2020
DOI: 10.1109/tit.2020.2984478
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Provable Low Rank Phase Retrieval

Abstract: We study the "Low Rank Phase Retrieval (LRPR)" problem defined as follows: recover an n × q matrix X * of rank r from a different and independent set of m phaseless (magnitude-only) linear projections of each of its columns. To be precise, we need to recover X * from y k := |A k x * k |, k = 1, 2, . . . , q when the measurement matrices A k are mutually independent. Here y k is an m length vector and denotes transpose. The question is when can we solve LRPR with m n? Our work introduces the first provably corr… Show more

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Cited by 20 publications
(45 citation statements)
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“…We also showed extensive numerical experiments that demonstrated the practical power of AltMinLowRaP. Our guarantee from [14] showed that, if right incoherence holds, if a new set of samples was used in each iteration, and for each update of U and B * (sample-splitting), and if the total number of samples mq ≥ C κ,µ •nr 4 •log(1/ǫ), and if m ≥ C max(r, log q, log n), one can recover X * to ǫ accuracy by using AltMinLowRaP. Here C κ,µ = Cκ 10 µ 4 .…”
Section: Introductionmentioning
confidence: 72%
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“…We also showed extensive numerical experiments that demonstrated the practical power of AltMinLowRaP. Our guarantee from [14] showed that, if right incoherence holds, if a new set of samples was used in each iteration, and for each update of U and B * (sample-splitting), and if the total number of samples mq ≥ C κ,µ •nr 4 •log(1/ǫ), and if m ≥ C max(r, log q, log n), one can recover X * to ǫ accuracy by using AltMinLowRaP. Here C κ,µ = Cκ 10 µ 4 .…”
Section: Introductionmentioning
confidence: 72%
“…Low rank is another common assumption. As explained in [13], [14], the practical way to impose it is to consider joint recovery of a set q of correlated signals, that together form an (exactly or approximately) low rank matrix, from m different phaseless linear projections of each of the q signals. This model is useful to enable fast and low-cost dynamic phaseless imaging applications, such as dynamic Fourier ptychography, where measurement acquisition is slow or expensive [15].…”
Section: Introductionmentioning
confidence: 99%
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