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An automatic system of classification of weld defects in radiographic images

✍ Scribed by Rafael Vilar; Juan Zapata; Ramón Ruiz


Publisher
Elsevier Science
Year
2009
Tongue
English
Weight
666 KB
Volume
42
Category
Article
ISSN
0963-8695

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✦ Synopsis


In this paper, we describe an automatic detection system to recognise welding defects in radiographic images. In a first stage, image processing techniques, including noise reduction, contrast enhancement, thresholding and labelling, were implemented to help in the recognition of weld regions and the detection of weld defects. In a second stage, a set of geometrical features which characterise the defect shape and orientation was proposed and extracted between defect candidates. In a third stage, an artificial neural network (ANN) for weld defect classification was used. With the aim of obtaining the best performance of ANN three different methods for improving network generalisation was used. The results was compared with a method without generalisation. For the input layer, the principal component analysis technique was used in order to reduce the number of feature variables; and, for the hidden layer, a different number of neurons was used.


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