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Fast and Robust Compressive Phase Retrieval with Sparse-Graph Codes

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arxiv 1606.00531 v1 pith:RMM6LBGQ submitted 2016-06-02 cs.IT math.IT

Fast and Robust Compressive Phase Retrieval with Sparse-Graph Codes

classification cs.IT math.IT
keywords complexityschemecompressivephaseretrievalthetacomputationalmathbb
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In this paper, we tackle the compressive phase retrieval problem in the presence of noise. The noisy compressive phase retrieval problem is to recover a $K$-sparse complex signal $s \in \mathbb{C}^n$, from a set of $m$ noisy quadratic measurements: $ y_i=| a_i^H s |^2+w_i$, where $a_i^H\in\mathbb{C}^n$ is the $i$th row of the measurement matrix $A\in\mathbb{C}^{m\times n}$, and $w_i$ is the additive noise to the $i$th measurement. We consider the regime where $K=\beta n^\delta$, with constants $\beta>0$ and $\delta\in(0,1)$. We use the architecture of PhaseCode algorithm, and robustify it using two schemes: the almost-linear scheme and the sublinear scheme. We prove that with high probability, the almost-linear scheme recovers $s$ with sample complexity $\Theta(K \log(n))$ and computational complexity $\Theta(n \log(n))$, and the sublinear scheme recovers $s$ with sample complexity $\Theta(K\log^3(n))$ and computational complexity $\Theta(K\log^3(n))$. To the best of our knowledge, this is the first scheme that achieves sublinear computational complexity for compressive phase retrieval problem. Finally, we provide simulation results that support our theoretical contributions.

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