GEGLU-Transformer for IMU-to-EMG Estimation with Few-Shot Adaptation
Miroljub Mihailovic, Luca Tonin, Stefano Tortora, Emanuele Menegatti
TLDR
This paper introduces a GEGLU-Transformer for robust IMU-to-EMG estimation in wearable robotics, achieving high accuracy with minimal subject-specific adaptation.
Key contributions
- Introduces an adaptive IMU-to-EMG framework to reconstruct muscle activation from IMU data.
- Employs a GEGLU-Transformer for improved cross-subject generalization and rapid personalization.
- Achieves r=0.706 without adaptation and r=0.761 with just 0.5% adaptation data on LOSO.
Why it matters
Direct EMG sensing is challenging for real-world wearable robotics. This work provides a practical and scalable IMU-based alternative, enabling reliable neuromuscular activation estimation with minimal subject-specific data. This advances adaptive and personalized control for future robotic applications.
Original Abstract
Reliable estimation of neuromuscular activation is a key enabler for adaptive and personalized control in wearable robotics. However, surface electromyography (EMG) remains difficult to deploy robustly outside laboratory settings due to electrode sensitivity, signal non-stationarity, and strong subject dependence. In this work, we propose an adaptive IMU-to-EMG learning framework that reconstructs continuous muscle activation envelopes from wearable inertial measurements across heterogeneous movement conditions. The approach combines a Transformer encoder with Gaussian Error Gated Linear Units (GEGLU-Transformer) to enhance cross-subject generalization and enable rapid subject-specific personalization. Under a strict leave-one-subject-out (LOSO) protocol on a multi-condition lower-limb biomechanics dataset, the proposed architecture achieves r = 0.706 +/- 0.139 and R^2 = 0.474 +/- 0.208 without subject-specific adaptation. With only 0.5% adaptation data, performance increases to r = 0.761 +/- 0.030 and R^2 = 0.559 +/- 0.047, demonstrating rapid adaptation and early performance saturation. These results support attention-based architectures combined with lightweight adaptation as a practical and scalable alternative to direct EMG sensing for real-world wearable robotic applications.
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