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Updated: Jan 24, 2026

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EEG-to-gait decoding via phase-aware representation learning.

Xi Fu1, Weibang Jiang2, Rui Liu1

  • 1College of Computing and Data Science, Nanyang Technological University, 639798, Singapore.

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Summary
This summary is machine-generated.

NeuroDyGait decodes lower-limb motion from EEG signals using a novel two-stage framework. This brain-computer interface approach improves movement intent recognition and control for real-time applications.

Keywords:
Contrastive learningDomain generalizationElectroencephalographyGait decoding

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Area of Science:

  • Neuroscience
  • Biomedical Engineering
  • Machine Learning

Background:

  • Accurate decoding of lower-limb motion from electroencephalography (EEG) signals is crucial for brain-computer interface (BCI) development.
  • Existing methods face challenges in causal, phase-consistent prediction and handling cross-subject variability in movement intent recognition.

Purpose of the Study:

  • To introduce NeuroDyGait, a two-stage, phase-aware EEG-to-gait decoding framework.
  • To explicitly model temporal continuity and domain relationships for improved EEG-based motion decoding.
  • To address cross-subject variability and ensure real-time inference for BCI applications.

Main Methods:

  • Stage I employs relative contrastive learning with a cross-attention metric to learn semantically aligned EEG-motion embeddings.
  • Stage II utilizes dynamic fusion of session-specific heads for domain relation-aware decoding.
  • The framework was evaluated on two benchmark datasets (GED and FMD).

Main Results:

  • NeuroDyGait demonstrated substantial performance gains over existing baseline models, including a recent 2025 model (EEG2GAIT).
  • The framework exhibits generalization capabilities to unseen subjects.
  • Inference latency was maintained below 5 ms per window, meeting real-time BCI requirements.

Conclusions:

  • NeuroDyGait offers an effective solution for accurate EEG-based lower-limb motion decoding.
  • The interpretable neural correlates of gait phases were revealed through visualization techniques.
  • Future work will focus on rehabilitation applications and multimodal integration for enhanced BCI systems.