Research of Visual Inspection and Sorting System of Cigarette Carton Brand

Article Preview

Abstract:

To reduce error inspection rate of the brand inspection in enterprise logistics, this paper puts forward a inspection method which depends on template matching algorithm based on machine vision.This method identifies cigarette carton brand by image processing, first template matching, accurate template matching of real-time carton bar code, then sends message to industrial personal computer to does sorting operation. Practice has proved that the system is stable, fast, accurate to meet the site requirement.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

163-168

Citation:

Online since:

October 2014

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Carsten Steger, Markus Uirich. Machine vision algorithms and applications[M]. Tsinghua University Press, (2008).

Google Scholar

[2] Guangjun-zhang. Machine Vision[M]. Science Press. 2005: 331-382.

Google Scholar

[3] Stanley B, Lippman, Josée LaJoie, Barbara E. Moo. C++ Primer Chinese version [M]. People Post Press, (2006).

Google Scholar

[4] Jing-Yang. VB 6. 0 Program design[M]. Mechanical Industry Press, (2004).

Google Scholar

[5] Tao-Jing, chong-wang. Optical character recognition technology and Prospects[J]. Computer Engineering, 2003, 29(02): 1-3.

Google Scholar

[6] Xue yong-Song, Min-Zhao. Key technology of machine vision systems[J]. Computer World, 2011, B11: 1-3.

Google Scholar

[7] Zhi lei-Yuan, Jin song-Du. The smoke box based on the lack of monitoring of machine vision systems[J]. Mechanical Design and Manufacturing, 2012, 6: 101-103.

Google Scholar

[8] Huan jun-Liu, Yao nan-Wang. Machine vision image capture technology[J]. Computer and Information Technology, 2003, (01): 18-21.

Google Scholar

[9] Zhi qiang-Zhao, Yuan jiao-Xiong. Computer vision detection system design bill[J]. Industrial control computer, 2005, (01): 18-21.

Google Scholar

[10] Huan jun-Liu, Yao nan-Wang. Machine vision image capture technology[J]. Computer and Information Technology, 2003, 18 (10): 1-2.

Google Scholar