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Journal ArticleDOI

Design and application of industrial machine vision systems

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TLDR
The role and importance of the machine vision systems in the industrial applications, which include the area of automated visual inspection, process control, parts identification, and important role in the robotic guidance and control, are described.
Abstract
In this paper, the role and importance of the machine vision systems in the industrial applications are described. First understanding of the vision in terms of a universal concept is explained. System design methodology is discussed and a generic machine vision model is reported. Such a machine includes systems and sub-systems, which of course depend on the type of applications and required tasks. In general, expected functions from a vision machine are the exploitation and imposition of the environmental constraint of a scene, the capturing of the images, analysis of those captured images, recognition of certain objects and features within each image, and the initiation of subsequent actions in order to accept or reject the corresponding objects. After a vision system performs all these stages, the task in hand is almost completed. Here, the sequence and proper functioning of each system and sub-systems in terms of high-quality images is explained. In operation, there is a scene with some constraint, first step for the machine is the image acquisition, pre-processing of image, segmentation, feature extraction, classification, inspection, and finally actuation, which is an interaction with the scene under study. At the end of this report, industrial image vision applications are explained in detail. Such applications include the area of automated visual inspection (AVI), process control, parts identification, and important role in the robotic guidance and control. Vision developments in manufacturing that can result in improvements in the reliability, in the product quality, and enabling technology for a new production process are presented. The key points in design and applications of a machine vision system are also presented. Such considerations can be generally classified into the six different categories such as the scene constraints, image acquisition, image pre-processing, image processing, machine vision justification, and finally the systematic considerations. Each aspect of such processes is described here and the proper condition for an optimal design is reported.

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Citations
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References
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Book

Machine Vision: Theory, Algorithms, Practicalities

E.R. Davies
TL;DR: This work focuses on low-level processing on the three-dimensional world tackling the pespective n-point problem motion invariants and their applications and the need for speed - real-time electronic hardware systems.
Book

Applied Image Processing

TL;DR: System design scene constraints image acquisition image preprocessing image understanding image analysis pattern classification applications and case studies visual inspection robotic vision and control.
Proceedings ArticleDOI

Techniques for real-time generation of range images

TL;DR: Range sensors based on optical triangulation and time-of-flight techniques are reviewed to determine, from first principles and sensor parameters, what actually limits performance, and how performance can be improved.
Journal ArticleDOI

Machine vision and its integration within CIM systems in the electronics manufacturing industry

TL;DR: In this paper, the role of machine vision and the requirements for inspection during PCB assembly are examined and the need for the structured integration of vision machines within manufacturing systems to increase both flexibility and reliability is very important.
Journal ArticleDOI

Role of laser sensor systems in automation and flexible manufacturing

TL;DR: The operational principles and the use of the most advanced laser sensor systems for quantity measurements, guiding, navigation, pattern recognition, and vision systems for inspection purposes, which can be used as sensing devices in manufacturing, and production technology are described.
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