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Information Theoretic Limits for Phase Retrieval with Subsampled Haar Sensing Matrices

25 October 2019
Rishabh Dudeja
Junjie Ma
A. Maleki
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Abstract

We study information theoretic limits of recovering an unknown nnn dimensional, complex signal vector x⋆\mathbf{x}_\starx⋆​ with unit norm from mmm magnitude-only measurements of the form yi=∣(Ax⋆)i∣2,  i=1,2…,my_i = |(\mathbf{A} \mathbf{x}_\star)_i|^2, \; i = 1,2 \dots , myi​=∣(Ax⋆​)i​∣2,i=1,2…,m, where A\mathbf{A}A is the sensing matrix. This is known as the Phase Retrieval problem and models practical imaging systems where measuring the phase of the observations is difficult. Since in a number of applications, the sensing matrix has orthogonal columns, we model the sensing matrix as a subsampled Haar matrix formed by picking nnn columns of a uniformly random m×mm \times mm×m unitary matrix. We study this problem in the high dimensional asymptotic regime, where m,n→∞m,n \rightarrow \inftym,n→∞, while m/n→δm/n \rightarrow \deltam/n→δ with δ\deltaδ being a fixed number, and show that if m<(2−on(1))⋅nm < (2-o_n(1))\cdot nm<(2−on​(1))⋅n, then any estimator is asymptotically orthogonal to the true signal vector x⋆\mathbf{x}_\starx⋆​. This lower bound is sharp since when m>(2+on(1))⋅nm > (2+o_n(1)) \cdot n m>(2+on​(1))⋅n, estimators that achieve a non trivial asymptotic correlation with the signal vector are known from previous works.

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