kqwang/phase-recovery
Resources for phase recovery (also called phase imaging, phase retrieval, or phase reconstruction)
This project offers a comprehensive collection of resources for 'phase recovery' (also known as phase imaging or phase retrieval), which is the process of calculating the phase of a light field from its amplitude or intensity measurements. It compiles information on various techniques, algorithms, research groups, companies, workshops, and papers related to this field, including conventional and deep learning-based approaches. This resource is designed for scientists, researchers, and engineers working in optics, imaging, and related fields who need to understand or apply phase recovery techniques.
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Use this if you are an optics researcher, imaging scientist, or engineer looking for a centralized hub of information on phase recovery techniques, from foundational methods to cutting-edge deep learning applications.
Not ideal if you are seeking a software library or a ready-to-use tool to perform phase recovery directly without needing to explore research or techniques.
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Sep 29, 2025
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