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arxiv: 1902.02649 · v1 · pith:5P37736Vnew · submitted 2019-02-05 · 📡 eess.SP

XBioSiP: A Methodology for Approximate Bio-Signal Processing at the Edge

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keywords processingapproximatebio-signalmethodologyachievesdetectionenergyhigh
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Bio-signals exhibit high redundancy, and the algorithms for their processing are inherently error resilient. This property can be leveraged to improve the energy-efficiency of IoT-Edge (wearables) through the emerging trend of approximate computing. This paper presents XBioSiP, a novel methodology for approximate bio-signal processing that employs two quality evaluation stages, during the pre-processing and bio-signal processing stages, to determine the approximation parameters. It thereby achieves high energy savings while satisfying the user-determined quality constraint. Our methodology achieves, up to 19x and 22x reduction in the energy consumption of a QRS peak detection algorithm for 0% and <1% loss in peak detection accuracy, respectively.

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