An application of wavelet transform toward noisy NMR peak suppression

  • Kim, Daesung (Department of Chemistry and Applied Chemistry, College of Science and Technology, Hanyang University) ;
  • Kim, Dai-Gyoung (Department of Applied Mathematics, College of Science and Technology, Hanyang University)
  • Published : 2002.06.01

Abstract

A shift-averaged Haar wavelet transform was introduced as a new and excellent tool to distinguish real peaks from the noise contaminated NMR signals. It is based on Haar wavelet transform and translation-invariant denoising process. Donoho's universal threshold was newly introduced to the shift-averaged Haar wavelet transform for the purpose of automated noise suppression, and was quantitatively compared with the conventional uniform threshold method in terms or threshold and signal to noise ratio (SNR). New algorithm was combined with a routine to suppress a large solvent peak by singular value decomposition (SVD). Combined algorithm was applied to the real spectrum that containing large solvent peak.

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