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Respiration Signal Extraction From Pulse Wave Collected by PVDF Sensor

Jiena Hou, Yitao Zhang, Shaolong Zhang, Xingguang Geng, Yunfeng Wang, Chuanglu Chen, Haiying Zhang

2020IEEE Access15 citationsDOIOpen Access PDF

Abstract

The respiratory signal is a critical index of cardiopulmonary function. In this paper, we implement the polyvinylidene fluoride (PVDF) sensor to collect the data of pulse waves and reference respiration signals. The correlations between the major feature values and breaths are investigated and presented. As a result, several feature values exhibit relatively good correlations with reference respiratory amplitude. The improvements of Kalman Filter for the respiratory signals extracted from feature value variances are also introduced. Moreover, we display the comparisons with low-pass filtering, Wavelet filtering, and ensemble empirical mode decomposition (EEMD) method. Using the method of identifying error breaths, the error rate of the new method is about 4.146%. The new method is feasible for real-time applications at quiet state.

Topics & Concepts

SIGNAL (programming language)Computer scienceFeature extractionAcousticsFeature (linguistics)Kalman filterHilbert–Huang transformPattern recognition (psychology)Filter (signal processing)Polyvinylidene fluorideWavelet transformRespiratory rateWaveletArtificial intelligencePulse (music)Speech recognitionMaterials scienceComputer visionPhysicsHeart rateRadiologyDetectorPolymerPhilosophyComposite materialTelecommunicationsLinguisticsMedicineProgramming languageBlood pressureNon-Invasive Vital Sign MonitoringHeart Rate Variability and Autonomic ControlECG Monitoring and Analysis