Symmetry,
Journal Year:
2024,
Volume and Issue:
16(9), P. 1180 - 1180
Published: Sept. 9, 2024
This
research
introduces
an
innovative
approach
for
End-to-End
steering
angle
prediction
and
its
control
in
electric
power
(EPS)
systems.
The
methodology
integrates
transfer
learning-based
computer
vision
techniques
with
fuzzy
signatures-enhanced
Fuzzy
signatures
are
unique
multidimensional
data
structures
that
represent
symbolically.
enhancement
enables
the
systems
to
effectively
manage
inherent
imprecision
uncertainty
various
driving
scenarios.
ultimate
goal
of
this
work
is
assess
efficiency
performance
combined
by
highlighting
pivotal
role
field
autonomous
Specifically,
within
EPS
systems,
motor
directly
influences
vehicle’s
path
maneuverability.
A
significant
breakthrough
study
successful
application
extract
respective
visual
without
need
large
datasets.
represents
advancement
reducing
extensive
collection
computational
load
typically
required.
findings
reveal
potential
MSE
score
0.0386
against
0.0476,
outperforming
existing
NVIDIA
model.
result
provides
a
22.63%
better
Mean
Squared
Error
(MSE)
than
NVIDIA’s
proposed
model
also
showed
compared
all
other
three
references
found
literature.
Furthermore,
we
identify
areas
refinement,
such
as
decreasing
loss
simplifying
complex
decision
which
can
symmetry
asymmetry
human
decision-making
study,
therefore,
contributes
significantly
ongoing
evolution
Applied Sciences,
Journal Year:
2022,
Volume and Issue:
12(19), P. 9820 - 9820
Published: Sept. 29, 2022
Deepfake
is
utilized
in
synthetic
media
to
generate
fake
visual
and
audio
content
based
on
a
person’s
existing
media.
The
deepfake
replaces
face
voice
with
make
it
realistic-looking.
Fake
generation
unethical
threat
the
community.
Nowadays,
deepfakes
are
highly
misused
cybercrimes
for
identity
theft,
cyber
extortion,
news,
financial
fraud,
celebrity
obscenity
videos
blackmailing,
many
more.
According
recent
Sensity
report,
over
96%
of
obscene
content,
most
victims
being
from
United
Kingdom,
States,
Canada,
India,
South
Korea.
In
2019,
cybercriminals
generated
chief
executive
officer
call
his
organization
ask
them
transfer
$243,000
their
bank
account.
crimes
rising
daily.
detection
big
challenge
has
high
demand
digital
forensics.
An
advanced
research
approach
must
be
built
protect
blackmailing
by
detecting
content.
primary
aim
our
study
detect
using
an
efficient
framework.
A
novel
predictor
(DFP)
hybrid
VGG16
convolutional
neural
network
architecture
proposed
this
study.
dataset
real
faces
building
techniques.
Xception,
NAS-Net,
Mobile
Net,
learning
techniques
employed
comparison.
DFP
achieved
95%
precision
94%
accuracy
detection.
Our
outperformed
other
state-of-the-art
studies.
helps
cybersecurity
professionals
overcome
deepfake-related
accurately
saving
blackmailing.
CAAI Transactions on Intelligence Technology,
Journal Year:
2024,
Volume and Issue:
9(4), P. 790 - 804
Published: Jan. 4, 2024
Abstract
Detecting
brain
tumours
is
complex
due
to
the
natural
variation
in
their
location,
shape,
and
intensity
images.
While
having
accurate
detection
segmentation
of
would
be
beneficial,
current
methods
still
need
solve
this
problem
despite
numerous
available
approaches.
Precise
analysis
Magnetic
Resonance
Imaging
(MRI)
crucial
for
detecting,
segmenting,
classifying
medical
diagnostics.
a
vital
component
diagnosis,
it
requires
precise,
efficient,
careful,
reliable
image
techniques.
The
authors
developed
Deep
Learning
(DL)
fusion
model
classify
reliably.
models
require
large
amounts
training
data
achieve
good
results,
so
researchers
utilised
augmentation
techniques
increase
dataset
size
models.
VGG16,
ResNet50,
convolutional
deep
belief
networks
extracted
features
from
MRI
Softmax
was
used
as
classifier,
set
supplemented
with
intentionally
created
images
addition
genuine
ones.
two
DL
were
combined
proposed
generate
model,
which
significantly
increased
classification
accuracy.
An
openly
accessible
internet
test
model's
performance,
experimental
results
showed
that
achieved
accuracy
98.98%.
Finally,
compared
existing
methods,
outperformed
them
significantly.
Multimedia Tools and Applications,
Journal Year:
2024,
Volume and Issue:
83(36), P. 84095 - 84120
Published: April 6, 2024
Abstract
This
study
aims
to
improve
the
performance
of
organic
recyclable
waste
through
deep
learning
techniques.
Negative
impacts
on
environmental
and
Social
development
have
been
observed
relating
poor
segregation
schemes.
Separating
from
can
lead
a
faster
more
effective
recycling
process.
Manual
classification
is
time-consuming,
costly,
less
accurate
Automated
in
proposed
work
uses
Improved
Deep
Convolutional
Neural
Network
(DCNN).
The
dataset
2
class
category
with
25077
images
divided
into
70%
training
30%
testing
images.
metrics
used
are
Accuracy,
Missed
Detection
Rate
(MDR),
False
(FDR).
results
DCNN
compared
VGG16,
VGG19,
MobileNetV2,
DenseNet121,
EfficientNetB0
after
transfer
learning.
Experimental
show
that
image
accuracy
model
reaches
93.28%.
Scientific Reports,
Journal Year:
2023,
Volume and Issue:
13(1)
Published: Sept. 5, 2023
A
new
system
based
on
binary
Deep
Learning
(DL)
convolutional
neural
networks
has
been
developed
to
recognize
specific
retinal
abnormality
signs
Optical
Coherence
Tomography
(OCT)
images
useful
for
clinical
practice.
Images
from
the
local
hospital
database
were
retrospectively
selected
2017
2022.
labeled
by
two
specialists
and
included
central
fovea
cross-section
OCTs.
Nine
models
using
Visual
Geometry
Group
16
architecture
distinguish
healthy
versus
abnormal
retinas
identify
eight
different
signs.
total
of
21,500
OCT
screened,
10,770
OCTs
in
study.
The
achieved
high
accuracy
identifying
pathological
signs,
ranging
93
99%.
Accurately
detecting
is
crucial
patient
care.
This
study
aimed
related
pathologies,
aiding
ophthalmologists
diagnosis.
high-accuracy
identified
making
it
a
diagnostic
aid.
Labelled
remain
challenge,
but
our
approach
reduces
dataset
creation
time
shows
DL
models'
potential
improve
ocular
pathology
diagnosis
decision-making.
Computers,
Journal Year:
2024,
Volume and Issue:
13(2), P. 36 - 36
Published: Jan. 28, 2024
In
the
past
ten
years,
rates
of
forest
fires
around
world
have
increased
significantly.
Forest
greatly
affect
ecosystem
by
damaging
vegetation.
are
caused
several
causes,
including
both
human
and
natural
causes.
Human
causes
lie
in
intentional
irregular
burning
operations.
Global
warming
is
a
major
cause
fires.
The
early
detection
reduces
rate
their
spread
to
larger
areas
speeding
up
extinguishing
with
help
equipment
materials
for
detection.
this
research,
an
system
proposed
called
Defender
Fusion.
This
achieved
high
accuracy
long-term
monitoring
site
using
Intermediate
Fusion
VGG16
model
Enhanced
Consumed
Energy-Leach
protocol
(ECP-LEACH).
receives
RGB
(red,
green,
blue)
IR
(infrared)
images
from
drones
detect
System
provides
regulation
energy
consumption
achieves
so
that
detected
early.
was
trained
on
FLAME
2
dataset
obtained
99.86%,
superior
rest
models
track
input
together.
A
simulation
Python
language
demonstrate
real
time
performed.
Scientific Reports,
Journal Year:
2024,
Volume and Issue:
14(1)
Published: June 14, 2024
Abstract
Advances
in
computer
image
recognition
have
significantly
impacted
many
industries,
including
healthcare,
security
and
autonomous
systems.
This
paper
aims
to
explore
the
potential
of
improving
algorithms
enhance
recognition.
Specifically,
we
will
focus
on
regression
methods
as
a
means
improve
accuracy
efficiency
identifying
images.
In
this
study,
analyze
various
techniques
their
applications
recognition,
well
resulting
performance
improvements
through
detailed
examples
data
analysis.
deals
with
problems
related
visual
processing
outdoor
unstructured
environment.
Finally,
heterogeneous
patterns
are
converted
into
same
pattern,
extracted
from
fusion
features
modes.
The
simulation
results
show
that
perception
ability
complex
environment
improved.
Journal of Population Therapeutics and Clinical Pharmacology,
Journal Year:
2022,
Volume and Issue:
28(2)
Published: Jan. 1, 2022
Aim:
This
study
aims
at
developing
an
automatic
medical
image
analysis
and
detection
for
accurate
classification
of
brain
tumors
from
MRI
dataset.The
implemented
our
novel
MIDNet18
CNN
architecture
in
comparison
with
the
VGG16
classifying
normal
images
tumor
images.
Materials
methods:The
MIDNet-18
comprises
14
convolutional
layers,
7
pooling
4
dense
layers
1
layer.The
dataset
used
this
has
two
classes:
Normal
Brain
MR
Images
Tumor
Images.This
binary
consists
2918
as
training
set,
1458
validation
set
212
test
set.Independent
sample
size
calculated
was
each
group,
keeping
GPower
80%.Result:
From
experimental
results,
proposed
model
obtained
98.7%
accuracy.Whereas,
accuracy
50%.Hence,
performance
achieved
is
better
than
VGG16.Conclusion:
The
proved
to
be
statistically
significant
p
value
<0.001
(Independent
t-test)
existing
VGG16.Brain
tumour
magnetic
resonance
using
a
CNN-based
e114
Diagnostics,
Journal Year:
2022,
Volume and Issue:
12(11), P. 2700 - 2700
Published: Nov. 5, 2022
Background:
Hospitals
face
a
significant
problem
meeting
patients’
medical
needs
during
epidemics,
especially
when
the
number
of
patients
increases
rapidly,
as
seen
recent
COVID-19
pandemic.
This
study
designs
treatment
recommender
system
(RS)
for
efficient
management
human
capital
and
resources
such
doctors,
medicines,
in
hospitals.
We
hypothesize
that
deep
learning
framework,
combined
with
search
paradigms
an
image
can
make
RS
very
efficient.
Methodology:
uses
Convolutional
neural
network
(CNN)
model
feature
extraction
images
discovers
most
similar
patients.
The
input
queries
from
hospital
database
chest
X-ray
images.
It
similarity
metric
computation
Results:
methodology
recommends
associated
to
being
admitted
hospital.
performance
proposed
is
verified
five
different
CNN
models
four
measures.
ResNet-50
Maxwell–Boltzmann
found
be
proper
framework
recommendation
mean
average
precision
more
than
0.90
threshold
similarities
range
0.7
0.9
highest
cosine
0.95.
Conclusions:
Overall,
proven
tool
peak
period
pandemics
adopted
clinical
settings.
Sensors,
Journal Year:
2024,
Volume and Issue:
24(2), P. 549 - 549
Published: Jan. 15, 2024
In
virtual
reality,
augmented
or
animation,
the
goal
is
to
represent
movement
of
deformable
objects
in
real
world
as
similar
possible
world.
Therefore,
this
paper
proposed
a
method
automatically
extract
cloth
stiffness
values
from
video
scenes,
and
then
they
are
applied
material
properties
for
simulation.
We
propose
use
deep
learning
(DL)
models
tackle
issue.
The
Transformer
model,
combination
with
pre-trained
architectures
like
DenseNet121,
ResNet50,
VGG16,
VGG19,
stands
leading
choice
classification
tasks.
Position-Based
Dynamics
(PBD)
computational
framework
widely
used
computer
graphics
physics-based
simulations
entities,
notably
cloth.
It
provides
an
inherently
stable
efficient
way
replicate
complex
dynamic
behaviors,
such
folding,
stretching,
collision
interactions.
Our
model
characterizes
based
on
softness-to-stiffness
labels
accurately
categorizes
videos
using
labeling.
dataset
utilized
research
derived
meticulously
designed
stiffness-oriented
experimental
assessment
encompasses
extensive
3840
videos,
contributing
multi-label
dataset.
results
demonstrate
that
our
achieves
impressive
average
accuracy
99.50%.
These
accuracies
significantly
outperform
alternative
RNN,
GRU,
LSTM,
Transformer.