3.2 Quantitative Results
Figure 5 illustrates a 20-second sample data. It shows
the signals, their frequency components distributions
and specification of poles. In the middle sub-figure,
three PSDs as well as computed fusion PSD are de-
picted. Reference respiratory frequency is also ex-
pressed by a straight green line. Instant breathing
rate estimation using PSD is corresponded to the fre-
quency where maximum energy is settled.
Table 3 summarizes the results of the methods
used in four activity protocols. The data shows that
the fusion method outperforms the individual meth-
ods in all the four protocols considering different met-
rics. The performance of EDR derived from RRI
signal (RSA-based breathing frequency estimation) is
the weakest compared to other two individual signals
particularly in sport activities. It might be due to the
reason that RRI signal is more vulnerable to CLC or
movement artifacts during high intensity exercise.
Table 3: Acquired overall results in four different activity
protocols.
Spect Metric
Activity
FS TC CY TN
RMSE 6.2 5.4 5.3 8.3
RRI MAPE 19.0 18.0 16.0 18.0
Rc 0.23 0.19 0.39 0.33
RMSE 5.0 4.5 3.4 6.9
RPA MAPE 16.0 15.0 10.0 15.0
Rc 0.2 0.18 0.57 0.39
RMSE 4.7 4.4 3.7 6.4
MSV MAPE 15.0 14.0 11.0 13.0
Rc 0.25 0.19 0.5 0.43
RMSE 4.6 4.1 2.9 6.4
Fusion MAPE 14.0 13.0 8.8 13.0
Rc 0.28 0.24 0.57 0.45
4 CONCLUSION
Ambulatory measurement of instantaneous respira-
tory frequency can be achieved via ECG surrogate
signal processing. However, the performance of
breathing rate estimation during uncontrolled condi-
tion when the subject is free to move and perform
his/her daily activities is in question and not well-
studied. This paper proposed a spectral fusion tech-
nique which combines the information from individ-
ual sources of EDRs, such as RSA-based (RRI sig-
nal) and morphological-based (RPA and MSV sig-
nals), to boost the performance of estimation us-
ing computationally-efficient methods. In essence,
the presented method considers the agreement be-
tween the individual estimators and their joint spec-
tral power. Overall, our fusion method outperforms
the individual methods considering all the metrics and
experimented activity protocols.
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