Fourier Phase Retrieval with Extended Support Estimation via Deep Neural Network

We consider the problem of sparse phase retrieval from Fourier transform magnitudes to recover the -sparse signal vector and its support . We exploit extended support estimate with size larger than satisfying and obtained by a trained deep neural network (DNN). To make the DNN learnable, it provides as the union of equivalent solutions of by utilizing modulo Fourier invariances. Set can be estimated with short running time via the DNN, and support can be determined from the DNN output rather than from the full index set by applying hard thresholding to . Thus, the DNN-based extended support estimation improves the reconstruction performance of the signal with a low complexity burden dependent on . 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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