Research on Bolt Crack Detection Method Based on Image Processing

Article Preview

Abstract:

A method of non-contact detection of bolt fracture have serial steps as follows: First of all the required data is obtained through image acquisition, then through the edge detection, image recognition and other image processing on the image to get the bolt fracture identification results, finally the non-contact measurement bolt fracture is realized. Experiments show that bolt crack detection method based on image processing, compared with the traditional detection methods improve the efficiency of detection and improve the detection accuracy. The method for bolt crack detection is feasible.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

426-429

Citation:

Online since:

October 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Chinese mechanical engineering society for non-destructive testing series. Penetration testing[M]. Beijing: Mechanical industry press, 1986 , In Chinese.

Google Scholar

[2] Xiaoping Ding: Nondestructive testing, Vol. 23, (2001), P523-525 , In Chinese.

Google Scholar

[3] Zhenpei Xu. Study on the wheelset fluorescent magnetic crack inspection system for railway[D]. Jiangsu: Nanjing university of science and technology , (2007) , In Chinese.

Google Scholar

[4] Ran Zhang: Residential technology, (2011), P295-297.In Chinese.

Google Scholar

[5] Xiaodong Yang, Jianli Shang, Linxu Zhang: Building technology, Vol. 36, (2005), P118-120 In Chinese.

Google Scholar

[6] Ye Yao, Xiong Luo, Shiqing Liu: Microcomputer application, Vol. 18, (2008), P20-23 , In Chinese.

Google Scholar

[7] Li Zhang, Yingjie Fu and Jian Zhang: Mechanical design and manufacturing, Vol. 36, (2012), P228-230 , In Chinese.

Google Scholar

[8] Osher S, Sethian J A: Journal of Computational Physics, Vol. 79, (1998), P12-49 , In Chinese.

Google Scholar

[9] Jianguo Zhang. Level set method for feature extraction and its application in medical diagnosis[D]. Shanxi: Taiyuan university of science and technology, 2011 , In Chinese.

Google Scholar

[10] Yun Qian, Yingjie Zhang. Chinese journal of image and graphics, Vol. 13, (2008), P7-13 , In Chinese.

Google Scholar

[11] Xiaojun Xue, Liqiang Zhang, Zhong Xue: Computer technology and development, Vol. 20, (2010), P201-204 , In Chinese.

Google Scholar