Department of Biomedical Engineering, School of Engineering, King Mongkut's Institute of Technology Ladkrabang, Bangkok, 10520, Thailand.
Shenzhen Key Laboratory for Micro-Scale Optical Information Technology, Nanophotonics Research Center, Institute of Microscale Optoelectronics, Shenzhen University, Shenzhen, 518060, China.
Sci Rep. 2021 Aug 11;11(1):16289. doi: 10.1038/s41598-021-95593-4.
A deep learning algorithm for single-shot phase retrieval under a conventional microscope is proposed and investigated. The algorithm has been developed using the context aggregation network architecture; it requires a single input grayscale image to predict an output phase profile through deep learning-based pattern recognition. Surface plasmon resonance imaging has been employed as an example to demonstrate the capability of the deep learning-based method. The phase profiles of the surface plasmon resonance phenomena have been very well established and cover ranges of phase transitions from 0 to 2π rad. We demonstrate that deep learning can be developed and trained using simulated data. Experimental validation and a theoretical framework to characterize and quantify the performance of the deep learning-based phase retrieval method are reported. The proposed deep learning-based phase retrieval performance was verified through the shot noise model and Monte Carlo simulations. Refractive index sensing performance comparing the proposed deep learning algorithm and conventional surface plasmon resonance measurements are also discussed. Although the proposed phase retrieval-based algorithm cannot achieve a typical detection limit of 10 to 10 RIU for phase measurement in surface plasmon interferometer, the proposed artificial-intelligence-based approach can provide at least three times lower detection limit of 4.67 × 10 RIU compared to conventional intensity measurement methods of 1.73 × 10 RIU for the optical energy of 2500 pJ with no need for sophisticated optical interferometer instrumentation.
提出并研究了一种用于传统显微镜下单次相位恢复的深度学习算法。该算法使用上下文聚合网络架构开发;它需要一个输入灰度图像,通过基于深度学习的模式识别来预测输出相位分布。表面等离子体共振成像被用作示例,以展示基于深度学习的方法的能力。表面等离子体共振现象的相位分布已经得到了很好的建立,涵盖了从 0 到 2π rad 的相位转变范围。我们证明了可以使用模拟数据来开发和训练深度学习。报告了用于表征和量化基于深度学习的相位恢复方法性能的实验验证和理论框架。通过散粒噪声模型和蒙特卡罗模拟验证了所提出的基于深度学习的相位恢复性能。还讨论了与传统表面等离子体共振测量相比,所提出的深度学习算法的折射率传感性能。虽然基于所提出的相位恢复的算法在表面等离子体干涉仪中的相位测量中不能达到典型的 10 到 10 RIU 的检测极限,但与传统的强度测量方法相比,所提出的基于人工智能的方法可以提供至少低三个数量级的检测极限 4.67 × 10 RIU,对于 2500 pJ 的光能量,无需复杂的光学干涉仪仪器。