Shaopeng LiuQingbo HeRobert X. GaoPatty S. Freedson
Estimation of respiration commonly employs piezoelectric sensors secured to rib cage and abdominal belts. However, these respiratory signals are often contaminated by tissue artifact. This paper presents a signal decomposition technique for tissue artifact removal in respiratory signals, based on empirical mode decomposition (EMD). After introducing the theoretical foundation, this method is performed on three synthetic signals, and performance of tissue artifact removal using EMD is compared with low-pass filter and independent component analysis (ICA) techniques. A simulation study and experimental results show that EMD can effectively remove tissue artifact in respiratory signals.
Liu, ShaopengGao, Robert X.John, DineshStaudenmayer, JohnFreedson, Patty S
Shaopeng LiuRobert X. GaoDinesh JohnJohn StaudenmayerPatty S. Freedson
Vadim GrubovAnastasiya E. RunnovaTatyana Yu. EfremovaAlexander E. Hramov
Muammar SadrawiJiann-Shing ShiehKoichi HaraikawaJen Chien ChienChien Hung LinMaysam Abbod
Maurizio CampoloDomenico LabateFabio La ForestaFrancesco Carlo MorabitoA. Lay-EkuakilleP. Vergallo