4.7 Article

A Bio-Impedance Analysis Method Based on Human Hand Anatomy for Hand Gesture Recognition

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2021.3112775

Keywords

Bio-impedance; electrical impedance tomography (EIT); electrodes; hand gesture recognition; measurements

Funding

  1. Fundamental Research Funds for the Central Universities [WK5290000001]
  2. Open Funding Project of National Key Laboratory of Human Factors Engineering [6142222190311]
  3. Anhui Provincial Natural Science Foundation [1908085MF196]

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This article introduced a bio-impedance analysis method based on human hand anatomy, which achieved high classification accuracy in hand gesture recognition with flexibility in electrode arrangement and fewer electrodes. Experimental results showed that compared to traditional electrical impedance tomography methods, the proposed method can better distinguish different gestures with higher accuracy.
In this article, we presented a bio-impedance analysis method (BIAM) based on the human hand anatomy and propose a feasible and flexible BIAM system to obtain the bio-impedance signals for different gestures to achieve a high classification accuracy in hand gesture recognition with flexibility in electrode arrangement and fewer electrodes. To verify the proposed method, 11 gestures, including two sets: hand gestures and pinch gestures, were selected for the experiment. Based on the functional structure of the human hand, we identified appropriate electrode positions and placed five electrodes on the hand surface for bio-impedance signal measurement. Compared with the electrical impedance tomography (EIT) method, which uses a band with the same number of electrodes wrapped around the wrist, the proposed method achieved 98.7% recognition accuracies on the hand gesture set and 97.8% on the pinch gesture set, while the EIT achieved only 97.1% and 86.3%, respectively. In particular, the proposed method demonstrated the advantage of distinguishing gestures with similar muscle contractions.

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