EVALUATION OF MIG WELDING SURFACES USING GAUSSIAN DISTRIBUTION
Keywords:
MIG Welding, Welding Defects, Vision System , Gaussian DistributionAbstract
In this paper, an effort has been taken to assess the qualities of MIG (Metal Inert Gas) welded joints using vision system and the assumption that the vertical section of the surface of a weld image can be estimated by Gaussian distribution(normal curve). The surface variations of the weld image caused by defects are used to categorize welds as good weld, and no weld. This paper consists of two major divisions: weld extraction and surface quality evaluation. Initially weld beads are extracted from the MIG Welded joints through CCD camera of a machine vision system. The grey level values of the pixels from the captured images are assumed to fit a Gaussian distribution, and then determine their qualities. This method is tested with 80 images of good and no weld. Finally, it is concluded that this method may be used for extraction of features in vision inspection system of the quality of welded surfaces.
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