Enhanced baseline correction for Raman spectroscopy using a hybrid deep learning approach

Các tác giả

  • Vu Duong*, Pham Hong Minh
  • Dang Cong Vinh, Nguyen Trong Hieu, Vu Tien Dung

Tóm tắt

This research introduces an enhanced baseline correction method for Raman spectroscopy, combining a hybrid deep learning approach with traditional techniques such as polynomial fitting, Gaussian functions, and other nonlinear components. The proposed method significantly improves the signal-to-noise ratio (SNR), achieving up to a tenfold increase over raw spectra and outperforming conventional algorithms such as Imodpoly (polynomial fitting) and AirPLS (Penalised least squares). With a processing time of just 1.07 seconds, the method is well-suited for realtime applications in portable Raman spectroscopy systems. This improvement is critical in Raman spectroscopy, where background noise often obscures weak spectral features, making a high SNR essential for accurate chemical analysis. The rapid processing capability allows for immediate correction of spectral data, ensuring efficient and accurate analysis in practical  applications. Thus, this hybrid approach establishes itself as a robust and effective solution for real-time Raman spectroscopy.

Lượt tải

Chưa có dữ liệu tải xuống.

Tiểu sử tác giả

  • Vu Duong*, Pham Hong Minh

    Institute of Physics, Vietnam Academy of Science and Technology, 10 Dao Tan Street, Giang Vo Ward, Hanoi, Vietnam

  • Dang Cong Vinh, Nguyen Trong Hieu, Vu Tien Dung

    University of Science, Vietnam National University - Hanoi, 334 Nguyen Trai Street, Thanh Xuan Ward, Hanoi, Vietnam

Đã Xuất bản

2025-12-24

Số

Chuyên mục

MATHEMATICS AND COMPUTER SCIENCE