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Reduced polynomial order linear prediction

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Vis, Marvin L., author

Scharf, Louis L., author

Linebarger, Darel A., author

DeGroat, Ronald D., author

Dowling, Eric M., author

IEEE, publisher

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Reduced rank linear predictive frequency and direction-of-arrival (DOA) estimation algorithms use the singular value decomposition (SVD) to produce a noise-cleaned linear prediction vector. These algorithms then root this vector to obtain a subset of roots, whose angles contain the desired frequency or DOA information. The roots closest to the unit circle are deemed to be the "signal roots." The rest of the roots are "extraneous." The extraneous roots are expensive to calculate. Further, a search must be done to discern the signal roots from the extraneous roots. Here, we present a reduced polynomial order linear prediction method that simplifies the rooting computation for applications where high-speed processing is critical.

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direction-of-arrival estimation

frequency estimation

polynomials

singular value decomposition

prediction theory

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