A Multimodal Intention Detection Sensor Suite for Shared Autonomy of Upper-Limb Robotic Prostheses.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Neurorobotic augmentation (e.g., robotic assist) is now in regular use to support individuals suffering from impaired motor functions. A major unresolved challenge, however, is the excessive cognitive load necessary for the human-machine interface (HMI). Grasp control remains one of the most challenging HMI tasks, demanding simultaneous, agile, and precise control of multiple degrees-of-freedom (DoFs) while following a specific timing pattern in the joint and human-robot task spaces. Most commercially available systems use either an indirect mode-switching configuration or a limited sequential control strategy, limiting activation to one DoF at a time. To address this challenge, we introduce a shared autonomy framework centred around a low-cost multi-modal sensor suite fusing: (a) mechanomyography (MMG) to estimate the intended muscle activation, (b) camera-based visual information for integrated autonomous object recognition, and (c) inertial measurement to enhance intention prediction based on the grasping trajectory. The complete system predicts user intent for grasp based on measured dynamical features during natural motions. A total of 84 motion features were extracted from the sensor suite, and tests were conducted on 10 able-bodied and 1 amputee participants for grasping common household objects with a robotic hand. Real-time grasp classification accuracy using visual and motion features obtained 100%, 82.5%, and 88.9% across all participants for detecting and executing grasping actions for a bottle, lid, and box, respectively. The proposed multimodal sensor suite is a novel approach for predicting different grasp strategies and automating task performance using a commercial upper-limb prosthetic device. The system also shows potential to improve the usability of modern neurorobotic systems due to the intuitive control design.

Authors

  • Marcus Gardner
    Moonshine Inc., London W12 0LN, UK.
  • C Sebastian Mancero Castillo
    Department of Mechanical Engineering, UK Dementia Research Institute Care-Research and Technology Centre (DRI-CRT) Imperial College London, London SW7 2AZ, UK.
  • Samuel Wilson
  • Dario Farina
  • Etienne Burdet
  • Boo Cheong Khoo
    Department of Mechanical Engineering, National University of Singapore, Singapore 119077, Singapore.
  • S Farokh Atashzar
    Department of Electrical and Computer Engineering, New York University, New York, NY 11201, USA.
  • Ravi Vaidyanathan