4.6 Article

Joint Baseline-Correction and Denoising for Raman Spectra

Journal

APPLIED SPECTROSCOPY
Volume 69, Issue 9, Pages 1013-1022

Publisher

SAGE PUBLICATIONS INC
DOI: 10.1366/14-07760

Keywords

Raman spectroscopy; Optical data processing; Baseline correction; Denoising; Morphological operation; Regularization

Funding

  1. National Social Science Fund of China [14BGL131]
  2. National Natural Science Foundation of China [61505064, 60902060]
  3. Project of the Program for National Key Technology Research and Development Program [2013BAH72B01, 2013BAH18F02, 2015BAH33F02]
  4. Self-Determined Research Funds of CCNU from the Colleges' Basic Research and Operation of MOE [CCNU15A05009, CCNU15A05010]
  5. Scientific R&D Project of the State Education Ministry and China Mobile [MCM20121061]
  6. Chinese Ministry of Education, New Century Excellent Talents in University [NCET-11-0654]

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Laser instruments often suffer from the problem of baseline drift and random noise, which greatly degrade spectral quality. In this article, we propose a variation model that combines baseline correction and denoising. First, to guide the baseline estimation, morphological operations are adopted to extract the characteristics of the degraded spectrum. Second, to suppress noise in both the spectrum and baseline, Tikhonov regularization is introduced. Moreover, we describe an efficient optimization scheme that alternates between the latent spectrum estimation and the baseline correction until convergence. The major novel aspect of the proposed algorithms is the estimation of a smooth spectrum and removal of the baseline simultaneously. Results of a comparison with state-of-the-art methods demonstrate that the proposed method outperforms them in both qualitative and quantitative assessments.

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