Decoding neural signals into control outputs has been a key to the development of brain-computer interfaces (BCIs). While many studies have identified neural correlates of kinematics or applied advanced machine learning algorithms to improve decoding performance, relatively less attention has been paid to optimal design of decoding models. For generating continuous movements from neural activity, design of decoding models should address how to incorporate movement dynamics into models and how to select a model given specific BCI objectives. Considering nonlinear and independent speed characteristics, we propose a hybrid Kalman filter to decode the hand direction and speed independently. We also investigate changes in performance of differen...
Brain-machine interfaces (BMIs) for upper limb movement restoration rely on motor cortical circuits ...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Objective: To date, many brain-machine interface (BMI) studies have developed decoding algorithms fo...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
Copyright © 2014 Hong Gi Yeom et al.This is an open access article distributed under the Creative Co...
Abstract—Neural decoding has played a key role in recent advances in brain–machine interfaces (BMIs)...
pre-printKalman filters have been used to decode neural signals and estimate hand kinematics in many...
Objective. One of the main goals in brain–computer interface (BCI) research is the replacement or re...
The current neural decoding algorithms for brain-machine interfaces (BMIs) have largely focused on p...
The direct neural control of external devices such as computer displays or prosthetic limbs requires...
Abstract—The Kalman filter has been proposed as a model to decode neural activity measured from the ...
Brain Computer Interface (BCI) systems enable control of machines and computers using signals extrac...
Intracortical brain-machine interfaces (BMIs) aim to provide motor functions via high-performance ne...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Abstract—A direct comparison of the decoding performance of EEG and MEG in respect of hand movements...
Brain-machine interfaces (BMIs) for upper limb movement restoration rely on motor cortical circuits ...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Objective: To date, many brain-machine interface (BMI) studies have developed decoding algorithms fo...
Decoding neural signals into control outputs has been a key to the development of brain-computer int...
Copyright © 2014 Hong Gi Yeom et al.This is an open access article distributed under the Creative Co...
Abstract—Neural decoding has played a key role in recent advances in brain–machine interfaces (BMIs)...
pre-printKalman filters have been used to decode neural signals and estimate hand kinematics in many...
Objective. One of the main goals in brain–computer interface (BCI) research is the replacement or re...
The current neural decoding algorithms for brain-machine interfaces (BMIs) have largely focused on p...
The direct neural control of external devices such as computer displays or prosthetic limbs requires...
Abstract—The Kalman filter has been proposed as a model to decode neural activity measured from the ...
Brain Computer Interface (BCI) systems enable control of machines and computers using signals extrac...
Intracortical brain-machine interfaces (BMIs) aim to provide motor functions via high-performance ne...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Abstract—A direct comparison of the decoding performance of EEG and MEG in respect of hand movements...
Brain-machine interfaces (BMIs) for upper limb movement restoration rely on motor cortical circuits ...
The past decades have seen the rapid development of upper limb kinematics decoding techniques by per...
Objective: To date, many brain-machine interface (BMI) studies have developed decoding algorithms fo...