Abstract:
Corruption of photopleythysmograms (PPGs) by motion
artifacts has been a serious obstacle to the reliable use of pulse
oximeters for real-time, continuous state-of-health monitoring. In
this paper, we propose an automated, two-stage PPG data processing
method to minimize the effects of motion artifacts. The
technique is based on our prior work related to motion artifact
detection (stage 1) [R. Krishnan, B. Natarajan, and S. Warren,
“Analysis and detection of motion artifacts in photoplethysmographic
data using higher order statistics,” in Proc. IEEE Int. Conf.
Acoust., Speech, Signal Process. (ICASSP 2008),LasVegas,Nevada,
Apr. 2008, pp. 613–616] and motion artifact reduction (stage 2)
[R. Krishnan, B. Natarajan, and S. Warren, “Motion artifact
reduction in photoplethysmography using magnitude-based frequency
domain independent component analysis,” in Proc. 17th Int.
Conf. Comput. Commun. Network, St. Thomas, Virgin Islands, Aug.
2008, pp. 1–5]. Regarding stage 1, we present novel and consistent
techniques to detect the presence of motion artifact in PPGs given
higher order statistical information present in the data.We analyze
these data in the time and frequency domains (FDs) and identify
metrics to distinguish between clean and motion-corrupted data. A
Neyman–Pearson detection rule is formulated for each of the metrics.
Furthermore, by treating each of the metrics as observations
from independent sensors, we employ hard fusion and soft fusion
techniques presented in [Z. Chair and P. Varshney, “Optimal data
fusion in multiple sensor detection systems,” IEEE Trans. Aerosp.
Electron. Syst., AES, vol. 1, no. 1, pp. 98–101, Jan. 1986] and [C. C.
Lee and J. J. Chao, “Optimum local decision space partitioning for
distributed detection,” IEEE Trans. Aerosp. Electron. Syst., AES,
vol. 25, no. 7, pp. 536–544, Jul. 1989], respectively, in order to fuse
individual decisions into a global system decision. For stage two, we
propose a motion artifact reduction method that is effective even
in the presence of severe subject movement. The approach involves
an enhanced preprocessing unit consisting of a motion detection
unit (MDU, developed in this paper), period estimation unit, and
Fourier series reconstruction unit. The MDU identifies clean data
frames versus those corrupted with motion artifacts. The period
estimation unit determines the fundamental frequency of a corrupt
frame. The Fourier series reconstruction unit reconstructs the final
preprocessed signal by utilizing the spectrum variability of the
pulse waveform. Preprocessed data are then fed to a magnitudebased
FD independent component analysis unit. This helps reduce
motion artifacts present at the frequencies of the reconstruction
components. Experimental results are presented to demonstrate
the efficacy of the overall motion artifact reduction method.