Objective. Pattern-recognition-based myocontrol can be unreliable, which may limit its use in the clinical practice and everyday activities. One cause for this is the poor generalization of the underlying machine learning models to untrained conditions. Acquiring the training data and building the model more interactively can reduce this problem. For example, the user could be encouraged to target the model's instabilities during the data acquisition supported by automatic feedback guidance. Interactivity is an emerging trend in myocontrol of upper-limb electric prostheses: the user should be actively involved throughout the training and usage of the device. Approach. In this study, 18 non-disabled participants tested two novel feedback-...
Conventional prosthetic arms suffer from poor controllability and lack of sensory feedback. Owing to...
Background Active hand prostheses controlled using electromyography (EMG) signals have been used for...
Myocontrol is the use of a human machine interface based on muscle signals in order to control a rob...
Objective. Pattern-recognition-based myocontrol can be unreliable, which may limit its use in the cl...
Modern myocontrol of prosthetic upper limbs employs pattern recognition models to map the muscular a...
Human-machine interfaces have not yet advanced to enable intuitive control of multiple degrees of fr...
Abstract Background Sensory feedback is critical for grasping in able-bodied subjects. Consequently,...
Background: Sensory feedback is critical for grasping in able-bodied subjects. Consequently, closing...
Please note there was a problem with the upload. The file is a pdf, but the file ending is missing. ...
Abstract Background The loss of an arm presents a substantial challenge for upper limb amputees when...
Grasping is a complex task routinely performed in an anticipatory (feedforward) manner, where sensor...
Background To effectively replace the human hand, a prosthesis should seamlessly respond to user in...
While prosthetic fitting after upper-limb loss allows for restoration of motor functions, it deprive...
Objective. Dexterous upper-limb prostheses are available today to restore grasping, but an effective...
Conventional prosthetic arms suffer from poor controllability and lack of sensory feedback. Owing to...
Background Active hand prostheses controlled using electromyography (EMG) signals have been used for...
Myocontrol is the use of a human machine interface based on muscle signals in order to control a rob...
Objective. Pattern-recognition-based myocontrol can be unreliable, which may limit its use in the cl...
Modern myocontrol of prosthetic upper limbs employs pattern recognition models to map the muscular a...
Human-machine interfaces have not yet advanced to enable intuitive control of multiple degrees of fr...
Abstract Background Sensory feedback is critical for grasping in able-bodied subjects. Consequently,...
Background: Sensory feedback is critical for grasping in able-bodied subjects. Consequently, closing...
Please note there was a problem with the upload. The file is a pdf, but the file ending is missing. ...
Abstract Background The loss of an arm presents a substantial challenge for upper limb amputees when...
Grasping is a complex task routinely performed in an anticipatory (feedforward) manner, where sensor...
Background To effectively replace the human hand, a prosthesis should seamlessly respond to user in...
While prosthetic fitting after upper-limb loss allows for restoration of motor functions, it deprive...
Objective. Dexterous upper-limb prostheses are available today to restore grasping, but an effective...
Conventional prosthetic arms suffer from poor controllability and lack of sensory feedback. Owing to...
Background Active hand prostheses controlled using electromyography (EMG) signals have been used for...
Myocontrol is the use of a human machine interface based on muscle signals in order to control a rob...