The importance of phase in complex compressive sensing

IEEE Transactions on Information Theory(2021)

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Abstract
We consider the question of estimating a real low-complexity signal (such as a sparse vector or a low-rank matrix) from the phase of complex random measurements. We show that in this phase-only compressive sensing (PO-CS) scenario, we can perfectly recover such a signal with high probability and up to global unknown amplitude if the sensing matrix is a complex Gaussian random matrix and the number...
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Key words
Sensors,Phase measurement,Noise measurement,Compressed sensing,Estimation,Sparse matrices,Measurement uncertainty
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