On maximum-likelihood localization of coherent signals

IEEE Transactions on Signal Processing(1996)

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摘要
We consider the problem of localizing multiple signal sources in the special case where all the signals are known a priori to be coherent. A maximum-likelihood estimator (MLE) is constructed for this special case, and its asymptotical performance is analyzed via the Cramer-Rao bound (CRB). It is proved that the CRB for this case is identical to the CRB for the case that no prior knowledge on coherency is exploited, thus establishing a quite surprising result that, asymptotically, the localization errors are not reduced by exploiting this prior knowledge. Also, we prove that in the coherent case the deterministic signals model and the stochastic signals model yield MLE's that are asymptotically identical. Simulation results confirming these theoretical results are included
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asymptotical performance,special case,deterministic signals model,maximum-likelihood localization,coherent signal,multiple signal source,maximum-likelihood estimator,coherent case,simulation result,stochastic signals model yield,prior knowledge,localization error,maximum likelihood,simulation,sonar,passive radar,seismology,cramer rao bound,maximum likelihood estimator,stochastic processes,maximum likelihood estimation,maximum likelihood estimate
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