Presentation + Paper
2 March 2022 Learning end-to-end phase retrieval using only one interferogram with mixed-context network
Author Affiliations +
Proceedings Volume 11970, Quantitative Phase Imaging VIII; 119700A (2022) https://doi.org/10.1117/12.2610502
Event: SPIE BiOS, 2022, San Francisco, California, United States
Abstract
Deep learning techniques are always bound with big data and large, sophisticated models. In this paper, we show that this is not necessarily true for the task of end-to-end phase retrieval in off-axis interferometric quantitative phase imaging. For this task, we first introduce a new loss function, called bucket error rate (BER), for addressing the problem of imbalanced data distribution by balancing loss-bias of target and background area adaptively. With BER, we demonstrate that a U-Net model can learn the underneath logic for converting a raw interferogram to a phase map from only one training sample. At last, we present a novel mixed-context network (MCN) which can simultaneously aggregate local- and global-contextual information. Experimental results show that compared to U-Net, the proposed MCN is more accurate, more compact, and can be trained faster.
Conference Presentation
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Wei Luo, Yi Zhang, Xin Shu, Mengxuan Niu, and Renjie Zhou "Learning end-to-end phase retrieval using only one interferogram with mixed-context network", Proc. SPIE 11970, Quantitative Phase Imaging VIII, 119700A (2 March 2022); https://doi.org/10.1117/12.2610502
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KEYWORDS
Phase retrieval

Data modeling

Neural networks

Statistical modeling

Convolution

Network architectures

Computer programming

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