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Fourier Phase Retrieval with Extended Support Estimation via Deep Neural Network

Abstract

We consider the problem of sparse phase retrieval from Fourier transform magnitudes to recover the kk-sparse signal vector and its support T\mathcal{T}. We exploit extended support estimate E\mathcal{E} with size larger than kk satisfying ET\mathcal{E} \supseteq \mathcal{T} and obtained by a trained deep neural network (DNN). To make the DNN learnable, it provides E\mathcal{E} as the union of equivalent solutions of T\mathcal{T} by utilizing modulo Fourier invariances. Set E\mathcal{E} can be estimated with short running time via the DNN, and support T\mathcal{T} can be determined from the DNN output rather than from the full index set by applying hard thresholding to E\mathcal{E}. Thus, the DNN-based extended support estimation improves the reconstruction performance of the signal with a low complexity burden dependent on kk. Numerical results verify that the proposed scheme has a superior performance with lower complexity compared to local search-based greedy sparse phase retrieval and a state-of-the-art variant of the Fienup method.

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