Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network

散射 深度学习 计算机科学 稳健性(进化) 人工智能 光学 光散射 概化理论 人工神经网络 逆散射问题 计算机视觉 物理 数学 统计 基因 生物化学 化学
作者
Jeffrey Alido,J. E. Greene,Yujia Xue,Guorong Hu,Mitchell Gilmore,Kevin J. Monk,Brett T. DiBenedictis,Ian G. Davison,Lei Tian,Yunzhe Li
出处
期刊:Optics Express [Optica Publishing Group]
卷期号:32 (4): 6241-6241 被引量:3
标识
DOI:10.1364/oe.514072
摘要

Imaging through scattering is a pervasive and difficult problem in many biological applications. The high background and the exponentially attenuated target signals due to scattering fundamentally limits the imaging depth of fluorescence microscopy. Light-field systems are favorable for high-speed volumetric imaging, but the 2D-to-3D reconstruction is fundamentally ill-posed, and scattering exacerbates the condition of the inverse problem. Here, we develop a scattering simulator that models low-contrast target signals buried in heterogeneous strong background. We then train a deep neural network solely on synthetic data to descatter and reconstruct a 3D volume from a single-shot light-field measurement with low signal-to-background ratio (SBR). We apply this network to our previously developed computational miniature mesoscope and demonstrate the robustness of our deep learning algorithm on scattering phantoms with different scattering conditions. The network can robustly reconstruct emitters in 3D with a 2D measurement of SBR as low as 1.05 and as deep as a scattering length. We analyze fundamental tradeoffs based on network design factors and out-of-distribution data that affect the deep learning model’s generalizability to real experimental data. Broadly, we believe that our simulator-based deep learning approach can be applied to a wide range of imaging through scattering techniques where experimental paired training data is lacking.
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