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A subspace-based direction finding algorithm using fractional lower order statistics
216
Citations
13
References
2001
Year
Mathematical ProgrammingNumerical AnalysisMusicEngineeringFlom-multiple Signal ClassificationSpectrum EstimationSubspace-based DirectionLocalizationStatistical Signal ProcessingAudio Signal ProcessingNoiseMultilinear Subspace LearningSignal DetectionApproximation TheoryLow-rank ApproximationMultidimensional Signal ProcessingInverse ProblemsSpatial FilteringSignal ProcessingDigital AudioFlom-based MatricesFlom Parameter P
We propose several classes of fractional lower order moment (FLOM)-based matrices that can be used with MUSIC to estimate the DOAs of independent circular signals embedded in additive S/spl alpha/S (symmetric /spl alpha/ stable) noise (e.g., sea clutter). We run simulations with different choices of the FLOM parameter p for our FLOM-based matrices and conclude that when the noise is S/spl alpha/S with unknown /spl alpha//spl ne/2, FLOM-multiple signal classification (MUSIC) with p close to unity yields good performance. The performance of FLOM-MUSIC and robust covariation-based (ROC)-MUSIC are similar. Three scenarios that contain circular signals (phase modulation (PM), circularly symmetrical Gaussian, and quaternary phase-shift keying (QPSK)) and one scenario that contains noncircular signals (binary phase-shift keying (BPSK)), all embedded in the same S/spl alpha/S noise, are tested. These simulation results reveal that the scenario containing BPSK signals leads to poor performance, indicating that FLOM-MUSIC is presently limited to circular signals.
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