Acta Informatica Pragensia,
Год журнала:
2024,
Номер
13(3), С. 460 - 489
Опубликована: Авг. 22, 2024
The
integration
of
generative
artificial
intelligence
(AI)
into
adaptive
and
personalized
learning
represents
a
transformative
shift
in
the
educational
landscape.This
research
paper
investigates
impact
incorporating
AI
environments,
with
focus
on
tracing
evolution
from
conventional
methods
to
identifying
its
diverse
applications
education.The
study
begins
comprehensive
review
models
frameworks.A
framework
selection
criteria
is
established
curate
case
studies
showcasing
education.These
are
analysed
elucidate
benefits
challenges
associated
integrating
frameworks.Through
an
in-depth
analysis
selected
studies,
reveals
tangible
derived
integration,
including
increased
student
engagement,
improved
test
scores
accelerated
skill
development.Ethical,
technical
pedagogical
related
identified,
emphasizing
need
for
careful
consideration
collaborative
efforts
between
educators
technologists.The
findings
underscore
potential
revolutionizing
education.By
addressing
ethical
concerns,
navigating
embracing
human-centric
approaches,
technologists
can
collaboratively
harness
power
create
innovative
inclusive
environments.Additionally,
highlights
transition
Education
4.0
5.0,
importance
social-emotional
human
connection
alongside
personalization
shaping
future
education.
Internet of Things and Cyber-Physical Systems,
Год журнала:
2023,
Номер
4, С. 99 - 109
Опубликована: Сен. 30, 2023
Natural
disasters
(NDs)
have
always
been
a
major
threat
to
human
lives
and
infrastructure,
causing
immense
damage
loss.
In
recent
years,
the
increasing
frequency
severity
of
natural
highlighted
need
for
more
effective
efficient
disaster
management
strategies.
this
context,
use
technology
has
emerged
as
promising
solution.
survey
paper,
we
explore
employment
technologies
in
order
relieve
impacts
various
disasters.
We
provide
an
overview
how
different
such
Remote
Sensing,
Radars
Satellite
Imaging,
internet-of-things
(IoT),
Smartphones,
Social
Media
can
be
utilized
NDs.
By
utilizing
these
technologies,
predict,
respond,
recover
from
NDs
effectively,
potentially
saving
minimizing
infrastructure
damage.
The
paper
also
highlights
potential
benefits,
limitations,
challenges
associated
with
implementation
purposes.
While
significantly
improve
NDM,
there
are
that
addressed,
cost
specialized
knowledge
skills.
Overall,
provides
comprehensive
managing
sheds
light
on
important
role
play
NDM.
exploring
applications
aims
contribute
development
sustainable
Journal of Imaging,
Год журнала:
2023,
Номер
9(10), С. 207 - 207
Опубликована: Сен. 30, 2023
The
growth
in
the
volume
of
data
generated,
consumed,
and
stored,
which
is
estimated
to
exceed
180
zettabytes
2025,
represents
a
major
challenge
both
for
organizations
society
general.
In
addition
being
larger,
datasets
are
increasingly
complex,
bringing
new
theoretical
computational
challenges.
Alongside
this
evolution,
science
tools
have
exploded
popularity
over
past
two
decades
due
their
myriad
applications
when
dealing
with
complex
data,
high
accuracy,
flexible
customization,
excellent
adaptability.
When
it
comes
images,
analysis
presents
additional
challenges
because
as
quality
an
image
increases,
desirable,
so
does
be
processed.
Although
classic
machine
learning
(ML)
techniques
still
widely
used
different
research
fields
industries,
there
has
been
great
interest
from
scientific
community
development
artificial
intelligence
(AI)
techniques.
resurgence
neural
networks
boosted
remarkable
advances
areas
such
understanding
processing
images.
study,
we
conducted
comprehensive
survey
regarding
AI
design
optimization
solutions
proposed
deal
Despite
good
results
that
achieved,
many
face
field
study.
work,
discuss
main
more
recent
improvements,
applications,
developments
targeting
propose
future
directions
constant
fast
evolution.
Electronics,
Год журнала:
2024,
Номер
13(2), С. 416 - 416
Опубликована: Янв. 19, 2024
The
concept
of
learning
has
multiple
interpretations,
ranging
from
acquiring
knowledge
or
skills
to
constructing
meaning
and
social
development.
Machine
Learning
(ML)
is
considered
a
branch
Artificial
Intelligence
(AI)
develops
algorithms
that
can
learn
data
generalize
their
judgment
new
observations
by
exploiting
primarily
statistical
methods.
millennium
seen
the
proliferation
Neural
Networks
(ANNs),
formalism
able
reach
extraordinary
achievements
in
complex
problems
such
as
computer
vision
natural
language
recognition.
In
particular,
designers
claim
this
strong
resemblance
way
biological
neurons
operate.
This
work
argues
although
ML
mathematical/statistical
foundation,
it
cannot
be
strictly
regarded
science,
at
least
methodological
perspective.
main
reason
have
notable
prediction
power
they
necessarily
provide
causal
explanation
about
achieved
predictions.
For
example,
an
ANN
could
trained
on
large
dataset
consumer
financial
information
predict
creditworthiness.
model
takes
into
account
various
factors
like
income,
credit
history,
debt,
spending
patterns,
more.
It
then
outputs
score
decision
approval.
However,
multi-layered
nature
neural
network
makes
almost
impossible
understand
which
specific
combinations
using
arrive
its
decision.
lack
transparency
problematic,
especially
if
denies
applicant
wants
know
reasons
for
denial.
model’s
“black
box”
means
clear
breakdown
how
weighed
decision-making
process.
Secondly,
rejects
belief
machine
simply
data,
either
supervised
unsupervised
mode,
just
applying
process
much
more
complex,
requires
full
comprehension
learned
ability
skill.
sense,
further
advancements,
reinforcement
imitation
denote
encouraging
similarities
similar
cognitive
used
human
learning.
IEEE Access,
Год журнала:
2024,
Номер
12, С. 41180 - 41218
Опубликована: Янв. 1, 2024
In
today's
digital
age,
Convolutional
Neural
Networks
(CNNs),
a
subset
of
Deep
Learning
(DL),
are
widely
used
for
various
computer
vision
tasks
such
as
image
classification,
object
detection,
and
segmentation.
There
numerous
types
CNNs
designed
to
meet
specific
needs
requirements,
including
1D,
2D,
3D
CNNs,
well
dilated,
grouped,
attention,
depthwise
convolutions,
NAS,
among
others.
Each
type
CNN
has
its
unique
structure
characteristics,
making
it
suitable
tasks.
It's
crucial
gain
thorough
understanding
perform
comparative
analysis
these
different
understand
their
strengths
weaknesses.
Furthermore,
studying
the
performance,
limitations,
practical
applications
each
can
aid
in
development
new
improved
architectures
future.
We
also
dive
into
platforms
frameworks
that
researchers
utilize
research
or
from
perspectives.
Additionally,
we
explore
main
fields
like
6D
vision,
generative
models,
meta-learning.
This
survey
paper
provides
comprehensive
examination
comparison
architectures,
highlighting
architectural
differences
emphasizing
respective
advantages,
disadvantages,
applications,
challenges,
future
trends.
Artificial Intelligence Review,
Год журнала:
2024,
Номер
57(10)
Опубликована: Авг. 17, 2024
Abstract
This
paper
presents
a
comprehensive
review
of
the
use
Artificial
Intelligence
(AI)
in
Systematic
Literature
Reviews
(SLRs).
A
SLR
is
rigorous
and
organised
methodology
that
assesses
integrates
prior
research
on
given
topic.
Numerous
tools
have
been
developed
to
assist
partially
automate
process.
The
increasing
role
AI
this
field
shows
great
potential
providing
more
effective
support
for
researchers,
moving
towards
semi-automatic
creation
literature
reviews.
Our
study
focuses
how
techniques
are
applied
semi-automation
SLRs,
specifically
screening
extraction
phases.
We
examine
21
leading
using
framework
combines
23
traditional
features
with
11
features.
also
analyse
recent
leverage
large
language
models
searching
assisting
academic
writing.
Finally,
discusses
current
trends
field,
outlines
key
challenges,
suggests
directions
future
research.
highlight
three
primary
challenges:
integrating
advanced
solutions,
such
as
knowledge
graphs,
improving
usability,
developing
standardised
evaluation
framework.
propose
best
practices
ensure
robust
evaluations
terms
performance,
transparency.
Overall,
offers
detailed
overview
AI-enhanced
researchers
practitioners,
foundation
development
next-generation
solutions
field.
Sensors,
Год журнала:
2024,
Номер
24(3), С. 877 - 877
Опубликована: Янв. 29, 2024
The
main
purpose
of
this
paper
is
to
provide
information
on
how
create
a
convolutional
neural
network
(CNN)
for
extracting
features
from
EEG
signals.
Our
task
was
understand
the
primary
aspects
creating
and
fine-tuning
CNNs
various
application
scenarios.
We
considered
characteristics
signals,
coupled
with
an
exploration
signal
processing
data
preparation
techniques.
These
techniques
include
noise
reduction,
filtering,
encoding,
decoding,
dimension
among
others.
In
addition,
we
conduct
in-depth
analysis
well-known
CNN
architectures,
categorizing
them
into
four
distinct
groups:
standard
implementation,
recurrent
convolutional,
decoder
architecture,
combined
architecture.
This
further
offers
comprehensive
evaluation
these
covering
accuracy
metrics,
hyperparameters,
appendix
that
contains
table
outlining
parameters
commonly
used
architectures
feature
extraction
Solar,
Год журнала:
2024,
Номер
4(3), С. 351 - 386
Опубликована: Июнь 26, 2024
This
review
presents
an
investigation
into
the
incremental
advancements
in
YOLO
(You
Only
Look
Once)
architecture
and
its
derivatives,
with
a
specific
focus
on
their
pivotal
contributions
to
improving
quality
inspection
within
photovoltaic
(PV)
domain.
YOLO’s
single-stage
approach
object
detection
has
made
it
preferred
option
due
efficiency.
The
unearths
key
drivers
of
success
each
variant,
from
path
aggregation
networks
generalised
efficient
layer
architectures
programmable
gradient
information,
presented
latest
YOLOv10,
released
May
2024.
Looking
ahead,
predicts
significant
trend
future
research,
indicating
shift
toward
refining
variants
tackle
wider
array
PV
fault
scenarios.
While
current
discussions
mainly
centre
micro-crack
detection,
there
is
acknowledged
opportunity
for
expansion.
Researchers
are
expected
delve
deeper
attention
mechanisms
architecture,
recognising
potential
greatly
enhance
capabilities,
particularly
subtle
intricate
faults.
IEEE Access,
Год журнала:
2024,
Номер
12, С. 94250 - 94295
Опубликована: Янв. 1, 2024
Quality
inspection
and
defect
detection
remain
critical
challenges
across
diverse
industrial
applications.
Driven
by
advancements
in
Deep
Learning,
Convolutional
Neural
Networks
(CNNs)
have
revolutionized
Computer
Vision,
enabling
breakthroughs
image
analysis
tasks
like
classification
object
detection.
CNNs'
feature
learning
capabilities
made
through
Machine
Vision
one
of
their
most
impactful
This
article
aims
to
showcase
practical
applications
CNN
models
for
surface
various
scenarios,
from
pallet
racks
display
screens.
The
review
explores
methodologies
suitable
hardware
platforms
deploying
CNN-based
architectures.
growing
Industry
4.0
adoption
necessitates
enhancing
quality
processes.
main
results
demonstrate
efficacy
automating
detection,
achieving
high
accuracy
real-time
performance
different
surfaces.
However,
limited
datasets,
computational
complexity,
domain-specific
nuances
require
further
research.
Overall,
this
acknowledges
potential
as
a
transformative
technology
vision
applications,
with
implications
ranging
control
enhancement
cost
reductions
process
optimization.
IEEE Access,
Год журнала:
2024,
Номер
12, С. 96893 - 96910
Опубликована: Янв. 1, 2024
Deep
learning
(DL),
a
branch
of
machine
(ML),
is
the
core
technology
in
today's
technological
advancements
and
innovations.
learning-based
approaches
are
state-of-the-art
methods
used
to
analyse
detect
complex
patterns
large
datasets,
such
as
credit
card
transactions.
However,
most
fraud
models
literature
based
on
traditional
ML
algorithms,
recently,
there
has
been
rise
applications
deep
techniques.
This
study
reviews
recent
DL-based
presents
concise
description
performance
comparison
widely
DL
techniques,
including
convolutional
neural
network
(CNN),
simple
recurrent
(RNN),
long
short-term
memory
(LSTM),
gated
unit
(GRU).
Additionally,
an
attempt
made
discuss
suitable
metrics,
common
challenges
encountered
when
training
using
architectures
potential
solutions,
which
lacking
previous
studies
would
benefit
researchers
practitioners.
Meanwhile,
experimental
results
analysis
real-world
dataset
indicate
robustness
detection.
AgriEngineering,
Год журнала:
2024,
Номер
6(1), С. 302 - 317
Опубликована: Фев. 4, 2024
Early
detection
of
plant
leaf
diseases
is
a
major
necessity
for
controlling
the
spread
infections
and
enhancing
quality
food
crops.
Recently,
disease
based
on
deep
learning
approaches
has
achieved
better
performance
than
current
state-of-the-art
methods.
Hence,
this
paper
utilized
convolutional
neural
network
(CNN)
to
improve
rice
efficiency.
We
present
modified
YOLOv8,
which
replaces
original
Box
Loss
function
by
our
proposed
combination
EIoU
loss
α-IoU
in
order
system.
A
two-stage
approach
achieve
high
accuracy
identification
AI
(artificial
intelligence)
algorithms.
In
first
stage,
images
field
are
automatically
collected.
Afterward,
these
image
data
separated
into
blast
leaf,
folder,
brown
spot
sets,
respectively.
second
after
training
YOLOv8
model
dataset,
trained
deployed
IoT
devices
detect
identify
diseases.
assess
approach,
comparative
study
between
method
methods
using
YOLOv7
YOLOv5
conducted.
The
experimental
results
demonstrate
that
research
reached
up
89.9%
dataset
3175
with
2608
training,
326
validation,
241
testing.
It
demonstrates
achieves
higher
rate
existing
approaches.