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Calibration-free quantitative phase imaging using data-driven aberration modeling

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posted on 2023-11-30, 20:14 authored by Taean Chang, Youngju Jo, Gunho Choi, Donghun Ryu, Hyun-Seok Min, Yongkeun Park
We present a data-driven approach to compensate for optical aberration in calibration-free quantitative phase imaging (QPI). Unlike existing methods that require additional measurements or a background region to correct aberrations, we exploit deep learning techniques to model the physics of aberration in an imaging system. We demonstrate the generation of a single-shot aberration-corrected field image by using a U-net-based deep neural network that learns a translation between an optical field with aberrations and an aberration-corrected field. The high fidelity of our method is demonstrated on 2D and 3D QPI measurements of various confluent eukaryotic cells, benchmarking against the conventional method using background subtractions.

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