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Journal of Graphics ›› 2025, Vol. 46 ›› Issue (4): 847-854.DOI: 10.11996/JG.j.2095-302X.2025040847

• Computer Graphics and Virtual Reality • Previous Articles     Next Articles

Weighted respiration waveform reconstruction algorithm based on empirical modal decomposition

GUO Linlin(), YAO Min, ZHANG Wenqing, ZHANG Jia, SUN Jiande()   

  1. School of Information Science and Engineering, Shandong Normal University, Jinan Shandong 250358, China
  • Received:2024-09-30 Revised:2025-05-29 Online:2025-08-30 Published:2025-08-11
  • Contact: SUN Jiande
  • About author:First author contact:

    GUO Linlin (1988-), lecturer, Ph.D. Her main research interests cover intelligent wireless sensing technologies in the next-generation IT. E-mail:linlin_teresa@sdnu.edu.cn

  • Supported by:
    Natural Science Foundation of Shandong Province(ZR2024QF275);Jinan City’s “New Higher Education Institutions 20 Measures” Funding Project - Research Leader’s Studio(2021GXRC081)

Abstract:

Respiration rate estimation based on Wi-Fi signals has garnered significant attention from academic and industrial communities due to its non-contact advantage. However, extracting high-quality respiration waveforms to ensure accurate respiration rate estimation has been a persistent challenge for researchers. In this paper, a weighted respiration waveform reconstruction algorithm based on empirical mode decomposition (EMD), referred to as (weighted empirical mode decomposition) WEMD, was proposed to improve the accuracy and robustness of respiration rate estimation under different environments. First, subcarriers with better periodicity were selected using breathing-to-noise ratio (BNR) and I/O decompose methods, and various respiration waveforms were generated. Second, principal component analysis (PCA) was applied to calibrate respiration waveforms, and EMD was employed to decompose respiration waveforms. Finally, an adaptive weighting mechanism was designed to reconstruct them by estimating the correlation between different frequency components and the original respiratory pattern. Experimental results demonstrated that the WEMD algorithm achieved an average respiration estimation accuracy of over 94% in four indoor experimental environments. The WEMD algorithm not only effectively addressed the impact of the low-quality Wi-Fi data on personal respiration estimation, but also accurately estimated irregular respiration rates, achieving high-precision respiratory rate monitoring across various environments, with an error below 10%.

Key words: wireless sensing, channel state information, empirical mode decomposition, respiratory waveform reconstruction, respiration rate estimation

CLC Number: