HIERARCHICAL FILTERING WITH ONLINE LEARNED PRIORS FOR ECG DENOISING
Timur Locher (ETH Zurich); Guy Revach (ETH Zürich); Nir Shlezinger (Ben-Gurion University); Ruud J. G. van Sloun (Technical university of Eindhoven); Rik Vullings ( Technical university of Eindhoven)
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Electrocardiographic signals (ECG) are used in many health-
care applications, including at-home monitoring of vital
signs. These applications often rely on wearable technol-
ogy and provide low quality ECG signals. Although many
methods have been proposed for denoising the ECG to boost
its quality and enable clinical interpretation, these methods
typically fall short for ECG data obtained with wearable
technology, because of either their limited tolerance to noise
or their limited flexibility to capture ECG dynamics. This
paper presents HKF, a hierarchical Kalman filtering method,
that leverages a patient-specific learned structured prior of
the ECG signal, and integrates it into a state space model
to yield filters that capture both intra- and inter-heartbeat
dynamics. HKF is demonstrated to outperform previously
proposed methods such as the model-based Kalman filter and
data-driven autoencoders, in ECG denoising task in terms
of mean-squared error, making it a suitable candidate for
application in extramural healthcare settings.