Application Research of Visual Processing Technology in the Industrial Production Line

Article Preview

Abstract:

The CCD image sensor is set in the different production position, whose output signal is converted into digital signals to a dedicated image processing system by A/D. Using the image enhancement, smoothing, sharpening, segmentation, feature extraction, image recognition and understanding of digital image processing techniques,the system can identify the image, compare with feature information preservation, decide whether to enter the next process according to the similarity degree of alignment. Visual inspection having high precision, fast speed, working in the industrial field is stable and reliable, and improves the level of automation of production, make the products more competitive.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

338-341

Citation:

Online since:

May 2014

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] David Storya, Murat Kaciraa, Chieri Kubotab, Ali Akogluc, Lingling AnaLettuce calcium deficiency detection with machine vision computed plant features in controlled environments, Computers and Electronics in Agriculture, 74: 238-243, (2010).

DOI: 10.1016/j.compag.2010.08.010

Google Scholar

[2] KIM T H, CHO T H, MOON Y S, et al. Visual inspection system for the classification of solder joints. Pattern Recognition, 1999, (32): 565-575.

DOI: 10.1016/s0031-3203(98)00103-4

Google Scholar

[3] LAHAJNARF, BERNARD R, PERNUS F, etal. Machine vision system for inspecting electric plates[J]. Computers in Industry, 2002, 47(1) 113-122.

DOI: 10.1016/s0166-3615(01)00134-8

Google Scholar

[4] HEMAYED E A. survey of camera self -calibration [J]. Proceedings of the IEEE Conference on Advanced Videoand Signal Based Surveillance, (2003).

DOI: 10.1109/avss.2003.1217942

Google Scholar

[5] Liang Hu, Fajie Duan, Keqin Ding. Development of on-line computer vision detection system of steel strip surface defects [J]. Iron and steel,2005, 40(2):59-61.

Google Scholar

[6] Yonghui He, Shengbiao Huang, Guifen Shi. Research on Application of cold steel strip surface defect detection system online[A]. China Metal Institute. 2007 China steel annual meeting proceedings [C]. Beijing: (2007).

Google Scholar