Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision

The efficiency of the industrial production line is determined by the rejection rate, the ratio of how much output can be kept and how many needs to be scrapped. Detection of defects along the production line can reduce these wastages before products are delivered to clients. Assembly line quality i...

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第一著者: Wan Mohd Syakiran Bin Wan Shamshudin
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言語:English
出版事項: 2023
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id my.uniten.dspace-20482
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spelling my.uniten.dspace-204822023-05-04T23:48:03Z Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision Wan Mohd Syakiran Bin Wan Shamshudin Assembly Line Quality Inspection The efficiency of the industrial production line is determined by the rejection rate, the ratio of how much output can be kept and how many needs to be scrapped. Detection of defects along the production line can reduce these wastages before products are delivered to clients. Assembly line quality inspection using Artificial Intelligence based computer vision has been introduced to monitor process quality continuously during the manufacturing process. This project aims to improve Automated Optical Inspection (AOI) systems by using machine vision to detect differences between a finished product and a given reference product. Additionally, a deep learning artificial intelligence neural network will categorize the types of defects that are detected such as scratch, crack, and dent. This project proposes to combine visual inspection with deep learning artificial neural networks to achieve improved detection of production defects on a production line. 2023-05-03T15:02:20Z 2023-05-03T15:02:20Z 2019-10 https://irepository.uniten.edu.my/handle/123456789/20482 en application/pdf
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
topic Assembly Line Quality Inspection
spellingShingle Assembly Line Quality Inspection
Wan Mohd Syakiran Bin Wan Shamshudin
Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision
description The efficiency of the industrial production line is determined by the rejection rate, the ratio of how much output can be kept and how many needs to be scrapped. Detection of defects along the production line can reduce these wastages before products are delivered to clients. Assembly line quality inspection using Artificial Intelligence based computer vision has been introduced to monitor process quality continuously during the manufacturing process. This project aims to improve Automated Optical Inspection (AOI) systems by using machine vision to detect differences between a finished product and a given reference product. Additionally, a deep learning artificial intelligence neural network will categorize the types of defects that are detected such as scratch, crack, and dent. This project proposes to combine visual inspection with deep learning artificial neural networks to achieve improved detection of production defects on a production line.
format
author Wan Mohd Syakiran Bin Wan Shamshudin
author_facet Wan Mohd Syakiran Bin Wan Shamshudin
author_sort Wan Mohd Syakiran Bin Wan Shamshudin
title Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision
title_short Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision
title_full Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision
title_fullStr Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision
title_full_unstemmed Assembly Line Quality Inspection Using Artifical Intelligence Based Computer Vision
title_sort assembly line quality inspection using artifical intelligence based computer vision
publishDate 2023
_version_ 1806426533560057856
score 13.251813