Lipp Maximilian, Li Wei, Abrashitova Ksenia, Forré Patrick, Amitonova Lyubov V
Opt Express. 2024 Apr 22;32(9):15147-15155. doi: 10.1364/OE.522201.
Super-resolution multimode fiber imaging provides the means to image samples quickly with compact and flexible setups finding many applications from biology and medicine to material science and nanolithography. Typically, fiber-based imaging systems suffer from low spatial resolution and long measurement times. State-of-the-art computational approaches can achieve fast super-resolution imaging through a multimode fiber probe but currently rely on either per-sample optimised priors or large data sets with subsequent long training and image reconstruction times. This unfortunately hinders any real-time imaging applications. Here we present an ultimately fast non-iterative algorithm for compressive image reconstruction through a multimode fiber. The proposed approach helps to avoid many constraints by determining the prior of the target distribution from a simulated set and solving the under-determined inverse matrix problem with a mathematical closed-form solution. We have demonstrated theoretical and experimental evidence for enhanced image quality and sub-diffraction spatial resolution of the multimode fiber optical system.
超分辨率多模光纤成像提供了一种通过紧凑且灵活的设置快速对样本成像的方法,在从生物学、医学到材料科学和纳米光刻等众多领域都有应用。通常,基于光纤的成像系统存在空间分辨率低和测量时间长的问题。目前最先进的计算方法可以通过多模光纤探头实现快速超分辨率成像,但目前要么依赖于针对每个样本优化的先验信息,要么依赖于大数据集以及随后较长的训练和图像重建时间。不幸的是,这阻碍了任何实时成像应用。在此,我们提出了一种用于通过多模光纤进行压缩图像重建的最终快速非迭代算法。所提出的方法通过从模拟集中确定目标分布的先验信息并使用数学闭式解解决欠定逆矩阵问题,有助于避免许多限制。我们已经展示了多模光纤光学系统图像质量增强和亚衍射空间分辨率的理论和实验证据。