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Title: info day 29/9/97 MEL-ARI NANO Author: DG III Last modified by: Created Date: 9/26/1997 3:18:58 PM Document presentation format: A4 (210x297 mm) – PowerPoint PPT presentation

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Title: info day 29/9/97 MEL-ARI NANO


1
Graz-Brain-Computer Interface State of Research
By Hyun Sang Suh
2
Overview BCI systems
The user performs a certain task, which has a
distinct EEG signature
The specific features are extracted from the EEG
A pattern classification system uses these EEG
features to determine which task the user
performed
The BCI presents feedback to the user, and forms
a message or command
3
Motor execution vs. Movement imagination
Subject 1, g3
Subject 2, f4
Execution
time
4
How can we discriminate four motor imagery tasks?
Tongue
Left Hand
Right hand
Foot
5
The mu-wave BCI
  • Mu wave activity occurs around roughly 12 Hz.
  • Alpha waves are strongest over the visual areas
    in the occipital lobe, But mu waves are strongest
    over the motor areas in the frontal lobe.
  • Mu activity changes as people perform or imagine
    movement. You have ERD/ ERS patterns depending on
    the motor imagery tasks

Time
6
Subjects and experimental paradigm
  • Participants Six female and three male healthy
    right-handed subjects.
  • Remain relaxed and avoid any motion during
    experiment.
  • Imagine the experience of movement (kinesthetic,
    MIK).
  • The arrow pointing represent one of the four
    different tasks (left hand, right hand, both feet
    and tongue).
  • EEG signal were recorded from 60 electrodes
    referenced to the left mastoid.

7
Quantification of ERD/ ERS
  • First, band-pass filtering of each trial.
  • Second, squaring of samples (with smoothing)
  • Third, averaging of N trials.
  • The ERD/ ERS pattern is defined as the percentage
    power decrease (ERD) or power increase (ERS)
    comparison to one-second reference interval
    (0.5-1.5 sec).

8
Kappa coefficient and ITV
  • Kappa coefficient
  • - To measure distinctiveness

Where acc is the accuracy derived by confusion
matrix, n is the number of classes
  • Intertask variability (ITV)
  • - standard deviation of averaged ERD/ ERS

9
Frequencies and band power changes
10
Time-frequency maps displaying ERD/ ERS
time
11
Maps displaying the topographical distribution of
averaged band power
High ITV
Low ITV
Intertask variability ITV
12
Brainloop Interface for Google
R. Scherer, G. Pfurtscheller. The self-paced Graz
brain-computer interface methods and
applications. Computational Intelligence and
Neuroscience 2007, 79825, 2007.
13
Mu vs. P300 BCIs
Mu BCI
P300 BCI
  • Requiring training
  • Work in real-time
  • 2D control possible
  • Continuous control
  • Affected by movement
  • Requiring no training
  • Require averaging
  • 1D control only
  • Discrete control
  • Affected by distraction

14
Phase Synchronization Features
  • Currently, BCIs system is not considered the
    relationships between EEG signals measure at
    different electrode recording.
  • We can obtain the additional information from
    this relationships.
  • Phase Locking value (PLV) is one of the method to
    quantify such relationships.
  • The PLV can measure the level of phase
    synchronization between pairs of EEG signals.
  • The PLV value of 1 means that the two channels
    are highly synchronized, whereas a value of 0
    means no phase synchronization.

15
Phase Synchronization Features
16
BCI Applications
17
Patient with Spinal Cord Injury
  • Spinal Cord Injury (SCI)
  • - Damage or trauma to the spinal cord that
    result in a loss or impaired function
  • - The effects of SCI depend on type of injury
    (i.e, a car accident, falls, sports injuries, or
    a disease)

18
Restoration of hand movement in SCI patient
19
Functional Electrical Stimulation
20
BCI controlled FES
G. Pfurtscheller, G. R. Müller, J. Pfurtscheller,
H. J. Gerner, Rüdiger Rupp. 'Thought'-control of
functional electrical stimulation to restore hand
grasp in a patient with tetraplegia. Neuroscience
Letters 351, 33-36, 2003. .
21
What is the Neuroprosthese?
  • It is a device which replaces nerve function lost
    as a result of disease or injury.
  • The neuroprosthetics can act as a bridge between
    functioning elements of the nervous system and
    damaged nerves.
  • It can be used in the spinal cord to allow
    standing in paraplegics.

Hand prostheses
22
AUDITORY PROSTHETICS
  • most successful example of sensory prosthetic is
    the cochlear implant.
  • lack the cochlear hair cells that transduce sound
    into neural activity.
  • Extended to direct stimulation of the brainstem
    for those with dysfunctional cochlear nerves.

23
VISUAL PROSTHETICS
  • The device uses electrical signals to bypass dead
    photoreceptors and stimulate remaining viable
    cells of the retina.
  • Images come from the external video camera worn
    behind the patients glasses.
  • The images are transmitted through a computer to
    electrodes attached to the retina
  • Reproduce the visual image in the occipital lobe.

24
BCI controlled Neuroprosthese
  • The BCI system is implanted his right hand and
    arm
  • Detect brain pattern (ERD/ ERS) of left hand foot
    imagery movement
  • Provide two graps patterns

25
BCI controlled Neuroprosthesis
G. R. Müller-Putz, R. Scherer, G. Pfurtscheller,
R. Rupp. EEG-based neuroprosthesis control a
step towards clinical practice. Neuroscience
Letters 382, 169-174, 2005.
26
BCI controlled Game
27
Thank you for your attention
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