Deep Unrolled Single Snapshot Phase Retrieval via Non-Convex Formulation and Phase Mask Design

Phase retrieval (PR) consists of recovering the phase information from captured intensity measurements, known as coded diffraction patterns (CDPs). Non-convex algorithms for addressing the PR problem require a proper initialization that is refined through a gradient descent approach. These PR algori...

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Veröffentlicht in:IEEE journal of selected topics in signal processing 2024-05, Vol.18 (4), p.694-703
Hauptverfasser: Jerez, Andres, Estupinan, Juan, Bacca, Jorge, Arguello, Henry
Format: Artikel
Sprache:eng
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Zusammenfassung:Phase retrieval (PR) consists of recovering the phase information from captured intensity measurements, known as coded diffraction patterns (CDPs). Non-convex algorithms for addressing the PR problem require a proper initialization that is refined through a gradient descent approach. These PR algorithms have proven to be robust for different scenarios. Despite deep models showing surprising results in this area, these approaches lack interpretability in their neural architectures. This work proposes unrolling the initialization and iterative reconstruction algorithm for the PR problem using the near-field model based on a non-convex formulation; resulting in an interpretable deep neural network (DNN) that can be trained in an end-to-end (E2E) manner. Furthermore, the proposed method can jointly optimize the phase mask for the CDP acquisition and the DNN parameters. Simulation results demonstrate that the proposed E2E method provides high-quality reconstruction using a learned phase mask from a single projection. Also, the proposed method is tested over an experimental optical setup that incorporates the learned phase mask via an only-phase spatial light modulator.
ISSN:1932-4553
1941-0484
DOI:10.1109/JSTSP.2024.3395979