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Quality-Aware Framework for Video-Derived Respiratory Signals

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Video-based respiratory rate (RR) estimation is often unreliable due to inconsistent signal quality across extraction methods. We present a predictive, quality-aware framework that integrates heterogeneous signal sources with dynamic assessment of reliability. Ten signals are extracted from facial remote photoplethysmography (rPPG), upper-body motion, and deep learning pipelines, and analyzed using four spectral estimators: Welch's method, Multiple Signal Classification (MUSIC), Fast Fourier Transform (FFT), and peak detection. Segment-level quality indices are then used to train machine learning models that predict accuracy or select the most reliable signal. This enables adaptive signal fusion and quality-based segment filtering. Experiments on three public datasets (OMuSense-23, COHFACE, MAHNOB-HCI) show that the proposed framework achieves lower RR estimation errors than individual methods in most cases, with performance gains depending on dataset characteristics. These findings highlight the potential of quality-driven predictive modeling to deliver scalable and generalizable video-based respiratory monitoring solutions.

Nhi Nguyen, Constantino \'Alvarez Casado, Le Nguyen, Manuel Lage Ca\~nellas, Miguel Bordallo L\'opez• 2025

Related benchmarks

TaskDatasetResultRank
Respiratory Rate EstimationOmuSense (test)--
27
Respiratory Rate EstimationCOHFACE--
27
Respiratory Rate EstimationMAHNOB--
27
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