• Aucun résultat trouvé

Detection of Weld Defects in Radiographic Imageby the Level Set Methods.

N/A
N/A
Protected

Academic year: 2021

Partager "Detection of Weld Defects in Radiographic Imageby the Level Set Methods."

Copied!
1
0
0

Texte intégral

(1)

4ème Symposium International Images Multimédias Applications Graphiques et Environnements, IMAGE’2008 Guelma, Algérie

2008

Detection of Weld Defects in Radiographic Image by the Level Set Methods.

H. BOUCENNA, M. Halimi

Abstract : All level set based image segmentation methods are based on an assumption that the level set function is or close to a signed distance function (SDF). Small time step and costly reinitialization procedure must be applied to guarantee this assumption, and in order to calculate the gradient, simple numerical schemes, based on finite differences, are applied. In this paper, in order to achieve higher order accuracy in the temporal discretization, we have used Total Variation Diminishing (TVD) Runge Kutta (RK) methods. The spatial derivatives are determined by using the Essentially Non- Oscillatory methods (ENO) that accurately capture the formation of sharp gradients in the moving fronts. Experiments results show that we have obtained good results both on synthetic and real images.

Keywords : ENO and WENO schemes, Edge detection, Image processing, image segmentation

Centre de Recherche en Technologies Industrielles - CRTI - www.crti.dz

Powered by TCPDF (www.tcpdf.org)

Références

Documents relatifs

Based on probability theory involving a graphical structure and random variables, BN iswidely used for classification tasks and in this paper, BN is used as a class discrimination

Based on probabilitytheory involving a graphical structure and random variables, BN iswidely used for classification tasks and in this paper, BN is used as aclass discrimination

Based on probability theory involving a graphical structure and random variables, BN is widely used for classification tasks and in this paper, BN is used as a class

Weld defect features are computed from the segmentation result (final binary level set).. We have computed several features; they are ranked in two categories: Geometric features

Weld defect segmentation and restoration from rough radiographic image: (a) Defined ROI in rough weld radiographic image, (b) ROI image with initial contour (dashed green line)

Image and Signal Processing Laboratory Welding and Control Research Center Route Dely Brahim Bp.. 64

A comparative study between the hybrid wavelet-fractal coder and pure fractal compression technique have been made in order to investigate the compression ratio

The particularity of this model is the capacity to detect boundaries’ objects without need to use gradient of the image, this propriety gives its several advantages: it allows