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Wearable Multi-channel EMG Biometrics: Concepts

  • Ikram Brahim
  • Islame Dhibou
  • Lobna Makni
  • Sherif Said
  • Amine Nait-aliEmail author
Chapter
Part of the Series in BioEngineering book series (SERBIOENG)

Abstract

In this chapter, a case study using a specific wearable Multi-Channel EMG device will be considered. In particular, eight EMG channels will be used through Myo Armband system. The purpose is to deploy a verification biometric system using EMG signals corresponding to hand gestures. More specifically, the idea behind this concept is the capacity to generate a digital signature for each specific hand gesture.

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Copyright information

© Springer Nature Singapore Pte Ltd. 2020

Authors and Affiliations

  • Ikram Brahim
    • 1
  • Islame Dhibou
    • 1
  • Lobna Makni
    • 1
  • Sherif Said
    • 1
    • 2
  • Amine Nait-ali
    • 1
    Email author
  1. 1.Université Paris-Est, LISSI, UPECVitry sur SeineFrance
  2. 2.American University of Middle-East (AUM)EgailaKuwait

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