2021
DOI: 10.1109/access.2021.3116131
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Review: Application of Convolutional Neural Network in Defect Detection of 3C Products

Abstract: Based on the rapid development of semiconductors, integrated circuits and the Internet. 3C products such as computers, tablets, mobile phones and smart TVs have become an indispensable part of people's lives. With the prosperity and development of the 3C product market, the demand for the quality of display panels and related detection technologies are increasing. As the iconic network of deep learning, has been extensively studied in the field of image recognition and defect detection. Based on the developmen… Show more

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Cited by 19 publications
(15 citation statements)
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“…When dealing with MEA material structure optimization modeling in the future, reliability design should be integrated into the simulation process to improve the life of PEMFCs. (3) With the rapid development of computer technology, ML technology is widely used in the fields of industrial inspection and measurement [130][131][132], medical diagnosis [133,134], life sciences [135,136] and so on. For example, AlphaFold2 constructed a protein structure prediction model through ML; it was able to predict the properties of proteins from gene sequences, obtaining 98.5% of the human protein structure [135].…”
Section: Discussionmentioning
confidence: 99%
“…When dealing with MEA material structure optimization modeling in the future, reliability design should be integrated into the simulation process to improve the life of PEMFCs. (3) With the rapid development of computer technology, ML technology is widely used in the fields of industrial inspection and measurement [130][131][132], medical diagnosis [133,134], life sciences [135,136] and so on. For example, AlphaFold2 constructed a protein structure prediction model through ML; it was able to predict the properties of proteins from gene sequences, obtaining 98.5% of the human protein structure [135].…”
Section: Discussionmentioning
confidence: 99%
“…(4) The choice of classifier is one of the key points of Mura detection. Commonly used classification methods have certain advantages in one aspect, but their shortcomings are also observable in the other [82]. Therefore, combining the advantages of various classifiers and breaking through their limitations is one of the future research directions.…”
Section: Discussionmentioning
confidence: 99%
“…These algorithms will be improved as they are applied, and it is believed that future artificial intelligence will also produce more new algorithms that the optimization algorithm will apply to the EDM, such as selfish herds optimization, bald eagle search, etc. (4) With the fast advancement of technology, machine learning (ML) has found widespread use in a variety of industries, including industrial testing [121][122][123], medical diagnostics [124,125], life sciences [126,127], and renewable energy [128][129][130]. AlphaFold2, for instance, created a protein structure prediction model using ML, which can predict the properties of proteins based on gene sequences and achieve 98.5% of the structure of human proteins [126].…”
Section: Outlooksmentioning
confidence: 99%