Tomographic Image Reconstruction in the Case of Limited Number of X-Ray Projections Using Sinogram Inpainting


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In many medicine and industry applications, a precise X-ray tomography reconstruction of the internal objects structure is of great importance for reliable interpretation data. The tomography allows obtaining a spatial distribution of the internal materials structure. In certain experiments conditions, the projection data acquisition is guided by angle limitations or a restricted angle, this requires a subsampling of the projections number or a partial data absence. Accordingly, the reconstructed images may suffer from severe artefacts especially with the presence of noise. In this context, the purpose of this paper is to propose a tomographic image reconstruction method based on FBP associated to sinogram inpainting. The studied inpainting technique is based on first order variational methods such as the Chambolle-Pock algorithm. This method allows the quality improvement of the reconstruction images tomographic with reduced number of projection. The PSNR is improved by 7 to 10 dB in the reconstructed image compared to the classical FBP reconstruction.

Sobre autores

A. Allag

Research Center in Industrial Technologies (CRTI); University of Sciences and Technology Houari Boumédiène

Email: Abs_benammar@yahoo.fr
Argélia, Cheraga, Algiers; USTHB, BP 32, El-Alia, DZ-16111

A. Benammar

Research Center in Industrial Technologies (CRTI)

Autor responsável pela correspondência
Email: Abs_benammar@yahoo.fr
Argélia, Cheraga, Algiers

R. Drai

Research Center in Industrial Technologies (CRTI)

Email: Abs_benammar@yahoo.fr
Argélia, Cheraga, Algiers

T. Boutkedjirt

University of Sciences and Technology Houari Boumédiène

Email: Abs_benammar@yahoo.fr
Argélia, USTHB, BP 32, El-Alia, DZ-16111

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