Title :
Block adaptive filters with deterministic reference inputs for event-related signals: BLMS and BRLS
Author :
Olmos, Salvador ; Sörnmo, Leif ; Laguna, Pablo
Author_Institution :
Dept. of Electroscience, Lund Univ., Sweden
fDate :
5/1/2002 12:00:00 AM
Abstract :
Adaptive estimation of the linear coefficient vector in truncated expansions is considered for the purpose of modeling noisy, recurrent signals. Two different criteria are studied for block-wise processing of the signal: the mean square error (MSE) and the least squares (LS) error. The block LMS (BLMS) algorithm, being the solution of the steepest descent strategy for minimizing the MSE, is shown to be steady-state unbiased and with a lower variance than the LMS algorithm. It is demonstrated that BLMS is equivalent to an exponential averager in the subspace spanned by the truncated set of basis functions. The block recursive least squares (BRLS) solution is shown to be equivalent to the BLMS algorithm with a decreasing step size. The BRLS is unbiased at any occurrence number of the signal and has the same steady-state variance as the BLMS but with a lower variance at the transient stage. The estimation methods can be interpreted in terms of linear, time-variant filtering. The performance of the methods is studied on an ECG signal, and the results show that the performance of the block algorithms is superior to that of the LMS algorithm. In addition, measurements with clinical interest are found to be more robustly estimated in noisy signals
Keywords :
adaptive estimation; adaptive filters; adaptive signal processing; electrocardiography; filtering theory; least mean squares methods; medical signal processing; noise; time-varying filters; BLMS algorithm; BRLS; ECG signal; LMS algorithm; MSE; adaptive estimation; block LMS algorithm; block adaptive filters; block recursive least squares; block-wise signal processing; deterministic reference inputs; estimation methods; event-related signals; exponential averager; least squares error; linear filtering; mean square error; noisy signals; recurrent signals; steady-state variance; steepest descent; step size; time-variant filtering; truncated basis functions; Adaptive estimation; Adaptive filters; Filtering; Least squares approximation; Least squares methods; Mean square error methods; Nonlinear filters; Signal processing; Steady-state; Vectors;
Journal_Title :
Signal Processing, IEEE Transactions on