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Declipping and the recovery of vectors from saturated measurements

Authors :
Alharbi, Wedad
Freeman, Daniel
Ghoreishi, Dorsa
Johnson, Brody
Randrianarivony, N. Lovasoa
Publication Year :
2024

Abstract

A frame $(x_j)_{j\in J}$ for a Hilbert space $H$ allows for a linear and stable reconstruction of any vector $x\in H$ from the linear measurements $(\langle x,x_j\rangle)_{j\in J}$. However, there are many situations where some information in the frame coefficients is lost. In applications where one is using sensors with a fixed dynamic range, any measurement above that range is registered as the maximum, and any measurement below that range is registered as the minimum. Depending on the context, recovering a vector from such measurements is called either declipping or saturation recovery. We initiate a frame theoretic approach to saturation recovery in a similar way to what [BCE06] did for phase retrieval. We characterize when saturation recovery is possible, show optimal frames for use with saturation recovery correspond to minimal multi-fold packings in projective space, and prove that the classical frame algorithm may be adapted to this non-linear problem to provide a reconstruction algorithm.<br />Comment: 20 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.03237
Document Type :
Working Paper