Towards Sample-Optimal Compressive Phase Retrieval with Sparse and Generative Priors
–Neural Information Processing Systems
Compressive phase retrieval is a popular variant of the standard compressive sensing problem in which the measurements only contain magnitude information. In this paper, motivated by recent advances in deep generative models, we provide recovery guarantees with near-optimal sample complexity for phase retrieval with generative priors.
Neural Information Processing Systems
Dec-24-2025, 12:06:47 GMT
- Technology: