Adaptive information-maximization encoding for ghost imaging--A general Bayesian framework under experimental physical constraints
Jianshuo Sun, Chenyu Hu, Zunwang Bo, Zhentao Liu, Mengyu Chen, Longkun Du, Weitao Liu, Shensheng Han

TL;DR
This paper introduces an adaptive Bayesian framework for optimizing encoding in ghost imaging, significantly improving image quality and information acquisition especially under low signal-to-noise conditions.
Contribution
It develops a novel adaptive information-maximization encoding strategy based on Bayesian filtering, providing a theoretical foundation for optimal encoding under physical constraints.
Findings
Enhanced imaging performance with information-optimal encoding.
Superior information acquisition compared to existing strategies.
Effective in low signal-to-noise ratio regimes.
Abstract
Ghost imaging (GI) has demonstrated diverse imaging capabilities enabled by its encoding-decoding-based computational imaging mechanism. Accordingly, information-theoretic studies have emerged as a promising avenue for probing the fundamental performance bounds of of GI and related computational imaging paradigms. However, the design of information-theoretically optimal encoding strategies remains largely unexplored, primarily due to the intractability of the prior probability density function (PDF) of an unknown scene. Here, by leveraging the ability of recursively estimating the PDF of the object to be imaged via Bayesian filtering, we propose to establish an adaptive information-maximization encoding (AIME) design framework. Based on the adaptively estimated posterior PDF from previously acquired measurements, the expected information gain of subsequent detections is evaluated and…
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Taxonomy
TopicsRandom lasers and scattering media · Digital Holography and Microscopy · Advanced Optical Imaging Technologies
