论文标题

具有复合物理优化的傅立叶Ptychography多参数神经网络

Fourier ptychography multi-parameter neural network with composite physical priori optimization

论文作者

Yang, Delong, Zhang, Shaohui, Zheng, Chuanjian, Zhou, Guocheng, Cao, Lei, Hu, Yao, Hao, Qun

论文摘要

傅立叶Ptychograghy显微镜(FP)是一种最近开发的微分辨率成像的计算成像方法。通过打开位于LED阵列上不同位置的每个照明发射二极管(LED),并获取包含不同空间频率组件的相应图像,可以在大型视野中实现高空间分辨率和定量相成像。然而,FPM对系统构建和数据采集过程有很高的要求,例如精确的LED位置,准确的聚焦和适当的曝光时间,这给了其实际应用带来许多限制。在本文中,受人工神经网络的启发,我们提出了一个具有复合物理事先优化的傅立叶Ptychography多参数神经网络(FPMN)。 A hybrid parameter determination strategy combining physical imaging model and data-driven network training is proposed to recover the multi layers of the network corresponding to different physical parameters, including sample complex function, system pupil function, defocus distance, LED array position deviation and illumination intensity fluctuation, etc. Among these parameters, LED array position deviation is recovered based on the features of brightfield to darkfield transition low-resolution images while the others are recovered in the process神经网络的培训。 FPMN的可行性和有效性通过模拟和实际实验验证。因此,FPMN显然可以减少FPM实际应用的要求。

Fourier ptychography microscopy(FP) is a recently developed computational imaging approach for microscopic super-resolution imaging. By turning on each light-emitting-diode (LED) located on different position on the LED array sequentially and acquiring the corresponding images that contain different spatial frequency components, high spatial resolution and quantitative phase imaging can be achieved in the case of large field-of-view. Nevertheless, FPM has high requirements for the system construction and data acquisition processes, such as precise LEDs position, accurate focusing and appropriate exposure time, which brings many limitations to its practical applications. In this paper, inspired by artificial neural network, we propose a Fourier ptychography multi-parameter neural network (FPMN) with composite physical prior optimization. A hybrid parameter determination strategy combining physical imaging model and data-driven network training is proposed to recover the multi layers of the network corresponding to different physical parameters, including sample complex function, system pupil function, defocus distance, LED array position deviation and illumination intensity fluctuation, etc. Among these parameters, LED array position deviation is recovered based on the features of brightfield to darkfield transition low-resolution images while the others are recovered in the process of training of the neural network. The feasibility and effectiveness of FPMN are verified through simulations and actual experiments. Therefore FPMN can evidently reduce the requirement for practical applications of FPM.

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