English

From variable density sampling to continuous sampling using Markov chains

Applications 2013-07-29 v1

Abstract

Since its discovery over the last decade, Compressed Sensing (CS) has been successfully applied to Magnetic Reso- nance Imaging (MRI). It has been shown to be a powerful way to reduce scanning time without sacrificing image quality. MR images are actually strongly compressible in a wavelet basis, the latter being largely incoherent with the k-space or spatial Fourier domain where acquisition is performed. Nevertheless, since its first application to MRI [1], the theoretical justification of actual k-space sampling strategies is questionable. Indeed, the vast majority of k-space sampling distributions have been heuris- tically designed (e.g., variable density) or driven by experimental feasibility considerations (e.g., random radial or spiral sampling to achieve smoothness k-space trajectory). In this paper, we try to reconcile very recent CS results with the MRI specificities (mag- netic field gradients) by enforcing the measurements, i.e. samples of k-space, to fit continuous trajectories. To this end, we propose random walk continuous sampling based on Markov chains and we compare the reconstruction quality of this scheme to the state- of-the art.

Keywords

Cite

@article{arxiv.1307.6960,
  title  = {From variable density sampling to continuous sampling using Markov chains},
  author = {Nicolas Chauffert and Philippe Ciuciu and Pierre Weiss and Fabrice Gamboa},
  journal= {arXiv preprint arXiv:1307.6960},
  year   = {2013}
}
R2 v1 2026-06-22T00:58:15.791Z