Across Sessions and Subjects Domain Adaptation for Building Robust Myoelectric Interface

IEEE Trans Neural Syst Rehabil Eng. 2024:32:2005-2015. doi: 10.1109/TNSRE.2023.3347540. Epub 2024 May 27.

Abstract

Gesture interaction via surface electromyography (sEMG) signal is a promising approach for advanced human-computer interaction systems. However, improving the performance of the myoelectric interface is challenging due to the domain shift caused by the signal's inherent variability. To enhance the interface's robustness, we propose a novel adaptive information fusion neural network (AIFNN) framework, which could effectively reduce the effects of multiple scenarios. Specifically, domain adversarial training is established to inhibit the shared network's weights from exploiting domain-specific representation, thus allowing for the extraction of domain-invariant features. Effectively, classification loss, domain diversence loss and domain discrimination loss are employed, which improve classification performance while reduce distribution mismatches between the two domains. To simulate the application of myoelectric interface, experiments were carried out involving three scenarios (intra-session, inter-session and inter-subject scenarios). Ten non-disabled subjects were recruited to perform sixteen gestures for ten consecutive days. The experimental results indicated that the performance of AIFNN was better than two other state-of-the-art transfer learning approaches, namely fine-tuning (FT) and domain adversarial network (DANN). This study demonstrates the capability of AIFNN to maintain robustness over time and generalize across users in practical myoelectric interface implementations. These findings could serve as a foundation for future deployments.

MeSH terms

  • Adult
  • Algorithms*
  • Electromyography* / methods
  • Female
  • Gestures*
  • Healthy Volunteers
  • Humans
  • Male
  • Muscle, Skeletal / physiology
  • Neural Networks, Computer*
  • User-Computer Interface
  • Young Adult