Literature DB >> 35197457

Deep learning in optical metrology: a review.

Chao Zuo1,2, Jiaming Qian3,4, Shijie Feng3,4, Wei Yin3,4, Yixuan Li3,4, Pengfei Fan3,4,5, Jing Han4, Kemao Qian6, Qian Chen7.   

Abstract

With the advances in scientific foundations and technological implementations, optical metrology has become versatile problem-solving backbones in manufacturing, fundamental research, and engineering applications, such as quality control, nondestructive testing, experimental mechanics, and biomedicine. In recent years, deep learning, a subfield of machine learning, is emerging as a powerful tool to address problems by learning from data, largely driven by the availability of massive datasets, enhanced computational power, fast data storage, and novel training algorithms for the deep neural network. It is currently promoting increased interests and gaining extensive attention for its utilization in the field of optical metrology. Unlike the traditional "physics-based" approach, deep-learning-enabled optical metrology is a kind of "data-driven" approach, which has already provided numerous alternative solutions to many challenging problems in this field with better performances. In this review, we present an overview of the current status and the latest progress of deep-learning technologies in the field of optical metrology. We first briefly introduce both traditional image-processing algorithms in optical metrology and the basic concepts of deep learning, followed by a comprehensive review of its applications in various optical metrology tasks, such as fringe denoising, phase retrieval, phase unwrapping, subset correlation, and error compensation. The open challenges faced by the current deep-learning approach in optical metrology are then discussed. Finally, the directions for future research are outlined.
© 2022. The Author(s).

Entities:  

Year:  2022        PMID: 35197457      PMCID: PMC8866517          DOI: 10.1038/s41377-022-00714-x

Source DB:  PubMed          Journal:  Light Sci Appl        ISSN: 2047-7538            Impact factor:   20.257


  7 in total

1.  Optical metrology embraces deep learning: keeping an open mind.

Authors:  Bing Pan
Journal:  Light Sci Appl       Date:  2022-05-17       Impact factor: 20.257

2.  Deep learning based analysis of microstructured materials for thermal radiation control.

Authors:  Jonathan Sullivan; Arman Mirhashemi; Jaeho Lee
Journal:  Sci Rep       Date:  2022-06-13       Impact factor: 4.996

3.  Multilevel threshold image segmentation for COVID-19 chest radiography: A framework using horizontal and vertical multiverse optimization.

Authors:  Hang Su; Dong Zhao; Hela Elmannai; Ali Asghar Heidari; Sami Bourouis; Zongda Wu; Zhennao Cai; Wenyong Gui; Mayun Chen
Journal:  Comput Biol Med       Date:  2022-05-18       Impact factor: 6.698

4.  PSOWNNs-CNN: A Computational Radiology for Breast Cancer Diagnosis Improvement Based on Image Processing Using Machine Learning Methods.

Authors:  Ashkan Nomani; Yasaman Ansari; Mohammad Hossein Nasirpour; Armin Masoumian; Ehsan Sadeghi Pour; Amin Valizadeh
Journal:  Comput Intell Neurosci       Date:  2022-05-11

5.  Correction: Deep learning in optical metrology: a review.

Authors:  Chao Zuo; Jiaming Qian; Shijie Feng; Wei Yin; Yixuan Li; Pengfei Fan; Jing Han; Kemao Qian; Qian Chen
Journal:  Light Sci Appl       Date:  2022-03-27       Impact factor: 17.782

6.  Gun identification from gunshot audios for secure public places using transformer learning.

Authors:  Rahul Nijhawan; Sharik Ali Ansari; Sunil Kumar; Fawaz Alassery; Sayed M El-Kenawy
Journal:  Sci Rep       Date:  2022-08-02       Impact factor: 4.996

7.  Deep Learning-Based 3D Measurements with Near-Infrared Fringe Projection.

Authors:  Jinglei Wang; Yixuan Li; Yifan Ji; Jiaming Qian; Yuxuan Che; Chao Zuo; Qian Chen; Shijie Feng
Journal:  Sensors (Basel)       Date:  2022-08-27       Impact factor: 3.847

  7 in total

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