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Yoo, Jaejun
Lab. of Advanced Imaging Technology
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Dynamic Fourier ptychography with deep spatiotemporal priors

Author(s)
Bohra, PakshalPham, Thanh-anLong, YuxuanYoo, JaejunUnser, Michael
Issued Date
2023-06
DOI
10.1088/1361-6420/acca72
URI
https://scholarworks.unist.ac.kr/handle/201301/64398
Citation
INVERSE PROBLEMS, v.39, no.6, pp.064005
Abstract
Fourier ptychography (FP) involves the acquisition of several low-resolution intensity images of a sample under varying illumination angles. They are then combined into a high-resolution complex-valued image by solving a phase-retrieval problem. The objective in dynamic FP is to obtain a sequence of high-resolution images of a moving sample. There, the application of standard frame-by-frame reconstruction methods limits the temporal resolution due to the large number of measurements that must be acquired for each frame. In this work instead, we propose a neural-network-based reconstruction framework for dynamic FP. Specifically, each reconstructed image in the sequence is the output of a shared deep convolutional network fed with an input vector that lies on a one-dimensional manifold that encodes time. We then optimize the parameters of the network to fit the acquired measurements. The architecture of the network and the constraints on the input vectors impose a spatiotemporal regularization on the sequence of images. This enables our method to achieve high temporal resolution without compromising the spatial resolution. The proposed framework does not require training data. It also recovers the pupil function of the microscope. Through numerical experiments, we show that our framework paves the way for high-quality ultrafast FP.
Publisher
IOP Publishing Ltd
ISSN
0266-5611
Keyword (Author)
Fourier ptychographydynamic imagingregularizationneural networks
Keyword
PHASEILLUMINATIONIMAGERECOVERY

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