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  4. Gaussian process autoregression for simultaneous proportional multi-modal prosthetic control with natural hand kinematics
 
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Gaussian process autoregression for simultaneous proportional multi-modal prosthetic control with natural hand kinematics
File(s)
08023871.pdf (3.08 MB)
Published version
Author(s)
Xiloyannis, M
Gavriel, C
Thomik, AA
Faisal, AA
Type
Journal Article
Abstract
Matching the dexterity, versatility, and robustness of the human hand is still an unachieved goal in bionics, robotics, and neural engineering. A major limitation for hand prosthetics lies in the challenges of reliably decoding user intention from muscle signals when controlling complex robotic hands. Most of the commercially available prosthetic hands use muscle-related signals to decode a finite number of predefined motions and some offer proportional control of open/close movements of the whole hand. Here, in contrast, we aim to offer users flexible control of individual joints of their artificial hand. We propose a novel framework for decoding neural information that enables a user to independently control 11 joints of the hand in a continuous manner-much like we control our natural hands. Toward this end, we instructed six able-bodied subjects to perform everyday object manipulation tasks combining both dynamic, free movements (e.g., grasping) and isometric force tasks (e.g., squeezing). We recorded the electromyographic and mechanomyographic activities of five extrinsic muscles of the hand in the forearm, while simultaneously monitoring 11 joints of hand and fingers using a sensorized data glove that tracked the joints of the hand. Instead of learning just a direct mapping from current muscle activity to intended hand movement, we formulated a novel autoregressive approach that combines the context of previous hand movements with instantaneous muscle activity to predict future hand movements. Specifically, we evaluated a linear vector autoregressive moving average model with exogenous inputs and a novel Gaussian process (gP) autoregressive framework to learn the continuous mapping from hand joint dynamics and muscle activity to decode intended hand movement. Our gP approach achieves high levels of performance (RMSE of 8°/s and ρ = 0.79). Crucially, we use a small set of sensors that allows us to control a larger set of independently actuated degrees of freedom of a hand. This novel undersensored control is enabled through the combination of nonlinear autoregressive continuous mapping between muscle activity and joint angles. The system evaluates the muscle signals in the context of previous natural hand movements. This enables us to resolve ambiguities in situations, where muscle signals alone cannot determine the correct action as we evaluate the muscle signals in their context of natural hand movements. gP autoregression is a particularly powerful approach which makes not only a prediction based on the context but also represents the associated uncertainty of its predictions, thus enabling the novel notion of risk-based control in neuroprosthetics. Our results suggest that gP autoregressive approaches with exogenous inputs lend themselves for natural, intuitive, and continuous control in neurotechnology, with the particular focus on prosthetic restoration of natural limb function, where high dexterity is required for complex movements.
Date Issued
2017-10-01
Date Acceptance
2016-11-11
Citation
IEEE Transactions on Neural Systems and Rehabilitation Engineering, 2017, 25 (10), pp.1785-1801
URI
http://hdl.handle.net/10044/1/42557
URL
https://ieeexplore.ieee.org/document/8023871
DOI
https://www.dx.doi.org/10.1109/TNSRE.2017.2699598
ISSN
1534-4320
Publisher
Institute of Electrical and Electronics Engineers
Start Page
1785
End Page
1801
Journal / Book Title
IEEE Transactions on Neural Systems and Rehabilitation Engineering
Volume
25
Issue
10
Copyright Statement
This is an open access article available at http://ieeexplore.ieee.org/document/8023871/
Sponsor
Le Fonds National de la Recherche
Engineering & Physical Science Research Council (EPSRC)
Identifier
https://ieeexplore.ieee.org/document/8023871
Grant Number
1229297
N/A
Subjects
Science & Technology
Technology
Life Sciences & Biomedicine
Engineering, Biomedical
Rehabilitation
Engineering
Neuroprosthetics
robotic hand
decoding
autoregression
EMG
MMG
Gaussian process
proportional control
neurotechnology
MYOELECTRIC CONTROL
NEURAL-NETWORK
DESIGN
Adult
Algorithms
Biomechanical Phenomena
Electromyography
Fingers
Forearm
Hand
Healthy Volunteers
Humans
Joints
Male
Muscle, Skeletal
Neural Prostheses
Normal Distribution
Prosthesis Design
Regression Analysis
Robotics
Young Adult
Forearm
Hand
Fingers
Muscle, Skeletal
Joints
Humans
Electromyography
Regression Analysis
Normal Distribution
Prosthesis Design
Robotics
Algorithms
Adult
Male
Young Adult
Neural Prostheses
Healthy Volunteers
Biomechanical Phenomena
0903 Biomedical Engineering
0906 Electrical and Electronic Engineering
Biomedical Engineering
Publication Status
Published
Date Publish Online
2017-08-31
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