| Literature DB >> 34960369 |
Hyeong Geun Yu1, Dong Jo Park1, Dong Eui Chang1, Hyunwoo Nam2.
Abstract
Raman spectroscopy, which analyzes a Raman scattering spectrum of a target, has emerged as a key technology for non-contact chemical agent (CA) detection. Many CA detection algorithms based on Raman spectroscopy have been studied. However, the baseline, which is caused by fluorescence generated when measuring the Raman scattering spectrum, degrades the performance of CA detection algorithms. Therefore, we propose a baseline correction algorithm that removes the baseline, while minimizing the distortion of the Raman scattering spectrum. Assuming that the baseline is a linear combination of broad Gaussian vectors, we model the measured spectrum as a linear combination of broad Gaussian vectors, bases of background materials and the reference spectra of target CAs. Then, we estimate the baseline and Raman scattering spectrum together using the least squares method. Design parameters of the broad Gaussian vectors are discussed. The proposed algorithm requires reference spectra of target CAs and the background basis matrix. Such prior information can be provided when applying the CA detection algorithm. Via the experiment with real CA spectra measured by the Raman spectrometer, we show that the proposed baseline correction algorithm is more effective for removing the baseline and improving the detection performance, than conventional baseline correction algorithms.Entities:
Keywords: Raman spectroscopy; baseline correction; chemical agent detection; generalized likelihood ratio test; signal processing
Year: 2021 PMID: 34960369 PMCID: PMC8704835 DOI: 10.3390/s21248260
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Eleven broad Gaussian vectors used in the experiment. The center interval of each Gaussian vector is 312 cm and the variance of each Gaussian vector is 265 cm
Figure 2(a) Reference spectrum of the cyclosarin (GF), (b) GF-on-concrete and concrete-only spectra.
Figure 3Baselines estimated by the proposed algorithm with 5, 11 and 30 broad Gaussian vectors from (a) the GF-on-concrete spectrum and (b) the concrete-only spectrum.
RMSME averages of the proposed algorithm according to the number of Gaussian vectors.
| Non BC |
|
|
| |
|---|---|---|---|---|
| GF-on-concrete | 1203.4 | 492.51 | 471.83 | 558.83 |
| Concrete-only | 880.55 | 307.71 | 298.40 | 314.98 |
Figure 4Baselines estimated by several baseline correction algorithms from (a) the GF-on-concrete spectrum and (b) the concrete-only spectrum.
RMSME averages of 500 GF-on-concrete spectra and 1000 concrete-only spectra for baseline correction algorithms.
| Non BC | IMF | RCF | ALS | AirPLS | ArPLS | Proposed | |
|---|---|---|---|---|---|---|---|
| GF-on-concrete | 1203.4 | 607.01 | 635.53 | 555.96 | 528.96 | 533.84 | 471.83 |
| Concrete-only | 880.55 | 400.10 | 419.63 | 350.16 | 328.47 | 323.43 | 298.40 |
Figure 5ROC curves of the ASD for the GF detection.
Figure 6(a) Reference spectrum of the phosphorus trichloride (PH) and (b) PH-on-asphalt and asphalt-only spectra. Baselines estimated by several baseline correction algorithms from (c) the PH-on-asphalt spectrum and (d) the asphalt-only spectrum.
RMSME averages of 500 PH-on-asphalt spectra and 1600 asphalt-only spectra for baseline correction algorithms.
| Non BC | IMF | RCF | ALS | AirPLS | ArPLS | Proposed | |
|---|---|---|---|---|---|---|---|
| PH-on-asphalt | 887.78 | 518.12 | 429.10 | 408.18 | 390.67 | 342.60 | 327.71 |
| Asphalt-only | 658.59 | 425.71 | 361.89 | 318.15 | 300.81 | 297.47 | 259.79 |
Figure 7ROC curves of the ASD for the PH detection.