Reconstructing undersampled MR Images by utilizingprincipal-component-analysis-based pattern recognition

Authors

  • Fangrong Zong
  • Marcel Nogueira D’Eurydice
  • Petrik Galvosas

DOI:

https://doi.org/10.62721/diffusion-fundamentals.22.840

Keywords:

MRI; fast imaging; principal components analysis; recognition; compressed sensing

Abstract

Compressed sensing technique is a recent framework for signal sampling and recovery. It allows signal acquisition with less sampling than required by Nyquist-Shannon theorem and reduces data acquisition time in MRI. When the sampling rate is low, prior knowledge is essential to reconstruct the missing features. In this paper, a different reconstruction method is proposed by using the principal component analysis based on pattern recognition. The experiments demonstrate that this method can reduce aliasing artefacts and achieve a high peak signal-to-noise ratio compared to a compressed sensing reconstruction.

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Published

2014-12-31

How to Cite

Zong, F., D’Eurydice, M. N., & Galvosas, P. (2014). Reconstructing undersampled MR Images by utilizingprincipal-component-analysis-based pattern recognition. Diffusion Fundamentals, 22. https://doi.org/10.62721/diffusion-fundamentals.22.840

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