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Improvement of the Spectral Reconstruction Process with Pretreatment of Matrix in Convex Optimization

  • Jiang, Zheng-shuai (State Key Laboratory of Organic Electronics and Information Displays, Institute of Advanced Materials, Nanjing University of Posts and Telecommunications) ;
  • Zhao, Xin-yang (State Key Laboratory of Organic Electronics and Information Displays, Institute of Advanced Materials, Nanjing University of Posts and Telecommunications) ;
  • Huang, Wei (State Key Laboratory of Organic Electronics and Information Displays, Institute of Advanced Materials, Nanjing University of Posts and Telecommunications) ;
  • Yang, Tao (State Key Laboratory of Organic Electronics and Information Displays, Institute of Advanced Materials, Nanjing University of Posts and Telecommunications)
  • Received : 2021.01.07
  • Accepted : 2021.04.17
  • Published : 2021.06.25

Abstract

In this paper, a pretreatment method for a matrix in convex optimization is proposed to optimize the spectral reconstruction process of a disordered dispersion spectrometer. Unlike the reconstruction process of traditional spectrometers using Fourier transforms, the reconstruction process of disordered dispersion spectrometers involves solving a large-scale matrix equation. However, since the matrices in the matrix equation are obtained through measurement, they contain uncertainties due to out of band signals, background noise, rounding errors, temperature variations and so on. It is difficult to solve such a matrix equation by using ordinary nonstationary iterative methods, owing to instability problems. Although the smoothing Tikhonov regularization approach has the ability to approximatively solve the matrix equation and reconstruct most simple spectral shapes, it still suffers the limitations of reconstructing complex and irregular spectral shapes that are commonly used to distinguish different elements of detected targets with mixed substances by characteristic spectral peaks. Therefore, we propose a special pretreatment method for a matrix in convex optimization, which has been proved to be useful for reducing the condition number of matrices in the equation. In comparison with the reconstructed spectra gotten by the previous ordinary iterative method, the spectra obtained by the pretreatment method show obvious accuracy.

Keywords

Acknowledgement

This work was supported by the National Natural Science Foundation of China (NSFC) (62074082) and the Natural Science Foundation of Jiangsu Province (BK20151512).

References

  1. J. M. Pearce and R. A. Komoroski, "Analysis of phospholipid molecular species in brain by 31P NMR spectroscopy," Mag. Resonan. Med. 44, 215-223 (2015).
  2. Y. Zhou, C. H. Liu, Y. Pu, B. Wu, T. A. Nguyen, G. Cheng, L. Zhou, K. Zhu, J. Chen, Q. Li, and R. R. Alfano, "Combined spatial frequency spectroscopy analysis with visible resonance Raman for optical biopsy of human brain metastases of lung cancers," J. Innovative Opt. Health Sci. 12, 1950010 (2019). https://doi.org/10.1142/s179354581950010x
  3. A. Kuze, H. Suto, M. Nakajima, and T. Hamazaki, "Thermal and near infrared sensor for carbon observation Fourier-transform spectrometer on the greenhouse gases observing satellite for greenhouse gases monitoring," Appl. Opt. 48, 6716-6733 (2009). https://doi.org/10.1364/AO.48.006716
  4. C. Hu, L. Feng, Z. Lee, C. O. Davis, A. Mannino, C. R. McClain, and B. A. Franz, "Dynamic range and sensitivity requirements of satellite ocean color sensors: learning from the past," Appl. Opt. 51, 6045-6062 (2012). https://doi.org/10.1364/AO.51.006045
  5. P. Mouroulis, B. V. Gorp, R. O. Green, H. Dierssen, D. W. Wilson, M. Eastwood, J. Boardman, B.-C. Gao, D. Cohen, B. Franklin, F. Loya, S. Lundeen, A. Mazer, I. McCubbin, D. Randall, B. Richardson, J. I. Rodriguez, C. Sarture, E. Urquiza, R. Vargas, V. White, and K. Yee, "Portable remote imaging spectrometer coastal ocean sensor: design, characteristics, and first flight results," Appl. Opt. 53, 1363-1380 (2014). https://doi.org/10.1364/AO.53.001363
  6. Y. Zhou, Q. W. Zhang, X. J. Luo, P. F. Li, H. Song, and B. L. Zhang, "Identification of some piper crude drugs based on Fourier transform infrared spectrometry," Spectrosc. Spectral Anal. 34, 2419-2423 (2014).
  7. M. Zhang, J. Liang, Z. Liang, J. Lv, Y. Qin, and W. Wang, "Fabrication and flatness error analysis of a low-stepped mirror in a static Fourier transform infrared spectrometer," J. Opt. Technol. 85, 582-589 (2018). https://doi.org/10.1364/jot.85.000582
  8. R. A. Soref, F. D. Leonardis, V. M. N. Passaro, and Y. Fainman, "On-chip digital Fourier-transform spectrometer using a thermo-optical Michelson grating interferometer," J. Lightwave Technol. 36, 5160-5167 (2018). https://doi.org/10.1109/jlt.2018.2867241
  9. T. Yang, J.-X. Peng, X.-A. Li, X. Shen, X.-H. Zhou, X.-L. Huang, W. Huang, and H.-P. Ho, "Compact broadband spectrometer based on upconversion and downconversion luminescence," Opt. Lett. 42, 4375-4378 (2017). https://doi.org/10.1364/OL.42.004375
  10. T. Yang, C. Xu, H.-P. Ho, Y.-Y. Zhu, X.-H. Hong, Q.-J. Wang, Y.-C. Chen, X.-A. Li, X.-H. Zhou, M.-D. Yi, and W. Huang, "Miniature spectrometer based on diffraction in a dispersive hole array," Opt. Lett. 40, 3217-3220 (2015). https://doi.org/10.1364/OL.40.003217
  11. M. Tostado-Veliz, S. Kamel, and F. Jurado, "Development of different load flow methods for solving large-scale ill-conditioned systems," Int. Trans. Electr. Energ. Syst. 29, e2784 (2019). https://doi.org/10.1002/etep.2784
  12. K. Ito, B. Jin, and T. Takeuchi, "Multi-parameter Tikhonov regularization - an augmented approach," Chin. Annal. Math. 35B, 383-398 (2014).
  13. J. Cheng and B. Hofmann, "Regularization Methods for Ill-Posed Problems," in Handbook of Mathematical Methods in Imaging, O. Scherzer, Ed., 2nd ed. (Springer, NY, USA. 2015), pp. 87-109.
  14. V. P. Zhuravlev, "Ill-posed problems in mechanics," Mech. Solids 51, 538-541 (2016). https://doi.org/10.3103/S0025654416050046
  15. X. T. Xiong, X. Y. Fan, and M. Li, "Spectral method for ill-posed problems based on the balancing principle," Inverse Probl. Sci. Eng. 23, 292-306 (2015). https://doi.org/10.1080/17415977.2014.894039
  16. J. J. Liu, G. Q. He, and C. G. Kang, "Nonlinear implicit iterative method for solving nonlinear ill-posed problems," Appl. Math. Mech. 30, 1183-1192 (2009). https://doi.org/10.1007/s10483-009-0913-1
  17. M. Tanaka and K. Nakata, "Positive definite matrix approximation with condition number constraint," Optim. Lett. 8, 939-947 (2014). https://doi.org/10.1007/s11590-013-0632-7
  18. X. Wu, "Error analysis for the predictor-corrector process relating to ill-conditioned linear system of equations," Appl. Math. Comput. 186, 530-534 (2007). https://doi.org/10.1016/j.amc.2006.07.121
  19. H. Li and S. Wang, "On the partial condition numbers for the indefinite least squares problem," Appl. Numer. Math. 123, 200-220 (2018). https://doi.org/10.1016/j.apnum.2017.09.006
  20. N. H. Godoge and E. Gionfriddo, "A critical outlook on recent developments and applications of matrix compatible coatings for solid phase microextraction," Trends Anal. Chem. 111, 220-228 (2019). https://doi.org/10.1016/j.trac.2018.12.019
  21. D. A. Guimaraes, G. H. F. Floriano, and L. S. Chaves, "A tutorial on the CVX system for modeling and solving convex optimization problems," IEEE Lat. Am.Trans. 13, 1228-1257 (2015). https://doi.org/10.1109/TLA.2015.7111976
  22. A. B. Malinowska, "Nonessential objective functions in linear multi-objective optimization problems," Control Cybern. 35, 873-880 (2006).