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arxiv: 1402.5691 · v1 · pith:CKOBARE3new · submitted 2014-02-23 · 💻 cs.IT · cs.SY· eess.SY· math.IT

Data-Adaptive Reduced-Dimension Robust Beamforming Algorithms

classification 💻 cs.IT cs.SYeess.SYmath.IT
keywords data-adaptivedimensionalityreduced-dimensionreductionrobustkrylovmethodsproposed
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We present low complexity, quickly converging robust adaptive beamformers that combine robust Capon beamformer (RCB) methods and data-adaptive Krylov subspace dimensionality reduction techniques. We extend a recently proposed reduced-dimension RCB framework, which ensures proper combination of RCBs with any form of dimensionality reduction that can be expressed using a full-rank dimension reducing transform, providing new results for data-adaptive dimensionality reduction. We consider Krylov subspace methods computed with the Powers-of-R (PoR) and Conjugate Gradient (CG) techniques, illustrating how a fast CG-based algorithm can be formed by beneficially exploiting that the CG-algorithm diagonalizes the reduced-dimension covariance. Our simulations show the benefits of the proposed approaches.

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