A Sparse Representation Based Fast Detection Method For Surface Defect Detection Of Bottle Caps

A practical machine-vision-based system is developed for fast detection of defects occurring on the surface of bottle caps. This system can be used to extract the circular region as the region of interests (ROI) from the surface of a bottle cap, and then use the circular region projection histogram (CRPH) as the matching features. We establish two dictionaries for the template and possible defect, respectively. Due to the requirements of high-speed production as well as detecting quality, a fast algorithm based on a sparse representation is proposed to speed up the searching. In the sparse representation, non-zero elements in the sparse factors indicate the defect's size and position. Experimental results in industrial trials show that the proposed method outperforms the orientation code method (OCM) and is able to produce promising results for detecting defects on the surface of bottle caps.

Author
W Zhou Et Al
Origin
Unknown
Journal Title
Neurocomputing 123, January 2014 406-414
Sector
Container glass
Class
C 5809

Request article (free for British Glass members)

A Sparse Representation Based Fast Detection Method For Surface Defect Detection Of Bottle Caps
Neurocomputing 123, January 2014 406-414
C 5809
Are you a member?
This question is for testing whether or not you are a human visitor and to prevent automated spam submissions.
1 + 0 =
Solve this simple math problem and enter the result. E.g. for 1+3, enter 4.