Paper
18 November 2019 Data-centric approach for miscellaneous optical sensing and imaging
Abstract
In this paper, several methods based on a data-centric approach for optical sensing and imaging are summarized and their potential capabilities for miscellaneous problems are presented. At the beginning, the framework of data-centric approach is explained briefly with a generalized formulation of a process of optical sensing and imaging. The essential idea is application of machine learning to estimate the inverse process of the target optical sensing and imaging using mathematical models. Once such an estimation is achieved, the input object and the resultant output signals can be related by the mathematical model. Based on the framework, several problems in optical sensing and imaging are demonstrated. They are single-shot super resolution in diffractive imaging, computer-generated holography based on deep learning, and wavefront sensing using deep learning. These examples are not just simple imaging but sophisticated methods in general optical sensing and imaging. The data-centric approach is expected to be useful in various problems in applied optics.
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jun Tanida and Ryoichi Horisaki "Data-centric approach for miscellaneous optical sensing and imaging", Proc. SPIE 11188, Holography, Diffractive Optics, and Applications IX, 1118804 (18 November 2019); https://doi.org/10.1117/12.2537099
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KEYWORDS
Mathematical modeling

Signal processing

Neural networks

Optical imaging

Optical sensing

Data modeling

Spatial light modulators

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