Intelligent Systems Research Centre University of Ulster, Magee Campus BCI Research at the ISRC, University of Ulster N. Ireland, UK By Dr. Girijesh Prasad.

Slides:



Advertisements
Similar presentations
Signal processing techniques for fNIRS and application to Brain Computer Interfaces Gautier Durantin, ISAE/CERCO French community for functional NIRS.
Advertisements

IntroductionMethods Participants  7 adults with severe motor impairment.  9 adults with no motor impairment.  Each participant was asked to utilize.
Brain-computer interfaces: classifying imaginary movements and effects of tDCS Iulia Comşa MRes Computational Neuroscience and Cognitive Robotics Supervisors:
1 1 MPI for Biological Cybernetics 2 Stanford University 3 Werner Reichardt Centre for Integrative Neuroscience Eberhard Karls University Tuebingen Epidural.
NeuroPhone: Brain-Mobile Phone Interface using a Wireless EEG Headset Source: MobiHeld 2010 Presented By: Corey Campbell.
1 The INRIA Robotics Teams Propose a Large-Scale Initiative Action “Personally Assisted Living” March 18, 2009.
WRSTA, 13 August, 2006 Rough Sets in Hybrid Intelligent Systems For Breast Cancer Detection By Aboul Ella Hassanien Cairo University, Faculty of Computer.
Provisional draft ICT for Independent Living and Inclusion European Commission, DG Information Society and Media E-Inclusion Unit (H3) Challenge 7.
1 Affective Learning with an EEG Approach Xiaowei Li School of Information Science and Engineering, Lanzhou University, Lanzhou, China
A commonly used feature to discriminate between hand and foot movements is the variance of the EEG signal at certain electrodes. To this end, one calculates.
Oral Defense by Sunny Tang 15 Aug 2003
CS Machine Learning. What is Machine Learning? Adapt to / learn from data  To optimize a performance function Can be used to:  Extract knowledge.
Neural Decoding: Model and Algorithm for Evidence Accumulator Inference Thomas Desautels University College London Gatsby Computational Neuroscience Group.
OOSE 01/17 Institute of Computer Science and Information Engineering, National Cheng Kung University Member:Q 薛弘志 P 蔡文豪 F 周詩御.
A Virtual Keyboard with Multi Modal Access for people with disabilities Vijit Prabhu 1, Girijesh Prasad 2 1 Computer Science & Engineering, Indian School.
Information Technology Industry Report Brown University ADSP Lab 余 渊 善
ISBE An infrastructure for European (systems) biology Martijn J. Moné Seqahead meeting “ICT needs and challenges for Big Data in the Life Sciences” Pula,
Department of Information Technology Indian Institute of Information Technology and Management Gwalior AASF hIQ 1 st Nov ‘09 Department of Information.
Tufts Wireless Laboratory School Of Engineering Tufts University “Network QoS Management in Cyber-Physical Systems” Nicole Ng 9/16/20151 by Feng Xia, Longhua.
IP-Based Emergency Applications and Services for Next Generation Networks PEACE Presented by Suji Gunaratne PhD.
Leslie Luyt Supervisor: Dr. Karen Bradshaw 2 November 2009.
11 C H A P T E R Artificial Intelligence and Expert Systems.
Project funded by the Future and Emerging Technologies arm of the IST Programme FET K.A. line Networks of excellence and working groups the European.
The University of SydneyPage 1 Remote laboratories and mediated interactions: The real opportunity for enhancing learning Professor David Lowe Faculty.
Directeur : Mr S. PERREY (PR). Improving Usability in Human Computer Interfaces: an investigation into cognitive fatigue and its influence on the performance.
Prognosis of Gear Health Using Gaussian Process Model Department of Adaptive systems, Institute of Information Theory and Automation, May 2011, Prague.
Overview of Part I, CMSC5707 Advanced Topics in Artificial Intelligence KH Wong (6 weeks) Audio signal processing – Signals in time & frequency domains.
ICRA2009 Evaluation of a robot as embodied interface for Brain Computer Interface systems E. Menegatti, L. Tonin Intelligent Autonomous System Laboratory.
Exploration of Instantaneous Amplitude and Frequency Features for Epileptic Seizure Prediction Ning Wang and Michael R. Lyu Dept. of Computer Science and.
Virtual Reality in Brain- Computer Interface Research F. Lee 1, R. Scherer 2, H. Bischof 1, G. Pfurtscheller 2 1) Institute for Computer Graphics and Vision.
BCI-based Robot Rehabilitation Framework for Stroke Patients M. Gomez-Rodriguez 1,2 J. Peters 1 J.. Hill 1 A. Gharabaghi 3 B. Schölkopf 1 M.. Grosse-Wentrup.
1 EEG-based Online Brain- Computer Interface System Chi-Ying Chen,Chang-Yu Tsai,Ya-Chun Tang Advisor:Yong-Sheng Chen.
Analysis of Movement Related EEG Signal by Time Dependent Fractal Dimension and Neural Network for Brain Computer Interface NI NI SOE (D3) Fractal and.
Workshop on direct brain/computer interface & control Febo Cincotti Fondazione Santa Lucia IRCCS Brussels, August 2, 2006.
IST4Balt, April 6, IST4Balt workshop “IST 6th Framework programme - great opportunity for cooperation and collaboration" 1 Cognitive Approaches.
Design and Implementation of Geometric and Texture-Based Flow Visualization Techniques Robert S. Laramee Markus Hadwiger Helwig Hauser.
Using Electroencephalography (EEG) for User State / Task Classification in HCI Research Desney Tan Microsoft Research In collaboration with: Johnny Lee.
Prof Mark Hawley Centre Director (Re)Introduction to CATCH.
Using decision trees to build an a framework for multivariate time- series classification 1 Present By Xiayi Kuang.
Identifying “Best Bet” Web Search Results by Mining Past User Behavior Author: Eugene Agichtein, Zijian Zheng (Microsoft Research) Source: KDD2006 Reporter:
Accessible and Inclusive ICT European Commission, DG Information Society and Media ICT for Inclusion Unit (H3) Challenge 7 ICT Call 2 Information day Brussels,
IPSIHAND AN EEG BASED BRAIN COMPUTER INTERFACE FOR MOTOR REHABILITATION.
ICT-enabled assistive systems based on non-invasive BCI Joseph Bremer European Commission, DG Information Society and Media E-Inclusion Unit (H3) BRAIN-COMPUTERINTERACTIONBRAIN-COMPUTERINTERACTION.
Chapter 1. Introduction in Creating Brain-like intelligence, Sendhoff et al. Course: Robots Learning from Humans Bae, Eun-bit Otology Laboratory Seoul.
Efficient Opportunistic Sensing using Mobile Collaborative Platform MOSDEN.
A Cortico-Muscular-Coupling based Single-Trial Detection in EEG-EMG based BCI for Personalized Neuro-Rehabilitation of Stroke Patients 1. Introduction.
NCP meeting Jan 27-28, 2003, Brussels Colette Maloney Interfaces, Knowledge and Content technologies, Applications & Information Market DG INFSO Multimodal.
The Neural Engineering Data Consortium Mission: To focus the research community on a progression of research questions and to generate massive data sets.
Introduction to Machine Learning, its potential usage in network area,
advanced prosthetıcs and neural ınterfaces
A Study on Cortico-muscular Coupling in Finger Motions for Exoskeleton Assisted Neuro-Rehabilitation Anirban Chwodhury1 , Haider Raza2 , Ashish Dutta1,
Brain operated wheelchair
Introduction Characteristics Advantages Limitations
Flexible Manufacturing Systems
Preface to the special issue on context-aware recommender systems
Image Recognition. Contents: Motivation Objective Definition Introduction Preprocessing / Edge Detection Neural Networks in Image Recognition Practical.
When to engage in interaction – and how
Fabien LOTTE, Cuntai GUAN Brain-Computer Interfaces laboratory
Implementing Boosting and Convolutional Neural Networks For Particle Identification (PID) Khalid Teli .
MANAGING KNOWLEDGE FOR THE DIGITAL FIRM
Automatic Discovery of Network Applications: A Hybrid Approach
Figure 1 General framework of brain–computer interface (BCI) systems
Multi-Sensor Soft-Computing System for Driver Drowsiness Detection
To learn more, visit The Neural Engineering Data Consortium Mission: To focus the research community on a progression of research questions.
Pose Estimation for non-cooperative Spacecraft Rendevous using CNN
An Improved Neural Network Algorithm for Classifying the Transmission Line Faults Slavko Vasilic Dr Mladen Kezunovic Texas A&M University.
Department of Electrical Engineering
John H.L. Hansen & Taufiq Al Babba Hasan
EECS Department, UC Berkeley
BCI Research at the ISRC, University of Ulster N. Ireland, UK
Presentation transcript:

Intelligent Systems Research Centre University of Ulster, Magee Campus BCI Research at the ISRC, University of Ulster N. Ireland, UK By Dr. Girijesh Prasad Intelligent Systems Research Centre, School of Computing and Intelligent Systems, Faculty of Engineering, University of Ulster, Magee Campus, N. Ireland, UK ISRC URL:

Intelligent Systems Research Centre University of Ulster, Magee Campus 2 Presentation outline RTD facilities BCI research expertise Ongoing research work Project Proposal

Intelligent Systems Research Centre University of Ulster, Magee Campus 3 RTD Facilities We are part of a recently launched £20M centre of excellence in Intelligent Systems with core activities in: –Software and hardware implementations of neural networks, fuzzy systems, Gas –Bio-inspired Intelligent Systems – Brain Modeling –Brain computer Interfacing (BCI) –Intelligent Robotics –Embedded systems –Re-configurable computing/FPGA systems –Multiple valued logic systems –Machine vision –Intelligent process control BCI laboratory facilities: –A state-of-art BCI experimental setup with 56 EEG channels, 8 EMG channels –An 8 EEG/EMG channel mobile unit –A 4 EEG channel wireless mobile unit –EMF screened room –Multiple electrode systems

Intelligent Systems Research Centre University of Ulster, Magee Campus 4 Expertise Main BCI research objectives: –To devise a robust BCI system that can self-organise and adapt to each individual’s EEG autonomously and to the inherent day-to-day changes –To effectively account for uncertainties inherently present in EEG due to non-stationary brain dynamics and varying noise characteristics of the measurement environment RTD work Undertaken and ongoing : –Time-series prediction approach for pre-processing and feature extraction –Comprehensive and conclusive analysis of best spectral approaches to feature extraction –Type-2 fuzzy logic (T2FL) approach for classifier design –Design of neurofeedback –A self-organising non-parametric BCI –Real-time implementation and extensive experimental evaluation on more than 14 subjects over several months

Intelligent Systems Research Centre University of Ulster, Magee Campus 5 Type-2 Fuzzy Logic-based Methodology Feature Extraction Class label LEFT or RIGHT hand imagery C3 feature vector C4 feature vector T2 FL-based Classifier IF THEN C3 C4 EEG trial Expertise…cont. Promising results: Significantly higher robustness and classification accuracy

Intelligent Systems Research Centre University of Ulster, Magee Campus 6 Expertise…cont. Ongoing research work –Advanced modelling approaches for improving feature separability –Enhancing mental practice through BCI-based neurofeedback for post stroke rehabilitation –Self-adaptive Asynchronous Brain-Computer Interface Participation in large-scale national and EU projects –e.g. SenseMaker - a multi-sensory, task-specific adaptable perception system, (IST ) Funded under EUFP5 on Life-like Perception, (0.5M Euros),

Intelligent Systems Research Centre University of Ulster, Magee Campus 7 An Intelligent System for Post-stroke Rehabilitation: A project proposal An EEG-based brain-computer interface for neurofeedback. Development of an appropriate neurofeedback to motivate subjects for focussed mental practice of rehabilitation exercises over long- term. Industrial involvement for prototype product development. Incorporation of a robotic system that facilitates physical exercises in case of extreme disability. Involvement of health specialists such as neuro-psychologists. Provision for modifications of therapeutic strategy dependent on intelligent sensory data (e.g. EMG and EEG) analysis, and human responses.

Intelligent Systems Research Centre University of Ulster, Magee Campus 8 Project consortia Partners are sought with relevant expertise. We are also interested in joining other consortia for: –BCI Research and Development –Advanced Intelligent Systems for assistive technology –Computational Intelligence and cognitive Systems

Intelligent Systems Research Centre University of Ulster, Magee Campus 9 Conclusions Robustness, uncertainty handling, and adaptability are key challenges. Our TSP approach as an EEG data preprocessing procedure significantly enhances effectiveness of feature extraction procedures. T2FLS based classification approach shows potential in more effective handling of signal variability and uncertainty. Further algorithmic enhancement is needed for developing a practical BCI. Planned ongoing work is addressing this. Project partners are sought.

Intelligent Systems Research Centre University of Ulster, Magee Campus 10 Questions Thank you