Computer Vision Algorithm for Surface Defects Identification in TIG Welded Joints

Open Access

Year : 2023 | Volume : | : | Page : –
By

Sunil Kumar,

Adarsh Kumar,

  1. Research Scholar, Department of Mechanical Engineering, Bansal Institute of Engineering and Technology, , India
  2. Assistant Professor, Department of Mechanical Engineering, Bansal Institute Of Engineering and Technology, , India

Abstract

Quality monitoring of welded joints is still quite a tedious job for many industries. The surface defects on welded joints arises from the improper selection of various input parameters which further result bad quality weld. This paper highlight the application of a computer vision algorithm called discrete Fourier transformation approach for identification of surface defects present on TIG welded joints.

Keywords: Machine vision, surface defects, TIG welding, Fourier transformation

How to cite this article:
Sunil Kumar, Adarsh Kumar. Computer Vision Algorithm for Surface Defects Identification in TIG Welded Joints. Research & Reviews : Journal of Computational Biology. 2023; ():-.
How to cite this URL:
Sunil Kumar, Adarsh Kumar. Computer Vision Algorithm for Surface Defects Identification in TIG Welded Joints. Research & Reviews : Journal of Computational Biology. 2023; ():-. Available from: https://journals.stmjournals.com/rrjocb/article=2023/view=90073


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Open Access Article
Volume
Received 09/03/2021
Accepted 20/04/2021
Published 07/01/2023