arXiv:1411.6206 [cs.CV]AbstractReferencesReviewsResources
Low-Rank and Sparse Matrix Decomposition with a-priori knowledge for Dynamic 3D MRI reconstruction
Dornoosh Zonoobi, Shahrooz Faghih Roohi, Ashraf A. Kassim
Published 2014-11-23Version 1
It has been recently shown that incorporating priori knowledge significantly improves the performance of basic compressive sensing based approaches. We have managed to successfully exploit this idea for recovering a matrix as a summation of a Low-rank and a Sparse component from compressive measurements. When applied to the problem of construction of 4D Cardiac MR image sequences in real-time from highly under-sampled $k-$space data, our proposed method achieves superior reconstruction quality compared to the other state-of-the-art methods.
Comments: conference
Categories: cs.CV
Keywords: dynamic 3d mri reconstruction, sparse matrix decomposition, a-priori knowledge, cardiac mr image sequences, superior reconstruction quality
Tags: conference paper
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