An Wearable ECG Analysis System with Novel Interactive Method

In this paper, we present a wearable ECG recorder which senses real-time ECG signal, undertakes preprocessing and extracts ECG waveform and fiducial points. The ECG signal then is sent through ULP Bluetooth to the paired smartphone, in which the application classifies the ECG signal using classifiers updated by the intervene of cardiologist in a novel interactive method.

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