An Evaluation of Non-Contact Photoplethysmography-Based Methods for Remote Respiratory Rate Estimation
Abstract
:1. Introduction
- Respiratory-Induced Intensity Variation (RIIV) refers to the modulation of the BVP signal’s amplitude caused by changes in venous return due to variations in intra-thoracic pressure during the respiratory cycle. As a result, the PPG signal experiences baseline modulation. Inspiration causes a reduction in intra-thoracic pressure, leading to a slight decrease in central venous pressure and an increase in venous return, while expiration causes the opposite effect.
- Respiratory-Induced Amplitude Variation (RIAV) is caused by a reduction in left ventricular stroke volume due to changes in intra-thoracic pressure, resulting in a decrease in cardiac output and peripheral pulse strength. During expiration, the opposite effect occurs.
- Respiratory-Induced Frequency Variation (RIFV) refers to the periodic variation of Heart Rate (HR) throughout the respiratory cycle, with an increase during inspiration and a decrease during expiration. This change in pulse rate is due to an autonomic nervous system response known as respiratory sinus arrhythmia (RSA).
- Which kind of approach is more suitable for extracting respiratory related information from rPPG?
- What is the impact of using rPPG on the quality of estimation compared to contact-PPG?
- How does this result compare to representative modern approaches relying on Deep Learning methods?
- Are the eventual differences statistically significant?
2. Photoplethysmography and Remote-Photoplethysmography
3. Respiratory Rate Estimation
3.1. IMS Algorithm
- The respiratory induced intensity variation (RIIV) is conveyed by the local maximum-peak-valued time series:
- The respiratory induced amplitude variation (RIAV) is carried by the series generated from the difference between local maximum values and local minimum values (amplitude trend):
- The respiratory induced frequency variation (RIFV) can be calculated by creating a tachogram composed of evenly sampled and minimum-peak-time-interspersed series, which consists of the time intervals between consecutive local minima:
3.2. EMD: Empirical Mode Decomposition
- The number of extrema (i.e., the maximum and minimum amplitudes of the signal) and the number of zero-crossings must be equal, or differ by one at most. This property ensures that the function is oscillatory in nature, with a well-defined and localized frequency structure that can be accurately extracted using techniques such as the Hilbert transform.
- The function must be symmetric with respect to a local zero mean. The need for a local time scale to calculate the mean makes it challenging to define a function as symmetric for non-stationary processes. To solve this problem, the local mean envelope concept is introduced, which is determined by the function’s local maximum and minimum values. By enforcing local symmetry around this envelope, the IMF can be accurately characterized and used to extract information about the underlying dynamics of the system.
- Extract the local maxima and minima of .
- Form the upper and lower envelope and by cubic spline interpolation of the extrema, and compute the mean .
- Let .
- When , evaluate whether is a zero-mean function. This is obtained in terms of the standard deviation of two subsequent iteration results:If the standard deviation exceeds a fixed threshold (set to 0.1, according to [32]), set as the new data, increment i, and repeat steps 1–4 until ending up with the k-th IMF, that is, .
3.3. SSA: Singular Spectrum Analysis
- Embedding. The realization is embedded into a trajectory matrix X using the sliding window approach described above.
- SVD decomposition. To obtain the principal components, apply SVD to the trajectory matrix X, as , where U is the matrix of the eigenvectors (left singular vectors), is the diagonal matrix of the singular values and V is the matrix of the right singular vectors of X. In this notation, the trajectory matrix X can be written as
- Grouping. The principal components are grouped into sets, aiming at representing the different patterns present in the data (e.g., noise, periodicity, trend). This corresponds to partitions in the set of indices into p disjoint subsets .
- Reconstruction. Given a subset of indexes , an approximation of X is reconstructed as a sum of the corresponding elementary matrix only: . Then, applying the Hankelization of , the time series is obtained. For the sake of brevity, Hankelization and averaging are not reported here; see Ref. [34] for details.The SSA output, for the remote and contact analysis, is reported in the Figure 6. Here, no PC grouping procedure was employed (i.e., ) taking into account the EOFs individually. In particular, only the first three EOFs were considered for the RR extraction: is estimated as the highest peak in the respiratory power spectral density range of . Then, the highest estimate among the , , was chosen as the value.
4. Experimental Analysis and Results
4.1. Dataset
4.2. Analysis
- Pre-processing: The rPPG signal associated with the i-th video is filtered using a fourth-order Butterworth band-pass filter with cut-off frequencies of [0.18 Hz, 1.0 Hz] for each temporal window indexed by j.
- Methods: The filtered signal is processed by one of the analysed approaches (IMS, EMD, SSA) in order to extract respiratory related information.
- Post-processing: Each approach yields a number of estimates that are subsequently post-processed with an artifact reduction technique. It basically consists of a cubic-spline interpolation of the original estimate followed by the computation of the fist derivative of the obtained signal (cfr. Equation (2)).
- RR estimation: RR is obtained by choosing the most prominent peak in the Power Spectral Density (PSD) estimated with the periodogram of the post-processed signal. The frequency range within which RR is picked is adaptively set, based on the heart rate extracted from the same signal.
4.2.1. Error Metrics
- Mean Absolute Error (MAE) The Mean Absolute Error measures the average absolute difference between the estimated and reference RR h. It is computed as:Smaller MAE values suggest better predictions. The MAE is a fairly interpretable measure, as it provides the average distance in terms of breaths per minute of the predictions with regard to the ground truth.
- Root Mean Squared Error (RMSE). The Root-Mean-Squared Error measures the difference between quantities in terms of the square root of the average of squared differences, that is,RMSE represents the sample standard deviation of the absolute difference between the reference and measurement, that is, a smaller RMSE suggests more accurate extraction. In contrast to the MAE, few large differences increase the RMSE to a greater degree due to the squaring of the differences.
4.2.2. Bland–Altman Analysis
4.2.3. Significance Testing
4.2.4. Comparison with a Deep Learning-Based Approach
5. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Contact | Remote | |||
---|---|---|---|---|
RMSE * | MAE * | RMSE * | MAE * | |
5.064 | 3.615 | 5.413 | 4.019 | |
5.395 | 3.709 | 5.741 | 4.095 | |
5.593 | 3.796 | 6.307 | 4.656 | |
6.285 | 4.559 | 6.453 | 4.821 | |
5.528 | 3.906 | 6.538 | 4.721 | |
6.052 | 4.130 | 6.287 | 4.586 | |
14.205 | 10.373 | 9.599 | 7.754 | |
19.773 | 6.775 | 13.568 | 10.084 | |
6.219 | 4.638 | 9.050 | 7.625 | |
12.235 | 11.292 | 13.626 | 12.799 | |
10.441 | 7.243 | 9.406 | 7.894 | |
19.568 | 14.672 | 9.804 | 8.086 | |
19.350 | 14.301 | 7.994 | 5.456 | |
17.079 | 13.170 | 21.951 | 20.059 |
RMSE | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|
Contact | Remote | |||||||||
R | MED * | CI | Magnitude | R | MED * | CI | Magnitude | |||
1° | 3.509 | [2.744, 4.696] | 0.000 | negligible | 1° | 4.108 | [3.350, 5.040] | 0.000 | negligible | |
2° | 3.700 | [2.828, 5.067] | −0.079 | negligible | 2° | 4.551 | [3.818, 5.479] | −0.204 | small | |
3° | 4.237 | [3.169, 5.584] | −0.269 | small | 6° | 5.218 | [4.637, 6.170] | −0.493 | small | |
7° | 4.980 | [3.869, 6.016] | −0.531 | medium | 7° | 5.333 | [4.627, 6.164] | −0.571 | medium | |
4° | 4.077 | [3.266, 5.408] | −0.233 | small | 3° | 5.198 | [4.361, 6.435] | −0.472 | small | |
5° | 4.844 | [3.464, 6.000] | −0.473 | small | 4° | 5.280 | [4.522, 6.267] | −0.567 | medium | |
10° | 12.318 | [9.229, 15.486] | −1.727 | large | 10° | 7.950 | [6.941, 9.560] | −1.367 | large | |
14° | 19.575 | [16.125, 21.906] | −2.765 | large | 12° | 11.719 | [9.613, 14.338] | −1.539 | large | |
6° | 5.103 | [4.053, 6.289] | −0.647 | medium | 8° | 7.578 | [6.154, 9.369] | −1.128 | large | |
9° | 11.399 | [10.259, 12.435] | −3.068 | large | 13° | 12.579 | [11.624, 14.000] | −2.982 | large | |
8° | 7.754 | [6.331, 9.761] | −1.163 | large | 9° | 8.300 | [7.000, 9.401] | −1.489 | large | |
11° | 18.000 | [11.168, 22.527] | −1.509 | large | 11° | 8.422 | [7.135, 9.677] | −1.474 | large | |
12° | 17.300 | [11.937, 23.992] | −1.407 | large | 5° | 6.074 | [4.642, 7.134] | −0.751 | medium | |
13° | 13.968 | [11.478, 18.615] | −1.658 | large | 14° | 21.126 | [18.924, 23.749] | −3.737 | large |
MAE | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|
Contact | Remote | |||||||||
R | MED * | CI | Magnitude | R | MED * | CI | Magnitude | |||
2° | 2.904 | [2.207, 3.837] | 0.039 | negligible | 1° | 3.422 | [2.729, 4.178] | 0.000 | negligible | |
1° | 2.978 | [2.116, 3.973] | 0.000 | negligible | 2° | 3.556 | [2.826, 4.329] | −0.064 | negligible | |
3° | 3.244 | [2.286, 4.273] | −0.117 | negligible | 6° | 4.065 | [3.465, 5.188] | −0.298 | small | |
7° | 4.000 | [3.022, 5.087] | −0.442 | small | 7° | 4.258 | [3.644, 5.125] | −0.392 | small | |
4° | 3.244 | [2.500, 4.216] | −0.124 | negligible | 3° | 4.169 | [3.429, 5.176] | −0.330 | small | |
5° | 3.625 | [2.575, 4.797] | −0.270 | small | 4° | 4.141 | [3.359, 4.978] | −0.352 | small | |
8° | 9.778 | [7.333, 12.021] | −1.464 | large | 9° | 6.812 | [5.771, 8.400] | −1.115 | large | |
14° | 17.903 | [14.400, 20.857] | −2.448 | large | 12° | 9.264 | [7.146, 12.000] | −1.342 | large | |
6° | 4.178 | [3.200, 5.135] | −0.515 | medium | 8° | 6.933 | [5.312, 8.649] | −1.117 | large | |
10° | 10.960 | [9.867, 12.133] | −3.102 | large | 13° | 12.323 | [11.333, 13.773] | −3.085 | large | |
8° | 6.092 | [4.578, 8.090] | −0.919 | large | 10° | 7.714 | [6.065, 8.711] | −1.499 | large | |
9° | 13.111 | [8.350, 19.822] | −1.132 | large | 11° | 7.689 | [6.133, 9.131] | −1.420 | large | |
11° | 13.161 | [8.129, 20.000] | −1.082 | large | 5° | 4.731 | [3.674, 6.000] | −0.501 | medium | |
12° | 12.000 | [8.955, 15.292] | −1.503 | large | 14° | 20.000 | [17.511, 22.400] | −3.345 | large |
RMSE (Remote) | MAE (Remote) | ||||||||
---|---|---|---|---|---|---|---|---|---|
R | MED * | CI | Magnitude | MED * | CI | Magnitude | |||
1° | 4.108 | [3.405, 4.947] | 0.000 | negligible | 3.422 | [2.756, 4.044] | 0.000 | negligible | |
2° | 6.074 | [4.813, 6.992] | −0.751 | medium | 4.731 | [3.765, 5.911] | −0.501 | medium | |
3° | 6.491 | [5.449, 7.803] | −0.673 | medium | 4.711 | [3.700, 6.529] | −0.375 | small | |
4° | 7.578 | [6.340, 9.242] | −1.128 | large | 6.933 | [5.521, 8.333] | −1.117 | large |
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Boccignone, G.; D’Amelio, A.; Ghezzi, O.; Grossi, G.; Lanzarotti, R. An Evaluation of Non-Contact Photoplethysmography-Based Methods for Remote Respiratory Rate Estimation. Sensors 2023, 23, 3387. https://doi.org/10.3390/s23073387
Boccignone G, D’Amelio A, Ghezzi O, Grossi G, Lanzarotti R. An Evaluation of Non-Contact Photoplethysmography-Based Methods for Remote Respiratory Rate Estimation. Sensors. 2023; 23(7):3387. https://doi.org/10.3390/s23073387
Chicago/Turabian StyleBoccignone, Giuseppe, Alessandro D’Amelio, Omar Ghezzi, Giuliano Grossi, and Raffaella Lanzarotti. 2023. "An Evaluation of Non-Contact Photoplethysmography-Based Methods for Remote Respiratory Rate Estimation" Sensors 23, no. 7: 3387. https://doi.org/10.3390/s23073387
APA StyleBoccignone, G., D’Amelio, A., Ghezzi, O., Grossi, G., & Lanzarotti, R. (2023). An Evaluation of Non-Contact Photoplethysmography-Based Methods for Remote Respiratory Rate Estimation. Sensors, 23(7), 3387. https://doi.org/10.3390/s23073387