Scientific Reports (Jul 2021)

Inkjet-printed fully customizable and low-cost electrodes matrix for gesture recognition

  • Giulio Rosati,
  • Giulia Cisotto,
  • Daniele Sili,
  • Luca Compagnucci,
  • Chiara De Giorgi,
  • Enea Francesco Pavone,
  • Alessandro Paccagnella,
  • Viviana Betti

DOI
https://doi.org/10.1038/s41598-021-94526-5
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 12

Abstract

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Abstract The use of surface electromyography (sEMG) is rapidly spreading, from robotic prostheses and muscle computer interfaces to rehabilitation devices controlled by residual muscular activities. In this context, sEMG-based gesture recognition plays an enabling role in controlling prosthetics and devices in real-life settings. Our work aimed at developing a low-cost, print-and-play platform to acquire and analyse sEMG signals that can be arranged in a fully customized way, depending on the application and the users’ needs. We produced 8-channel sEMG matrices to measure the muscular activity of the forearm using innovative nanoparticle-based inks to print the sensors embedded into each matrix using a commercial inkjet printer. Then, we acquired the multi-channel sEMG data from 12 participants while repeatedly performing twelve standard finger movements (six extensions and six flexions). Our results showed that inkjet printing-based sEMG signals ensured significant similarity values across repetitions in every participant, a large enough difference between movements (dissimilarity index above 0.2), and an overall classification accuracy of 93–95% for flexion and extension, respectively.