Image-Domain Based Material Decomposition by Multi-Constraint Optimization for Spectral CT

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Abstract

As a new generation computed tomography (CT) technology, spectral CT has great potential in many aspects, especially in the identification and decomposition of materials. To achieve higher accuracy of materials decomposition, we propose a multi-constraint based nonlocal total variation (NLTV) method, named as MCNLTV. Because image-domain based material decomposition belongs to the two-step material decomposition method, the Filter Back-Projection (FBP) algorithm or SART algorithm is used to reconstruct spectral CT images in the first step. Then the material attenuation coefficient matrix is obtained from the reconstruction results. In the second step, MCNLTV regularization is utilized to obtain the material decomposition image. Both simulation experiments and real data experiments are carried out. Experiment results show that the proposed method can obtain higher accuracy of material decomposition than traditional total variation based material decomposition (TVMD), ROF-LLT regularization and direct inverse transformation (DI) for spectral CT.

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Feng, J., Yu, H., Wang, S., & Liu, F. (2020). Image-Domain Based Material Decomposition by Multi-Constraint Optimization for Spectral CT. IEEE Access, 8, 155450–155458. https://doi.org/10.1109/ACCESS.2020.3016675

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