Abstract:
Surface electromyography (sEMG) signal has been used in upper limb rehabilitation robots (ULRR). However, existing ULRR based on myoelectric controllers suffers from limi...Show MoreMetadata
Abstract:
Surface electromyography (sEMG) signal has been used in upper limb rehabilitation robots (ULRR). However, existing ULRR based on myoelectric controllers suffers from limited generalization ability in estimating three-dimensional (3-D) motion intention. This article proposes a muscle-synergy-inspired approach to enhance the generalization ability of the myoelectric controller of a cable-driven ULRR. Low-dimensional commands are extracted from sEMG signals based on an EMG-to-muscle activation model and non-negative matrix factorization. The extracted commands are used to estimate the 3-D human force. Two different trajectory tracking tasks are selected to test the generalization ability. The system is trained based on training sets where participants perform one task. Then the system is tested using testing sets where participants perform the other task. Finally, the system is verified on real-time robotic control experiment. Results show that the proposed controller achieves better force estimating accuracy, better trajectory tracking accuracy, and lower interaction force than the myoelectric controller without considering muscle synergies, which means the proposed controller yields better generalization performance.
Published in: IEEE Transactions on Robotics ( Volume: 40)
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- IEEE Keywords
- Index Terms
- Upper Limb ,
- Rehabilitation Robots ,
- Upper Limb Rehabilitation ,
- Upper Limb Rehabilitation Robot ,
- Training Set ,
- Generalization Ability ,
- Positive Matrix ,
- Generalization Performance ,
- Interaction Forces ,
- Robot Control ,
- Non-negative Matrix Factorization ,
- Surface Electromyography ,
- Motor Intention ,
- sEMG Signals ,
- Muscle Synergies ,
- Surface Electromyography Signals ,
- Muscle Activity ,
- 3D Space ,
- Independent Component Analysis ,
- Force Estimation ,
- Human-robot Interaction ,
- End-effector Position ,
- State-space Model ,
- Rehabilitation Training ,
- Tracking Error ,
- Integration Of Forces ,
- Central Nervous System Regulation ,
- Proportional-integral-derivative ,
- Previous Article
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Upper Limb ,
- Rehabilitation Robots ,
- Upper Limb Rehabilitation ,
- Upper Limb Rehabilitation Robot ,
- Training Set ,
- Generalization Ability ,
- Positive Matrix ,
- Generalization Performance ,
- Interaction Forces ,
- Robot Control ,
- Non-negative Matrix Factorization ,
- Surface Electromyography ,
- Motor Intention ,
- sEMG Signals ,
- Muscle Synergies ,
- Surface Electromyography Signals ,
- Muscle Activity ,
- 3D Space ,
- Independent Component Analysis ,
- Force Estimation ,
- Human-robot Interaction ,
- End-effector Position ,
- State-space Model ,
- Rehabilitation Training ,
- Tracking Error ,
- Integration Of Forces ,
- Central Nervous System Regulation ,
- Proportional-integral-derivative ,
- Previous Article
- Author Keywords