Sparse Phase Retrieval with Redundant Dictionary via q (0<q 1)-Analysis Model

Abstract

Sparse phase retrieval with redundant dictionary is to reconstruct the signals of interest that are (nearly) sparse in a redundant dictionary or frame from the phaseless measurements via the optimization models. Gao [7] presented conditions on the measurement matrix, called null space property (NSP) and strong dictionary restricted isometry property (S-DRIP), for exact and stable recovery of dictionary-k-sparse signals via the 1-analysis model for sparse phase retrieval with redundant dictionary, respectively, where, in particularly, the S-DRIP of order tk with t>1 was derived. In this paper, motivated by many advantages of the q minimization with 0<q≤1, e.g., reduction of the number of measurements required, we generalize these two conditions to the q-analysis model. Specifically, we first present two NSP variants for exact recovery of dictionary-k-sparse signals via the q-analysis model in the noiseless scenario. Moreover, we investigate the S-DRIP of order tk with 0<t<43 for stable recovery of dictionary-k-sparse signals via the q-analysis model in the noisy scenario, which will complement the existing result of the S-DRIP of order tk with t≥2 obtained in [4].

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