Several works have reported on the reconstruction of 2D/3D limb kinematics from low-frequency EEG signals using linear regression models based on positive correlation values between the recorded and the reconstructed trajectories. This paper describes the mathematical properties of the linear model and the correlation evaluation metric that may lead to a misinterpretation of the results of this type of decoders. Firstly, the use of a linear regression model to adjust the two temporal signals (EEG and velocity profiles) implies that the relevant component of the signal used for decoding (EEG) has to be in the same frequency range as the signal to be decoded (velocity profiles). Secondly, the use of a correlation to evaluate the fitting of tw...
Background: Brain-machine interfaces (BMI) have recently been integrated within motor rehabilitatio...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
Although it is argued that EEG signals lack sufficient signal-to-noise ratio, bandwidth, and informa...
Several works have reported on the reconstruction of 2D/3D limb kinematics from low-frequency EEG si...
Several works have reported on the reconstruction of 2D/3D limb kinematics from low-frequency EEG si...
[Resumen] Los exoesqueletos activos se han convertido en una herramienta clave en la rehabilitación ...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Objective. One of the main goals in brain–computer interface (BCI) research is the replacement or re...
The main goal of this paper is to simultaneously decode movement velocity of both hand and elbow fro...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
It is an emerging frontier of research on the use of neural signals for prosthesis control, in order...
Copyright © 2014 Hong Gi Yeom et al.This is an open access article distributed under the Creative Co...
<p>Objective: To date, motion trajectory prediction (MTP) of a limb from non-invasive electroencepha...
<p>Objective: To date, motion trajectory prediction (MTP) of a limb from non-invasive electroencepha...
Background: Brain-machine interfaces (BMI) have recently been integrated within motor rehabilitatio...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
Although it is argued that EEG signals lack sufficient signal-to-noise ratio, bandwidth, and informa...
Several works have reported on the reconstruction of 2D/3D limb kinematics from low-frequency EEG si...
Several works have reported on the reconstruction of 2D/3D limb kinematics from low-frequency EEG si...
[Resumen] Los exoesqueletos activos se han convertido en una herramienta clave en la rehabilitación ...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Objective. One of the main goals in brain–computer interface (BCI) research is the replacement or re...
The main goal of this paper is to simultaneously decode movement velocity of both hand and elbow fro...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
It is an emerging frontier of research on the use of neural signals for prosthesis control, in order...
Copyright © 2014 Hong Gi Yeom et al.This is an open access article distributed under the Creative Co...
<p>Objective: To date, motion trajectory prediction (MTP) of a limb from non-invasive electroencepha...
<p>Objective: To date, motion trajectory prediction (MTP) of a limb from non-invasive electroencepha...
Background: Brain-machine interfaces (BMI) have recently been integrated within motor rehabilitatio...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
Although it is argued that EEG signals lack sufficient signal-to-noise ratio, bandwidth, and informa...