Employing ensemble empirical mode decomposition for artifact removal: Extracting accurate respiration rates from ECG data during ambulatory activity
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Dermot Diamond | Shirley Coyle | Tomás Ward | Kevin T. Sweeney | Damien Kearney | D. Diamond | S. Coyle | T. Ward | D. Kearney
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