Document Type
Article (Restricted)
Publication Date
1-1-2012
Abstract
Automated detection of welding defects in radiographic images becomes non-trivial when uneven illumination, contrast and noise are present. In this paper, a new surface thresholding method is introduced to detect defects in radiographic images of welding joints. In the first stage, several image processing techniques namely fuzzy c means clustering, region filling, mean filtering, edge detection, Otsu’s thresholding and morphological operations method are utilised to locate the area in which defects might exist. This is followed by the implementation of inverse surface thresholding with partial differential equation to locate isolated areas that represent the defects in the second stage. The proposed method obtained a promising result with high precision.
Keywords
Nondestructive testing, Welded joints, Surface thresholding, Fuzzy c means clustering
Divisions
fac_eng
Publication Title
Nondestructive Testing and Evaluation
Volume
27
Issue
1
Publisher
Taylor & Francis
Additional Information
University of Malaya, 50603 Kuala Lumpur, MALAYSIA