kqwang/phase-recovery
Resources for phase recovery (also called phase imaging, phase retrieval, or phase reconstruction)
Covers conventional methods (holography, transport of intensity equation, wavefront sensing, optimization-based approaches) and deep-learning strategies (dataset-driven, physics-informed hybrids, and post-processing refinement), organized with taxonomies for pre-, in-, and post-processing phases. Curated as a collaborative knowledge base linking research groups, peer-reviewed papers, workshops, and dissertations across computational imaging communities worldwide.
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Sep 29, 2025
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