Threshold performance of MUSIC when using the forward-backward data matrix

Author:Shahapurkar, N; Ramalingam, CS

Article Title:Threshold performance of MUSIC when using the forward-backward data matrix

Abstract:
The multiple signal classification (MUSIC) frequency estimator is a suboptimal method for estimating the frequencies of multiple sinusoids buried in white noise and has a threshold of around 14 dB for the well-known two-sinusoid example (equal amplitudes f(1) = 0.52, f(2) = 0.5, phi(1) = pi/4, and phi(2) = 0). We point out that this threshold value is the result of estimating the autocorrelation estimates using the forward data matrix alone. Instead, if the autocorrelation estimates are obtained from the forward-backward data matrix, the threshold is lowered to 4 dB (lower than Kumaresan-Tufts method's 7 dB and within 1 dB of maximum-likelihood estimator). We offer an explanation of why the threshold is lowered by examining the noiseless autocorrelation matrix based on the forward and forward-backward data matrices. Also, it is well known that the Cramer-Rao lower bound (CRLB) is also a function of the relative phases. We point out that when phi(1) = pi/2, the estimates obtained using MUSIC become increasingly biased and cause the variance to fall below CRLB at 23 dB for the forward-backward root MUSIC and at 25 dB for forward-only root MUSIC. The use of the forward-backward data matrix in spectral estimation is not novel, but to our knowledge, the improvement in threshold for phi(1) = pi/4 has not been reported, nor the comparative performance as phi(1) varies.

Keywords: frequency estimation

DOI: 10.1109/LSP.2005.861584

Source:IEEE SIGNAL PROCESSING LETTERS

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