LWGNet: Learned Wirtinger Gradients for Fourier Ptychographic Phase
Retrieval
- URL: http://arxiv.org/abs/2208.04283v1
- Date: Mon, 8 Aug 2022 17:22:54 GMT
- Title: LWGNet: Learned Wirtinger Gradients for Fourier Ptychographic Phase
Retrieval
- Authors: Atreyee Saha, Salman S Khan, Sagar Sehrawat, Sanjana S Prabhu, Shanti
Bhattacharya, Kaushik Mitra
- Abstract summary: We propose a hybrid model-driven residual network that combines the knowledge of the forward imaging system with a deep data-driven network.
Unlike other conventional unrolling techniques, LWGNet uses fewer stages while performing at par or even better than existing traditional and deep learning techniques.
This improvement in performance for low-bit depth and low-cost sensors has the potential to bring down the cost of FPM imaging setup significantly.
- Score: 14.588976801396576
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fourier Ptychographic Microscopy (FPM) is an imaging procedure that overcomes
the traditional limit on Space-Bandwidth Product (SBP) of conventional
microscopes through computational means. It utilizes multiple images captured
using a low numerical aperture (NA) objective and enables high-resolution phase
imaging through frequency domain stitching. Existing FPM reconstruction methods
can be broadly categorized into two approaches: iterative optimization based
methods, which are based on the physics of the forward imaging model, and
data-driven methods which commonly employ a feed-forward deep learning
framework. We propose a hybrid model-driven residual network that combines the
knowledge of the forward imaging system with a deep data-driven network. Our
proposed architecture, LWGNet, unrolls traditional Wirtinger flow optimization
algorithm into a novel neural network design that enhances the gradient images
through complex convolutional blocks. Unlike other conventional unrolling
techniques, LWGNet uses fewer stages while performing at par or even better
than existing traditional and deep learning techniques, particularly, for
low-cost and low dynamic range CMOS sensors. This improvement in performance
for low-bit depth and low-cost sensors has the potential to bring down the cost
of FPM imaging setup significantly. Finally, we show consistently improved
performance on our collected real data.
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