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Raman Signal Extraction from CARS Spectra Using a Learned-Matrix Representation of the Discrete Hilbert Transform

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Removing distortions in coherent anti-Stokes Raman scattering (CARS) spectra due to interference with the nonresonant background (NRB) is vital for quantitative analysis. Popular computational approaches, the Kramers-Kronig relation and the maximum entropy method, have demonstrated success but may generate significant errors due to peaks that extend in any part beyond the recording window. In this work, we present a learned matrix approach to the discrete Hilbert transform that is easy to implement, fast, and dramatically improves accuracy of Raman retrieval using the Kramers-Kronig approach.

Charles H. Camp Jr• 2022

Related benchmarks

TaskDatasetResultRank
Raman ReconstructionMethanol Real-world CARS sample
MSE0.0315
11
Raman ReconstructionSynthetic Raman Spectra (test)
MSE0.0814
11
Raman ReconstructionAcetone Real-world CARS sample
MSE0.2663
11
Raman ReconstructionDMSO Real-world CARS sample
MSE0.0157
11
Raman ReconstructionEthanol Real-world CARS sample
MSE0.0351
11
Raman ReconstructionIsopropanol Real-world CARS sample
MSE0.0607
11
Raman ReconstructionToluene Real-world CARS sample
MSE0.1129
11
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