2023
DOI: 10.36227/techrxiv.22294222.v2
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Fast Kernel-based Signal Subspace Estimates for Line Spectral Estimation

Abstract: <p>This paper introduces the problem formulation of kernel-based subspace estimates for line spectral estimation. Subspace methods suffer from cubic time complexity: specifically, the original ESPRIT algorithm relies on obtaining the signal's singular vectors by SVD/EVD. We show that the original ESPRIT algorithm does not need the signal's singular vectors to exploit rotational invariance, but a set of vectors that span the signal model's Vandermonde matrix are sufficient. To exploit this, we introduce t… Show more

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