posted on 2009-11-24, 14:29authored byThato K. Tsalaile, Reza Sameni, Saeid Sanei, Christian Jutten, Jonathon Chambers
A novel second-order-statistics-based sequential
blind extraction algorithm for blind extraction of quasi-periodic
signals, with time-varying period, is introduced in this paper.
Source extraction is performed by sequentially converging to a
solution that effectively diagonalizes autocorrelation matrices at
lags corresponding to the time-varying period, which thereby explicitly
exploits a key statistical nonstationary characteristic of the
desired source. The algorithm is shown to have fast convergence
and yields significant improvement in signal-to-interference ratio
as compared to when the algorithm assumes a fixed period. The
algorithm is further evaluated on the problem of separation of a
heart sound signal from real-world lung sound recordings. Separation
results confirm the utility of the introduced approach, and
listening tests are employed to further corroborate the results.
History
School
Mechanical, Electrical and Manufacturing Engineering
Citation
TSALAILE, T. ... et al, 2009. Sequential blind source extraction for quasi-periodic signals with time-varying period. IEEE Transactions on Biomedical Engineering, 56 (3), pp. 646-655.