Abstract

Non-contact life signal extraction could be used in natural disaster rescue, health care and other fields. As the energy of respiration and heartbeat signals is extremely weak in reality, they are usually submerged in noise and clutter. As a result, the traditional life signal extraction algorithms always fail at low signal-to-noise ratio (SNR) conditions. This paper proposes a novel life signal extraction and reconstruction algorithm based on MTI-Autocorrelation-EEMD (MAE) so as to enhance the accuracy and stability of life signal detection at low SNR condition. Taking advantage of its strong robustness with regard to noise, this technique utilizes a moving target indicator (MTI) algorithm to eliminate the interference of fixed object clutter on the echo signal after pulse compression. Combined with the autocorrelation algorithm with stable detection performance, the precise location of the human body micro-motion signal can be determined. Through the integration of an ensemble empirical mode decomposition (EEMD) algorithm, the phase of human body micro-motion signal is adaptively decomposed, overcoming the problem of mode mixing so that the signals of respiration and heartbeat can be reconstructed in the time domain according to the mode judgement criteria. Extensive real data experiments illustrate the effectiveness and robustness of the proposed algorithm under low SNR.

Highlights

  • The extraction of life signal is important in natural disaster rescue, health care and other application fields

  • The reference [15] presents a non-contact detection method for life signal based on the principal component analysis (PCA) and empirical mode decomposition (EMD)

  • With respect to the above problems, this paper presents a novel algorithm for life signal extraction and reconstruction based on the moving target indicator (MTI)-Autocorrelation-ensemble empirical mode decomposition (EEMD) (MAE), where the MTI algorithm is utilized to eliminate the interference from fixed object clutters

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Summary

INTRODUCTION

The extraction of life signal is important in natural disaster rescue, health care and other application fields. The reference [15] presents a non-contact detection method for life signal based on the principal component analysis (PCA) and empirical mode decomposition (EMD). This method is able to separate heartbeat signal from respiration signal in high SNR condition. Based on the obtained results, the ensemble empirical mode decomposition (EEMD) algorithm is carried out to analyze life signal [22]–[24], and the signal is adaptively decomposed into a number of innate mode functions (IMFs). The mode judgment criteria is adopted to process IMF components so as to extract and reconstruct the respiration and heartbeat signals in time domain.

SIGNAL MODEL
RECONSTRUCTION OF LIFE SIGNAL
EXPERIMENTS AND ANALYSES
CONCLUSION
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