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The Algebraic Approach to Phase Retrieval and Explicit Inversion at the Identifiability Threshold (1402.4053v1)

Published 17 Feb 2014 in math.FA, cs.CV, cs.IT, math.AG, math.IT, and stat.ML

Abstract: We study phase retrieval from magnitude measurements of an unknown signal as an algebraic estimation problem. Indeed, phase retrieval from rank-one and more general linear measurements can be treated in an algebraic way. It is verified that a certain number of generic rank-one or generic linear measurements are sufficient to enable signal reconstruction for generic signals, and slightly more generic measurements yield reconstructability for all signals. Our results solve a few open problems stated in the recent literature. Furthermore, we show how the algebraic estimation problem can be solved by a closed-form algebraic estimation technique, termed ideal regression, providing non-asymptotic success guarantees.

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