Paper Title:
Review of Vision Real-Time Inspection Algorithm for Rolling Steel Surface Defects
  Abstract

Rolling steel surface defect inspection technology based on machine vision is more and more widely used. The latest progress of vision-based real-time inspection algorithm for rolling steel surface defect at home and abroad is introduced, and several key issues are analyzed. Finally, the current domestic research emphases and development trends are proposed.

  Info
Periodical
Advanced Materials Research (Volumes 308-310)
Chapter
Structural Strength and Robustness
Edited by
Jian Gao
Pages
1328-1332
DOI
10.4028/www.scientific.net/AMR.308-310.1328
Citation
W. B. Li, C. H. Lu, J. C. Zhang, "Review of Vision Real-Time Inspection Algorithm for Rolling Steel Surface Defects", Advanced Materials Research, Vols. 308-310, pp. 1328-1332, 2011
Online since
August 2011
Export
Price
$32.00
Share

In order to see related information, you need to Login.

In order to see related information, you need to Login.

Authors: Ji Gang Wu, Kuan Fang He, Bin Qin
Abstract:Aiming at the subpixle edge detection of speckle in autofocus for micro-machine vision, a novel accurate subpixel edge detection algorithm...
228
Authors: Zhong Liang Pan, Ling Chen, Guang Zhao Zhang
III. Display Technologies
Abstract:The defects of LED wafer may be caused from the manufacturing environments such as contamination. The appearance of the defects can results...
251
Authors: Lin Zhi Liu
Chapter 13: Precision Manufacturing Technology and Measurements
Abstract:In manufacturing field, the geometric parameters measurement of tool is an essential process in manufacturing ball-end cutter. An optical...
2109
Authors: Shan Shan Gong, Mu Jun Li
Chapter 5: Control and Detection Technology
Abstract:For shape error analysis and correction of micro-structure in lithography, image edges should be extracted from micrographs of the...
1109
Authors: Jia Jun Zhang, Li Juan Liang
Chapter 1: Computing, Industrial Engineering and Technology
Abstract:The background noise influences the face image recognition greatly. It is crucial to remove the noise signals prior to the face image...
74