Temporal phase unwrapping using deep learning

被引:0
|
作者
Wei Yin
Qian Chen
Shijie Feng
Tianyang Tao
Lei Huang
Maciej Trusiak
Anand Asundi
Chao Zuo
机构
[1] School of Electronic and Optical Engineering,Centre for Optical and Laser Engineering (COLE), School of Mechanical and Aerospace Engineering
[2] Nanjing University of Science and Technology,undefined
[3] Jiangsu Key Laboratory of Spectral Imaging & Intelligent Sense,undefined
[4] Nanjing University of Science and Technology,undefined
[5] Smart Computational Imaging (SCI) Laboratory,undefined
[6] Nanjing University of Science and Technology,undefined
[7] Brookhaven National Laboratory,undefined
[8] Institute of Micromechanics and Photonics,undefined
[9] Warsaw University of Technology,undefined
[10] Nanyang Technological University,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
The multi-frequency temporal phase unwrapping (MF-TPU) method, as a classical phase unwrapping algorithm for fringe projection techniques, has the ability to eliminate the phase ambiguities even while measuring spatially isolated scenes or the objects with discontinuous surfaces. For the simplest and most efficient case in MF-TPU, two groups of phase-shifting fringe patterns with different frequencies are used: the high-frequency one is applied for 3D reconstruction of the tested object and the unit-frequency one is used to assist phase unwrapping for the wrapped phase with high frequency. The final measurement precision or sensitivity is determined by the number of fringes used within the high-frequency pattern, under the precondition that its absolute phase can be successfully recovered without any fringe order errors. However, due to the non-negligible noises and other error sources in actual measurement, the frequency of the high-frequency fringes is generally restricted to about 16, resulting in limited measurement accuracy. On the other hand, using additional intermediate sets of fringe patterns can unwrap the phase with higher frequency, but at the expense of a prolonged pattern sequence. With recent developments and advancements of machine learning for computer vision and computational imaging, it can be demonstrated in this work that deep learning techniques can automatically realize TPU through supervised learning, as called deep learning-based temporal phase unwrapping (DL-TPU), which can substantially improve the unwrapping reliability compared with MF-TPU even under different types of error sources, e.g., intensity noise, low fringe modulation, projector nonlinearity, and motion artifacts. Furthermore, as far as we know, our method was demonstrated experimentally that the high-frequency phase with 64 periods can be directly and reliably unwrapped from one unit-frequency phase using DL-TPU. These results highlight that challenging issues in optical metrology can be potentially overcome through machine learning, opening new avenues to design powerful and extremely accurate high-speed 3D imaging systems ubiquitous in nowadays science, industry, and multimedia.
引用
收藏
相关论文
共 50 条
  • [41] Shape measurement of discontinuous objects using projected fringes and temporal phase unwrapping
    Saldner, HO
    Huntley, JM
    INTERNATIONAL CONFERENCE ON RECENT ADVANCES IN 3-D DIGITAL IMAGING AND MODELING, PROCEEDINGS, 1997, : 44 - 50
  • [42] Load-stepping photoelasticity: new developments using temporal phase unwrapping
    Nurse, AD
    OPTICS AND LASERS IN ENGINEERING, 2002, 38 (1-2) : 57 - 70
  • [43] Comparison between temporal and spatial phase unwrapping for damage detection using shearography
    Fantin, A. V.
    Dal Pont, A.
    Willemann, D. P.
    Albertazzi, A.
    SEVENTH INTERNATIONAL CONFERENCE ON VIBRATION MEASUREMENTS BY LASER TECHNIQUES: ADVANCES AND APPLICATIONS, 2006, 6345
  • [44] Phase decoding based on temporal-spatial phase unwrapping
    Peng, Xiang
    Qiu, Wenjie
    Wei, Linbin
    Zhang, Peng
    Tian, Jindong
    Guangxue Xuebao/Acta Optica Sinica, 2006, 26 (01): : 43 - 48
  • [45] Phase invalidity identification framework with the temporal phase unwrapping method
    Huang, Lei
    Asundi, Anand Krishna
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2011, 22 (03)
  • [46] The PHU-NET: A robust phase unwrapping method for MRI based on deep learning
    Zhou, Hongyu
    Cheng, Chuanli
    Peng, Hao
    Liang, Dong
    Liu, Xin
    Zheng, Hairong
    Zou, Chao
    MAGNETIC RESONANCE IN MEDICINE, 2021, 86 (06) : 3321 - 3333
  • [47] Two-dimensional phase unwrapping by a high-resolution deep learning network
    Huang, Wangwang
    Mei, Xuesong
    Wang, Yage
    Fan, Zhengjie
    Chen, Cheng
    Jiang, Gedong
    MEASUREMENT, 2022, 200
  • [48] MoDL-PU: Model-Based Deep Learning for InSAR Phase Unwrapping
    Zhou, Lifan
    Yu, Hanwen
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2025, 63
  • [49] A DETAIL-PRESERVATION METHOD OF DEEP LEARNING ONE-STEP PHASE UNWRAPPING
    Ye, Xin
    Qian, Jiang
    Wang, Yong
    Yu, Hanwen
    Wang, Lu
    2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022), 2022, : 1115 - 1118
  • [50] VDE-Net: a two-stage deep learning method for phase unwrapping
    Zhao, Jiaxi
    Liu, Lin
    Wang, Tianhe
    Wang, Xianzhou
    DU, Xiaohui
    Hao, Ruqian
    Liu, Juanxiu
    Liu, Yong
    Zhang, Jing
    OPTICS EXPRESS, 2022, 30 (22) : 39794 - 39815