IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2024)

Generalizing Upper Limb Force Modeling With Transfer Learning: A Multimodal Approach Using EMG and IMU for New Users and Conditions

  • Gelareh Hajian,
  • Evan Campbell,
  • Mahdi Ansari,
  • Evelyn Morin,
  • Ali Etemad,
  • Kevin Englehart,
  • Erik Scheme

DOI
https://doi.org/10.1109/TNSRE.2024.3351829
Journal volume & issue
Vol. 32
pp. 391 – 400

Abstract

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In the field of EMG-based force modeling, the ability to generalize models across individuals could play a significant role in its adoption across a range of applications, including assistive devices, robotic and rehabilitation devices. However, current studies have predominately focused on intra-subject modeling, largely neglecting the burden of end-user data acquisition. In this work, we propose the use of transfer learning (TL) to generalize force modeling to a new user by first establishing a baseline model trained using other users’ data, and then adapting to the end-user using a small amount of new data (only ${10}\%$ , ${20}\%$ , and ${40}\%$ of the new user data). Using a deep multimodal convolutional neural network, consisting of two CNN models, one with high-density (HD) EMG and one with motion data recorded by an Inertial Measurement Unit (IMU), our proposed TL technique significantly improved force modeling compared to leave-one-subject-out (LOSO) and even intra-subject scenarios. The TL approach increased the average R squared values of the force modeling task by 60.81%, 190.53%, and 199.79% compared to the LOSO case, and by 13.4%, 36.88%, and 45.51% compared to the intra-subject case for isotonic, isokinetic and dynamic conditions, respectively. These results show that it is possible to adapt to a new user with minimal data while improving performance significantly compared to the intra-subject scenario. We also show that TL can be used to generalize on a new experimental condition for a new user.

Keywords