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Sensitivity considerations on denoising series of spectra by singular value decomposition.

Francesco BrunoLetizia FiorucciEnrico Ravera
Published in: Magnetic resonance in chemistry : MRC (2023)
When acquiring series of spectra (e.g.: T 1 , T 2 , CP buildup curves, etc.) on samples with poor SNR, we are usually faced with choosing between taking a few points with a large number of scans to maximize the SNR or more points with a smaller number of scans to maximize the information content. In this Letter, we show how low-rank decomposition can be used to denoise a series of spectra, reducing the trade-off between the number of scans and the number of experiments.
Keyphrases
  • computed tomography
  • density functional theory
  • healthcare
  • magnetic resonance
  • dual energy
  • health information
  • molecular dynamics