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  4. Structured Sparsity Models for Compressively Sensed Electrocardiogram Signals: A Comparative Study
 
conference paper not in proceedings

Structured Sparsity Models for Compressively Sensed Electrocardiogram Signals: A Comparative Study

Mamaghanian, Hossein  
•
Khaled, Nadia  
•
Atienza Alonso, David  
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2011
Biomedical Circuits and Systems Conference (BioCAS), 2011 IEEE

We have recently quantified and validated the potential of the emerging compressed sensing (CS) paradigm for real-time energy-efficient electrocardiogram (ECG) compression on resource-constrained sensors. In the present work, we investigate applying sparsity models to exploit underlying structural information in recovery algorithms. More specifically, re-visiting well-known sparse recovery algorithms, we propose novel model- based adaptations for the robust recovery of compressible signals like ECG. Our results show significant performance gains for the recovery algorithms exploiting the underlying sparsity models.

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