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Information Theoretic Limits for Phase Retrieval with Subsampled Haar Sensing Matrices

IEEE Transactions on Information Theory (IEEE Trans. Inf. Theory), 2019
Abstract

We study information theoretic limits of recovering an unknown nn dimensional, complex signal vector x\mathbf{x}_\star with unit norm from mm magnitude-only measurements of the form yi=(Ax)i2,  i=1,2,my_i = |(\mathbf{A} \mathbf{x}_\star)_i|^2, \; i = 1,2 \dots , m, where A\mathbf{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 nn columns of a uniformly random m×mm \times m unitary matrix. We study this problem in the high dimensional asymptotic regime, where m,nm,n \rightarrow \infty, while m/nδm/n \rightarrow \delta with δ\delta being a fixed number, and show that if m<(2on(1))nm < (2-o_n(1))\cdot n, then any estimator is asymptotically orthogonal to the true signal vector x\mathbf{x}_\star. This lower bound is sharp since when $m > (2+o_n(1)) \cdot n $, estimators that achieve a non trivial asymptotic correlation with the signal vector are known from previous works.

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