IEEE Open Journal of the Communications Society,
Journal Year:
2024,
Volume and Issue:
5, P. 5488 - 5539
Published: Jan. 1, 2024
This
article
discusses
'Metaverse'
from
a
technical
perspective,
focusing
on
networked
systems
aspects.
Based
definition
of
the
'Metaverse',
we
examine
current
state
and
challenges
in
communication
networking
within
Metaverse
systems.
We
describe
state-of-the-art
different
enabling
technologies
provide
analysis
system
architectures.
then
detail
gaps
four
areas:
performance,
mobility,
large-scale
operation,
end
architecture.
our
analysis,
formulate
vision
for
future
infrastructure,
outlining
goals,
design
concepts,
suggested
research
directions.
IEEE Transactions on Neural Systems and Rehabilitation Engineering,
Journal Year:
2021,
Volume and Issue:
29, P. 1998 - 2007
Published: Jan. 1, 2021
A
brain-computer
interface
(BCI)
provides
a
direct
communication
channel
between
brain
and
an
external
device.
Steady-state
visual
evoked
potential
based
BCI
(SSVEP-BCI)
has
received
increasing
attention
due
to
its
high
information
transfer
rate,
which
is
accomplished
by
individual
calibration
for
frequency
recognition.
Task-related
component
analysis
(TRCA)
recent
state-of-the-art
method
individually
calibrated
SSVEP-BCIs.
However,
in
TRCA,
the
spatial
filter
learned
from
each
stimulus
may
be
redundant
temporal
not
fully
utilized.
To
address
this
issue,
paper
proposes
novel
method,
i.e.,
task-discriminant
(TDCA),
further
improve
performance
of
individually-calibrated
SSVEP-BCI.
The
TDCA
was
evaluated
two
publicly
available
benchmark
datasets,
results
demonstrated
that
outperformed
ensemble
TRCA
other
competing
methods
significant
margin.
An
offline
online
experiment
testing
12
subjects
validated
effectiveness
TDCA.
present
study
new
perspective
designing
decoding
SSVEP-BCI
presents
insight
implementation
high-speed
speller
applications.
IEEE Internet of Things Journal,
Journal Year:
2023,
Volume and Issue:
10(18), P. 15788 - 15809
Published: April 10, 2023
The
metaverse
aims
to
build
an
immersive
virtual
reality
world
support
the
daily
life,
work,
and
recreation
of
people.
In
this
survey,
status
quo
is
investigated,
technical
framework
introduced
from
three
aspects:
1)
generation
worlds;
2)
connection
real
objects;
3)
transmission
data.
Specifically,
survey
first
discusses
development
challenges
related
technologies
for
methods
3-D
generation;
human–computer
interaction
experience;
ecosystem.
Second,
we
investigate
extended
(XR),
motion
capture,
brain–computer
interface
evaluate
potential
research
directions
these
entrance
metaverse.
Finally,
network
data
are
reviewed
Internet
Things
(IoT),
5G/6G
wireless,
edge
computing
aspects,
demand
side
in
virtual-reality
interpromotion,
big
processing,
low-latency
networking
discussed,
promising
hotspots
identified.
Nature Communications,
Journal Year:
2023,
Volume and Issue:
14(1)
Published: July 14, 2023
Brain-computer
interfaces
(BCIs)
have
attracted
considerable
attention
in
motor
and
language
rehabilitation.
Most
devices
use
cap-based
non-invasive,
headband-based
commercial
products
or
microneedle-based
invasive
approaches,
which
are
constrained
for
inconvenience,
limited
applications,
inflammation
risks
even
irreversible
damage
to
soft
tissues.
Here,
we
propose
in-ear
visual
auditory
BCIs
based
on
bioelectronics,
named
as
SpiralE,
can
adaptively
expand
spiral
along
the
meatus
under
electrothermal
actuation
ensure
conformal
contact.
Participants
achieve
offline
accuracies
of
95%
9-target
steady
state
evoked
potential
(SSVEP)
BCI
classification
type
target
phrases
successfully
a
calibration-free
40-target
online
SSVEP
speller
experiment.
Interestingly,
SSVEPs
exhibit
significant
2
Advanced Materials,
Journal Year:
2023,
Volume and Issue:
35(47)
Published: May 5, 2023
Abstract
Brain–computer
interface
(BCI)
has
been
the
subject
of
extensive
research
recently.
Governments
and
companies
have
substantially
invested
in
relevant
applications.
The
restoration
communication
motor
function,
treatment
psychological
disorders,
gaming,
other
daily
therapeutic
applications
all
benefit
from
BCI.
electrodes
hold
key
to
essential,
fundamental
BCI
precondition
electrical
brain
activity
detection
delivery.
However,
traditional
rigid
are
limited
due
their
mismatch
Young's
modulus,
potential
damages
human
body,
a
decline
signal
quality
with
time.
These
factors
make
development
flexible
vital
urgent.
Flexible
made
soft
materials
grown
popularity
recent
years
as
an
alternative
conventional
because
they
offer
greater
conformance,
for
higher
signal‐to‐noise
ratio
(SNR)
signals,
wider
range
Therefore,
latest
classifications
future
developmental
directions
fabricating
these
explored
this
paper
further
encourage
speedy
advent
In
summary,
perspectives
outlook
developing
discipline
provided.
Microsystems & Nanoengineering,
Journal Year:
2023,
Volume and Issue:
9(1)
Published: Jan. 30, 2023
Abstract
A
bidirectional
in
vitro
brain–computer
interface
(BCI)
directly
connects
isolated
brain
cells
with
the
surrounding
environment,
reads
neural
signals
and
inputs
modulatory
instructions.
As
a
noninvasive
BCI,
it
has
clear
advantages
understanding
exploiting
advanced
function
due
to
simplified
structure
high
controllability
of
ex
vivo
networks.
However,
core
BCIs,
microelectrode
arrays
(MEAs),
urgently
need
improvements
strength
signal
detection,
precision
modulation
biocompatibility.
Notably,
nanomaterial-based
MEAs
cater
all
requirements
by
converging
multilevel
simultaneously
applying
stimuli
at
an
excellent
spatiotemporal
resolution,
as
well
supporting
long-term
cultivation
neurons.
This
is
enabled
advantageous
electrochemical
characteristics
nanomaterials,
such
their
active
atomic
reactivity
outstanding
charge
conduction
efficiency,
improving
performance
MEAs.
Here,
we
review
fabrication
applied
BCIs
from
interdisciplinary
perspective.
We
also
consider
decoding
coding
activity
through
highlight
various
usages
coupled
dissociated
cultures
benefit
future
developments
BCIs.
IEEE Access,
Journal Year:
2023,
Volume and Issue:
11, P. 127271 - 127301
Published: Jan. 1, 2023
Brain-computer
interfaces
(BCIs)
have
undergone
significant
advancements
in
recent
years.
The
integration
of
deep
learning
techniques,
specifically
transformers,
has
shown
promising
development
research
and
application
domains.
Transformers,
which
were
originally
designed
for
natural
language
processing,
now
made
notable
inroads
into
BCIs,
offering
a
unique
self-attention
mechanism
that
adeptly
handles
the
temporal
dynamics
brain
signals.
This
comprehensive
survey
delves
transformers
providing
readers
with
lucid
understanding
their
foundational
principles,
inherent
advantages,
potential
challenges,
diverse
applications.
In
addition
to
discussing
benefits
we
also
address
limitations,
such
as
computational
overhead,
interpretability
concerns,
data-intensive
nature
these
models,
well-rounded
analysis.
Furthermore,
paper
sheds
light
on
myriad
BCI
applications
benefited
from
incorporation
transformers.
These
span
motor
imagery
decoding,
emotion
recognition,
sleep
stage
analysis
novel
ventures
speech
reconstruction.
review
serves
holistic
guide
researchers
practitioners,
panoramic
view
transformative
landscape.
With
inclusion
examples
references,
will
gain
deeper
topic
its
significance
field.
Journal of Innovation & Knowledge,
Journal Year:
2023,
Volume and Issue:
8(4), P. 100446 - 100446
Published: Oct. 1, 2023
This
study
develops
a
conceptual
framework
based
on
the
unified
theory
of
acceptance
and
use
technology,
network
perspective,
metaverse
characteristics.
Data
were
gathered
through
questionnaires
from
209
Chinese
manufacturers,
covariance-based
structural
equation
modelling
was
main
approach
used.
The
results
indicate
that
performance
expectancy,
facilitating
conditions,
establishing
initial
trust
amongst
supply
chain
partners
can
drive
behavioural
intention
with
respect
to
adoption
for
knowledge
sharing
improve
resilience.
In
addition,
sensory
feedback
is
an
important
characteristic
has
critical
influence
behaviour.
Moreover,
it
complementary
partial
mediation
effect
relationship
between
as
well
full
mediating
expectations.
Finally,
moderates
expectancy.
Our
findings
contribute
literature
in
context
IEEE Transactions on Neural Systems and Rehabilitation Engineering,
Journal Year:
2023,
Volume and Issue:
31, P. 2767 - 2777
Published: Jan. 1, 2023
Due
to
the
individual
difference,
EEG
signals
from
other
subjects
(source)
can
hardly
be
used
decode
mental
intentions
of
target
subject.
Although
transfer
learning
methods
have
shown
promising
results,
they
still
suffer
poor
feature
representation
or
neglect
long-range
dependencies.
In
light
these
limitations,
we
propose
Global
Adaptive
Transformer
(GAT),
an
domain
adaptation
method
utilize
source
data
for
cross-subject
enhancement.
Our
uses
parallel
convolution
capture
temporal
and
spatial
features
first.
Then,
employ
a
novel
attention-based
adaptor
that
implicitly
transfers
domain,
emphasizing
global
correlation
features.
We
also
use
discriminator
explicitly
drive
reduction
marginal
distribution
discrepancy
by
against
extractor
adaptor.
Besides,
adaptive
center
loss
is
designed
align
conditional
distribution.
With
aligned
features,
classifier
optimized
signals.
Experiments
on
two
widely
datasets
demonstrate
our
outperforms
state-of-the-art
methods,
primarily
due
effectiveness
These
results
indicate
GAT
has
good
potential
enhance
practicality
BCI.
Cyborg and Bionic Systems,
Journal Year:
2023,
Volume and Issue:
4
Published: Jan. 1, 2023
Functional
near-infrared
spectroscopy
(fNIRS)
is
a
noninvasive
brain
imaging
technique
that
has
gradually
been
applied
in
emotion
recognition
research
due
to
its
advantages
of
high
spatial
resolution,
real
time,
and
convenience.
However,
the
current
on
based
fNIRS
mainly
limited
within-subject,
there
lack
related
work
across
subjects.
Therefore,
this
paper,
we
designed
an
evoking
experiment
with
videos
as
stimuli
constructed
database.
On
basis,
deep
learning
technology
was
introduced
for
first
dual-branch
joint
network
(DBJNet)
constructed,
creating
ability
generalize
model
new
participants.
The
decoding
performance
obtained
by
proposed
shows
can
effectively
distinguish
positive
versus
neutral
negative
emotions
(accuracy
74.8%,
F1
score
72.9%),
2-category
task
distinguishing
89.5%,
88.3%),
91.7%,
91.1%)
proved
powerful
decode
emotions.
Furthermore,
results
ablation
study
structure
demonstrate
convolutional
neural
branch
statistical
achieve
highest
performance.
paper
expected
facilitate
development
affective
brain-computer
interface.