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Application of the Image Segmentation Techniques for the Problems of Surface Defects Detection of Welds

Authors: Gavrilov A.I., Thet Aung Published: 04.10.2014
Published in issue: #5(98)/2014  
DOI:

 
Category: Informatics & Computing Technology  
Keywords: digital image processing, segmentation, visual inspection, welding process monitoring

Applications of images segmentation techniques are analyzed applied to the problem of surface defect detection. The multi-stage procedure of the surface defect detection is considered. Efficiency of the proposed algorithms of digital image processing is proved out by the test results using software system of surface defects detection on the images of welded connections of ring joints of large diameter pipes.

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