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Deep learning assisted variational Hilbert quantitative phase imaging 被引量:3
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作者 Zhuoshi Li Jiasong Sun +7 位作者 Yao Fan Yanbo Jin Qian Shen maciej trusiak Maria Cywińska Peng Gao Qian Chen Chao Zuo 《Opto-Electronic Science》 2023年第4期1-11,共11页
We propose a high-accuracy artifacts-free single-frame digital holographic phase demodulation scheme for relatively lowcarrier frequency holograms-deep learning assisted variational Hilbert quantitative phase imaging(... We propose a high-accuracy artifacts-free single-frame digital holographic phase demodulation scheme for relatively lowcarrier frequency holograms-deep learning assisted variational Hilbert quantitative phase imaging(DL-VHQPI).The method,incorporating a conventional deep neural network into a complete physical model utilizing the idea of residual compensation,reliably and robustly recovers the quantitative phase information of the test objects.It can significantly alleviate spectrum-overlapping-caused phase artifacts under the slightly off-axis digital holographic system.Compared to the conventional end-to-end networks(without a physical model),the proposed method can reduce the dataset size dramatically while maintaining the imaging quality and model generalization.The DL-VHQPI is quantitatively studied by numerical simulation.The live-cell experiment is designed to demonstrate the method's practicality in biological research.The proposed idea of the deep learning-assisted physical model might be extended to diverse computational imaging techniques. 展开更多
关键词 quantitative phase imaging digital holography deep learning high-throughput imaging
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Deep learning enabled single-shot absolute phase recovery in high-speed composite fringe pattern profilometry of separated objects
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作者 maciej trusiak Malgorzata Kujawinska 《Opto-Electronic Advances》 SCIE EI CAS CSCD 2023年第12期1-4,共4页
A recent article in the Opto-Electronic Advances(OEA)journal from Prof.Qian Chen and Prof.Chao Zuo’s group introduced a new and efficient 3D imaging system that captures high-speed images using deep learning-enabled ... A recent article in the Opto-Electronic Advances(OEA)journal from Prof.Qian Chen and Prof.Chao Zuo’s group introduced a new and efficient 3D imaging system that captures high-speed images using deep learning-enabled fringe projection profilometry(FPP).In this News&Views article,we explore potential avenues for future advancements,including expanding the measurement range through an extended number-theoretical approach,enhancing quality through the incorporation of horizontal fringes,and integrating data from other modalities to broaden the system's applications. 展开更多
关键词 system ABSOLUTE SEPARATED
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