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Featured researches published by Eileen Lew.


Clinical Neurophysiology | 2008

A Brain-Actuated Wheelchair: Asynchronous and Non-Invasive Brain-Computer Interfaces for Continuous Control of Robots

Ferran Galán; Marnix Nuttin; Eileen Lew; Pierre W. Ferrez; Gerolf Vanacker; Johan Philips; J. del R. Millan

OBJECTIVE To assess the feasibility and robustness of an asynchronous and non-invasive EEG-based Brain-Computer Interface (BCI) for continuous mental control of a wheelchair. METHODS In experiment 1 two subjects were asked to mentally drive both a real and a simulated wheelchair from a starting point to a goal along a pre-specified path. Here we only report experiments with the simulated wheelchair for which we have extensive data in a complex environment that allows a sound analysis. Each subject participated in five experimental sessions, each consisting of 10 trials. The time elapsed between two consecutive experimental sessions was variable (from 1h to 2months) to assess the system robustness over time. The pre-specified path was divided into seven stretches to assess the system robustness in different contexts. To further assess the performance of the brain-actuated wheelchair, subject 1 participated in a second experiment consisting of 10 trials where he was asked to drive the simulated wheelchair following 10 different complex and random paths never tried before. RESULTS In experiment 1 the two subjects were able to reach 100% (subject 1) and 80% (subject 2) of the final goals along the pre-specified trajectory in their best sessions. Different performances were obtained over time and path stretches, what indicates that performance is time and context dependent. In experiment 2, subject 1 was able to reach the final goal in 80% of the trials. CONCLUSIONS The results show that subjects can rapidly master our asynchronous EEG-based BCI to control a wheelchair. Also, they can autonomously operate the BCI over long periods of time without the need for adaptive algorithms externally tuned by a human operator to minimize the impact of EEG non-stationarities. This is possible because of two key components: first, the inclusion of a shared control system between the BCI system and the intelligent simulated wheelchair; second, the selection of stable user-specific EEG features that maximize the separability between the mental tasks. SIGNIFICANCE These results show the feasibility of continuously controlling complex robotics devices using an asynchronous and non-invasive BCI.


Frontiers in Neuroengineering | 2012

Detection of self-paced reaching movement intention from EEG signals

Eileen Lew; Ricardo Chavarriaga; Stefano Silvoni; José del R. Millán

Future neuroprosthetic devices, in particular upper limb, will require decoding and executing not only the users intended movement type, but also when the user intends to execute the movement. This work investigates the potential use of brain signals recorded non-invasively for detecting the time before a self-paced reaching movement is initiated which could contribute to the design of practical upper limb neuroprosthetics. In particular, we show the detection of self-paced reaching movement intention in single trials using the readiness potential, an electroencephalography (EEG) slow cortical potential (SCP) computed in a narrow frequency range (0.1–1 Hz). Our experiments with 12 human volunteers, two of them stroke subjects, yield high detection rates prior to the movement onset and low detection rates during the non-movement intention period. With the proposed approach, movement intention was detected around 500 ms before actual onset, which clearly matches previous literature on readiness potentials. Interestingly, the result obtained with one of the stroke subjects is coherent with those achieved in healthy subjects, with single-trial performance of up to 92% for the paretic arm. These results suggest that, apart from contributing to our understanding of voluntary motor control for designing more advanced neuroprostheses, our work could also have a direct impact on advancing robot-assisted neurorehabilitation.


ieee international conference on rehabilitation robotics | 2007

Adaptive Shared Control of a Brain-Actuated Simulated Wheelchair

Johan Philips; J. del R. Millan; Gerolf Vanacker; Eileen Lew; Ferran Galán; Pierre W. Ferrez; H. Van Brussel; Marnix Nuttin

The use of shared control techniques has a profound impact on the performance of a robotic assistant controlled by human brain signals. However, this shared control usually provides assistance to the user in a constant and identical manner each time. Creating an adaptive level of assistance, thereby complementing the users capabilities at any moment, would be more appropriate. The better the user can do by himself, the less assistance he receives from the shared control system; and vice versa. In order to do this, we need to be able to detect when and in what way the user needs assistance. An appropriate assisting behaviour would then be activated for the time the user requires help, thereby adapting the level of assistance to the specific situation. This paper presents such a system, helping a brain-computer interface (BCI) subject perform goal-directed navigation of a simulated wheelchair in an adaptive manner. Whenever the subject has more difficulties in driving the wheelchair, more assistance will be given. Experimental results of two subjects show that this adaptive shared control increases the task performance. Also, it shows that a subject with a lower BCI performance has more need for extra assistance in difficult situations, such as manoeuvring in a narrow corridor.


Computational Intelligence and Neuroscience | 2007

Context-based filtering for assisted brain-actuated wheelchair driving

Gerolf Vanacker; José del R. Millán; Eileen Lew; Pierre W. Ferrez; Ferran Galán Moles; Johan Philips; Hendrik Van Brussel; Marnix Nuttin

Controlling a robotic device by using human brain signals is an interesting and challenging task. The device may be complicated to control and the nonstationary nature of the brain signals provides for a rather unstable input. With the use of intelligent processing algorithms adapted to the task at hand, however, the performance can be increased. This paper introduces a shared control system that helps the subject in driving an intelligent wheelchair with a noninvasive brain interface. The subjects steering intentions are estimated from electroencephalogram (EEG) signals and passed through to the shared control system before being sent to the wheelchair motors. Experimental results show a possibility for significant improvement in the overall driving performance when using the shared control system compared to driving without it. These results have been obtained with 2 healthy subjects during their first day of training with the brain-actuated wheelchair.


International Journal of Pattern Recognition and Artificial Intelligence | 2008

Non-Invasive Brain-Machine Interaction

José del R. Millán; Pierre W. Ferrez; Ferran Galán; Eileen Lew; Ricardo Chavarriaga

The promise of Brain-Computer Interfaces (BCI) technology is to augment human capabilities by enabling interaction with computers through a conscious and spontaneous modulation of the brainwaves after a short training period. Indeed, by analyzing brain electrical activity online, several groups have designed brain-actuated devices that provide alternative channels for communication, entertainment and control. Thus, a person can write messages using a virtual keyboard on a computer screen and also browse the internet. Alternatively, subjects can operate simple computer games, or brain games, and interact with educational software. Work with humans has shown that it is possible for them to move a cursor and even to drive a wheelchair. This paper briefly reviews the field of BCI, with a focus on non-invasive systems based on electroencephalogram (EEG) signals. It also describes three brain-actuated devices we have developed: a virtual keyboard, a brain game, and a wheelchair. Finally, it shortly discusses current research directions we are pursuing in order to improve the performance and robustness of our BCI system, especially for real-time control of brain actuated robots.


ambient intelligence | 2008

The use of brain-computer interfacing for ambient intelligence

Gangadhar Garipelli; Ferran Galán; Ricardo Chavarriaga; Pierre W. Ferrez; Eileen Lew; José del R. Millán

This book constitutes the refereed proceedings of the workshops of the First European Conference on Ambient Intelligence, AmI 2007, held in Darmstadt, Germany, in November 2007. The papers are organized in topical sections on AI methods for ambient intelligence, evaluating ubiquitous systems with users, model driven software engineering for ambient intelligence applications, smart products, ambient assisted living, human aspects in ambient intelligence, Amigo, WASP as well as the cojoint PERSONA and SOPRANO workshops and the KDubiq workshop.


1st International Conference on Cognitive Neurodynamics (ICCN 2007) | 2007

Visuo-Spatial Attention Frame Recognition for Brain-Computer Interfaces

Ferran Galán; Julie Palix; Ricardo Chavarriaga; Pierre W. Ferrez; Eileen Lew; Claude-Alain Hauert; José del R. Millán

Objective: To assess the feasibility of recognizing visual spatial attention frames for Brain-computer interfaces (BCI) applications. Methods: EEG data was recorded with 64 electrodes from 2 subjects executing a visual spatial attention task indicating 2 target locations. Continuous Morlet wavelet coefficients were estimated on 18 frequency components and 16 preselected electrodes in trials of 600 ms. The spatial patterns of the 16 frequency components frames were simultaneously detected and classified (between the two targets). The classification accuracy was assessed using 20-fold crossvalidation. Results: The maximum frames average classification accuracies are 80.64% and 87.31% for subject 1 and 2 respectively, both utilizing coefficients estimated at frequencies located in gamma band.


BVAI'07 Proceedings of the 2nd international conference on Advances in brain, vision and artificial intelligence | 2007

Non-invasive brain-actuated interaction

José del R. Millán; Pierre W. Ferrez; Ferran Galán; Eileen Lew; Ricardo Chavarriaga

The promise of Brain-Computer Interfaces (BCI) technology is to augment human capabilities by enabling interaction with computers through a conscious and spontaneous modulation of the brainwaves after a short training period. Indeed, by analyzing brain electrical activity online, several groups have designed brain-actuated devices that provide alternative channels for communication, entertainment and control. Thus, a person can write messages using a virtual keyboard on a computer screen and also browse the internet. Alternatively, subjects can operate simple computer games, or brain games, and interact with educational software. Work with humans has shown that it is possible for them to move a cursor and even to drive a wheelchair. This paper briefly reviews the field of BCI, with a focus on non-invasive systems based on electroencephalogram (EEG) signals. It also describes three brain-actuated devices we have developed: a virtual keyboard, a brain game, and a wheelchair. Finally, it shortly discusses current research directions we are pursuing in order to improve the performance and robustness of our BCI system, especially for real-time control of brain-actuated robots.


international conference of the ieee engineering in medicine and biology society | 2012

Self-paced movement intention detection from human brain signals: Invasive and non-invasive EEG

Eileen Lew; Ricardo Chavarriaga; Huaijian Zhang; Margitta Seeck; José del R. Millán


international symposium on robotics | 2007

An Asynchronous and Non-Invasive Brain-Actuated Wheelchair

Ferran Galán; Marnix Nuttin; Eileen Lew; Pierre W. Ferrez; Gerolf Vanacker; Johan Philips; H. Van Brussel; José del R. Millán

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José del R. Millán

École Polytechnique Fédérale de Lausanne

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Ferran Galán

Idiap Research Institute

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Marnix Nuttin

Katholieke Universiteit Leuven

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Gerolf Vanacker

Katholieke Universiteit Leuven

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Johan Philips

Katholieke Universiteit Leuven

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Ricardo Chavarriaga

École Polytechnique Fédérale de Lausanne

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Hendrik Van Brussel

Katholieke Universiteit Leuven

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Anna Buttfield

Idiap Research Institute

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