Background: The accurate temporal analysis of muscle activation is of great interest in many research areas, spanning from neurorobotic systems to the assessment of altered locomotion patterns in orthopedic and neurological patients and the monitoring of their motor rehabilitation. The performance of the existing muscle activity detectors is strongly affected by both the SNR of the surface electromyography (sEMG) signals and the set of features used to detect the activation intervals. This work aims at introducing and validating a powerful approach to detect muscle activation intervals from sEMG signals, based on long short-term memory (LSTM) recurrent neural networks. Methods: First, the applicability of the proposed LSTM-based muscle a...
The optimisation and validation of a classifiers performance when applied to real world problems is...
The amplitude dependent muscle activity detection algorithms of the surface electromyography (sEMG) ...
"\"The aim of this work is the development of an improved formulation of the double threshold algori...
Background: The accurate temporal analysis of muscle activation is of great interest in many researc...
Background: Muscular‐activity timing is useful information that is extractable from surface EMG sign...
Previous studies have used the anaerobic threshold (AT) to non-invasively predict muscle fatigue. Th...
The use of natural myoelectric interfaces promises great value for a variety of potential applicatio...
Using time-frequency representation techniques, projecting 1D sEMG signals onto a 2D image space can...
The timely and accurate recognition of dynamic muscle fatigued states in rehabilitation training hel...
AbstractMyoelectric signals recorded via surface electrodes contain rich muscle activity information...
AIM: To investigate the association between subjective spasticity ratings and objective spasticity m...
AIM: To investigate the association between subjective spasticity ratings and objective spasticity m...
International audienceThere is growing evidence that each individual has unique movement patterns, o...
In this paper, we propose the long–short-term memory (LSTM)-based voluntary and non-voluntary (VNV) ...
Surface electromyography (sEMG) is commonly used in gait analysis for detecting muscle activity in a...
The optimisation and validation of a classifiers performance when applied to real world problems is...
The amplitude dependent muscle activity detection algorithms of the surface electromyography (sEMG) ...
"\"The aim of this work is the development of an improved formulation of the double threshold algori...
Background: The accurate temporal analysis of muscle activation is of great interest in many researc...
Background: Muscular‐activity timing is useful information that is extractable from surface EMG sign...
Previous studies have used the anaerobic threshold (AT) to non-invasively predict muscle fatigue. Th...
The use of natural myoelectric interfaces promises great value for a variety of potential applicatio...
Using time-frequency representation techniques, projecting 1D sEMG signals onto a 2D image space can...
The timely and accurate recognition of dynamic muscle fatigued states in rehabilitation training hel...
AbstractMyoelectric signals recorded via surface electrodes contain rich muscle activity information...
AIM: To investigate the association between subjective spasticity ratings and objective spasticity m...
AIM: To investigate the association between subjective spasticity ratings and objective spasticity m...
International audienceThere is growing evidence that each individual has unique movement patterns, o...
In this paper, we propose the long–short-term memory (LSTM)-based voluntary and non-voluntary (VNV) ...
Surface electromyography (sEMG) is commonly used in gait analysis for detecting muscle activity in a...
The optimisation and validation of a classifiers performance when applied to real world problems is...
The amplitude dependent muscle activity detection algorithms of the surface electromyography (sEMG) ...
"\"The aim of this work is the development of an improved formulation of the double threshold algori...