Physics-based Learned Design: Optimized Coded-Illumination for Quantitative Phase Imaging
Michael R. Kellman, Emrah Bostan, Nicole Repina, and Laura Waller

TL;DR
This paper introduces a physics-informed machine learning approach to optimize coded-illumination patterns in quantitative phase imaging, reducing training data needs while maintaining high reconstruction accuracy.
Contribution
It combines physical models with neural networks to efficiently optimize illumination patterns for phase retrieval, enabling fewer training examples and better generalization.
Findings
Achieves high accuracy with only 2 measurements, comparable to Fourier Ptychography with 69 measurements.
Demonstrates effective pattern optimization for both phase targets and biological cells.
Reduces training data requirements by incorporating physics into the learning process.
Abstract
Coded-illumination can enable quantitative phase microscopy of transparent samples with minimal hardware requirements. Intensity images are captured with different source patterns and a non-linear phase retrieval optimization reconstructs the image. The non-linear nature of the processing makes optimizing the illumination pattern designs complicated. Traditional techniques for experimental design (e.g. condition number optimization, spectral analysis) consider only linear measurement formation models and linear reconstructions. Deep neural networks (DNNs) can efficiently represent the non-linear process and can be optimized over via training in an end-to-end framework. However, DNNs typically require a large amount of training examples and parameters to properly learn the phase retrieval process, without making use of the known physical models. Here, we aim to use both our knowledge of…
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Taxonomy
TopicsAdvanced X-ray Imaging Techniques · Digital Holography and Microscopy · Optical measurement and interference techniques
