Compressive phase retrieval: Optimal sample complexity with deep generative priors
Paul Hand,
Oscar Leong,
Vladislav Voroninski
Abstract:Advances in compressive sensing (CS) provided reconstruction algorithms of sparse signals from linear measurements with optimal sample complexity, but natural extensions of this methodology to nonlinear inverse problems have been met with potentially fundamental sample complexity bottlenecks. In particular, tractable algorithms for compressive phase retrieval with sparsity priors have not been able to achieve optimal sample complexity. This has created an open problem in compressive phase retrieval: under gene… Show more
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