Pattern recognition of myoelectric signals for the control of prosthetic devices has been widely reported and debated. A large portion of the literature focuses on offline classification accuracy of pre-recorded signals. Historically, however, there has been a semantic gap between research findings and a clinically viable implementation. Recently, renewed focus on prosthetics research has pushed the field to provide more clinically relevant outcomes. One way to work towards this goal is to examine the differences between research and clinical results. The constrained nature in which offline training and test data is often collected compared to the dynamic nature of prosthetic use is just one example. In this work, we demonstrate that variat...
The promise of pattern recognition for improved control of upper-extremity powered prostheses has ex...
Abstract Background Electromyography (EMG) pattern-recognition based control strategies for multifun...
Background and Objective: Mobility of subject (MoS) and muscle contraction force variation (MCFV) ha...
Pattern recognition of myoelectric signals for the control of prosthetic devices has been widely rep...
Pattern recognition of myoelectric signals for the control of prosthetic devices has been widely rep...
Reported studies on pattern recognition of electromyograms (EMG) for the control of prosthetic devic...
An upper-limb amputation is a life-changing procedure severely impacting the individual's ability to...
Aiming at dexterous and reliable solutions to increase the quality of life of amputees, upper limb p...
The surface myoelectric signal (MES) has proven to be an effective control input for powered prosthe...
The promise of pattern recognition for improved control of upper-extremity powered prostheses has ex...
Over the last few decades, pattern recognition algorithms have shown promising results in the field ...
Pattern recognition based myoelectric control for upper limb prostheses has gained increasing attent...
<p>Pattern recognition based myoelectric control for upper limb prostheses has gained increasing att...
The natural control of robotic prosthetic hands with non-invasive techniques is still a challenge: m...
Thesis: S.B., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2018.Cata...
The promise of pattern recognition for improved control of upper-extremity powered prostheses has ex...
Abstract Background Electromyography (EMG) pattern-recognition based control strategies for multifun...
Background and Objective: Mobility of subject (MoS) and muscle contraction force variation (MCFV) ha...
Pattern recognition of myoelectric signals for the control of prosthetic devices has been widely rep...
Pattern recognition of myoelectric signals for the control of prosthetic devices has been widely rep...
Reported studies on pattern recognition of electromyograms (EMG) for the control of prosthetic devic...
An upper-limb amputation is a life-changing procedure severely impacting the individual's ability to...
Aiming at dexterous and reliable solutions to increase the quality of life of amputees, upper limb p...
The surface myoelectric signal (MES) has proven to be an effective control input for powered prosthe...
The promise of pattern recognition for improved control of upper-extremity powered prostheses has ex...
Over the last few decades, pattern recognition algorithms have shown promising results in the field ...
Pattern recognition based myoelectric control for upper limb prostheses has gained increasing attent...
<p>Pattern recognition based myoelectric control for upper limb prostheses has gained increasing att...
The natural control of robotic prosthetic hands with non-invasive techniques is still a challenge: m...
Thesis: S.B., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2018.Cata...
The promise of pattern recognition for improved control of upper-extremity powered prostheses has ex...
Abstract Background Electromyography (EMG) pattern-recognition based control strategies for multifun...
Background and Objective: Mobility of subject (MoS) and muscle contraction force variation (MCFV) ha...