Publication | Closed Access
Blind MIMO identification using the second characteristic function
16
Citations
25
References
2005
Year
Mimo SystemStatistical Signal ProcessingBlind IdentificationEngineeringMultiuser MimoBlind Mimo IdentificationSpectrum EstimationInverse ProblemsPermutation AmbiguitiesMatrix SequencePublic HealthSystem IdentificationFunctional Data AnalysisSignal ProcessingChannel EstimationStatisticsSignal Separation
We propose a new approach for the blind identification of a multi-input-multi-output (MIMO) system. As a substitute to using "classical" high-order statistics (HOS) in the form of time-lagged joint cumulants, or polyspectra, we use the estimated Hessian matrices of the second joint generalized characteristic function of time-lagged observations, evaluated at several preselected "processing-points." These matrices admit straightforward consistent estimates, whose statistical stability can be finely tuned (by proper selection of the processing-points)-in contrast to classical HOS. Transforming the obtained matrix sequence into the frequency-domain, we obtain (and solve) a sequence of frequency-dependent joint diagonalization problems. This yields a set of estimated frequency response matrices, which are transformed back into the time domain after resolving frequency-dependent phase and permutation ambiguities. The performance of the proposed algorithm depends on the choice of processing-points, yet compares favorably with other algorithms, especially at moderate signal-to-noise ratio conditions, as we demonstrate in simulation results.
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