 2004. A coupled HMM for solving the permutation problem in frequency domain BSS. IN: Proceedings of 2004 IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP '04), Montreal, Quebec, 17-21 May, Vol. 5, pp. 565-8.