Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Deep learning in optical metrology: a review

View through CrossRef
AbstractWith 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.
Title: Deep learning in optical metrology: a review
Description:
AbstractWith 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.

Related Results

Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
STEM and Metrology Education Outreach In New Hampshire
STEM and Metrology Education Outreach In New Hampshire
When skilled metrology practitioners leave the industry due to retirement, career change or simply exit the field, we have difficulty obtaining replacement staff with the required ...
Development of electro‐optical PCBs with polymer waveguides for high‐speed intra‐system interconnects
Development of electro‐optical PCBs with polymer waveguides for high‐speed intra‐system interconnects
PurposeThe purpose of this paper is to study fabrication of optical‐PCBs on panel scale boards in a conventional modern PCB process environment. It evaluates impacts on board desig...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
A V-Shape Optical Pin Interface for Board Level Optical Interconnect
A V-Shape Optical Pin Interface for Board Level Optical Interconnect
This paper introduces a new interface of an optical pin for Printed Circuit Boards (PCBs), the V-shape cut type which is an innovation from the 90-degree cut type optical pin. The ...
Contributions to optimal detection in OTDM and OCDMA optical receivers
Contributions to optimal detection in OTDM and OCDMA optical receivers
Recent developments in optical communication systems have increased the performance of optical networks. Low attenuation fiber optics, high spectral purity lasers and optical ampli...
Highly-efficient optical storage of two orthogonal polarization modes in a cold atom ensemble
Highly-efficient optical storage of two orthogonal polarization modes in a cold atom ensemble
Optical quantum memory plays an important role in scaling-up linear optical quantum computations and longdistance quantum communication. For effectively realizing such tasks, a lon...
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic 
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic 
Abstract Background: To minimize the risk of infection during the COVID-19 pandemic, the learning mode of universities in China has been adjusted, and the online learning o...

Back to Top