Biomedical Engineering Applications Basis and Communications,
Journal Year:
2024,
Volume and Issue:
36(05)
Published: July 17, 2024
Facial
emotion
recognition
(FER)
is
a
dominant
research
area
that
captures
the
biological
facial
features
and
matches
data
with
existing
databases
to
analyze
individual’s
emotional
state.
Numerous
techniques
have
been
formulated
for
attaining
effective
FER.
However,
occlusions,
different
head
positions,
deformed
faces,
motion
blur
under
unrestricted
settings,
complicated
backgrounds
make
it
complex
images.
In
this
paper,
formicary
swarm
optimization-based
deep
convolutional
neural
network
(FSO-opt
DCNN)
model
utilized
detection
which
JAFFE
RAVDESS
expression
datasets
are
used.
DCNNs
proficient
built-in
feature
extraction
strategies
from
images
map
various
expressions
corresponding
states
adopted
addition,
intensity,
directional,
edge
patterns
as
well
correlation
extracted
utilizing
hybrid
textual
pattern,
RESNET
101
VGG
16-based
modules
assist
DCNN
attain
informative
high-resolution
Further,
optimization
(FSO)
incorporated
effectively
tunes
capture
relationships
between
learned
excel
FER
capability.
Evaluating
metrics,
face
using
dataset
achieves
notable
efficiencies
during
training
percentage
(TP)
of
90%,
values
97.51%,
95.48%,
99.55%,
97.48%,
96.47%,
minimum
loss
2.49%.
Simultaneously,
demonstrates
robust
metric
96.75%,
98.49%,
95.01%,
96.72%,
97.59%,
3.25%.
Finally,
obtained
results
reveal
efficacy
FSO-opt
DCNN,
particularly
in
tasks,
outperforms
models
across
datasets,
showcasing
its
versatility
potential
analysis
applications.
Energies,
Journal Year:
2024,
Volume and Issue:
17(7), P. 1562 - 1562
Published: March 25, 2024
Challenges
in
the
operation
of
power
systems
arise
from
several
factors
such
as
interconnection
large
systems,
integration
new
energy
sources
and
increase
electrical
demand.
These
challenges
have
required
development
fast
reliable
tools
for
evaluating
systems.
The
load
margin
(LM)
is
an
important
index
stability
but
traditional
methods
determining
LM
consist
solving
a
set
differential-algebraic
equations
whose
information
may
not
always
be
available.
Data-Driven
techniques
Artificial
Neural
Networks
were
developed
to
calculate
monitor
LM,
present
unsatisfactory
performance
due
difficulty
generalization.
Therefore,
this
article
proposes
design
method
Physics-Informed
parameters
will
tuned
by
bio-inspired
algorithms
optimization
model.
Physical
knowledge
regarding
incorporated
into
PINN
training
process.
Case
studies
carried
out
discussed
IEEE
68-bus
system
considering
N-1
criterion
disconnection
transmission
lines.
results
obtained
proposed
showed
lower
error
values
Root
Mean
Square
Error
(RMSE),
(MSE)
Absolute
Percentage
(MAPE)
indices
than
Levenberg-Marquard
method.
Energies,
Journal Year:
2025,
Volume and Issue:
18(5), P. 1245 - 1245
Published: March 4, 2025
This
paper
presents
the
optimization
sizing
of
a
battery
energy
storage
system
for
residential
use
from
load
forecasting
using
AI.
The
solar
rooftop
panel
installation
and
charging
systems
electric
vehicles
are
connected
to
low-voltage
electrical
Metropolitan
Electricity
Authority
(MEA).
daily
electricity
demand
future
used
long
short-term
memory
(LSTM)
technique
in
order
analyze
appropriate
size
(BESS)
residences.
capacity
is
5.5
kWp,
which
produces
an
average
28.78
kWh/day.
minimum
actual
month
67.04
kWh,
comprising
base
vehicles,
can
determine
as
21.03
kWh.
For
this
research,
will
be
presented
find
BESS
by
considering
over
month,
equal
102.67
17.84
When
comparing
values
with
forecast,
it
significantly
reduce
cost
BESS.
Electronics,
Journal Year:
2024,
Volume and Issue:
13(16), P. 3217 - 3217
Published: Aug. 14, 2024
Facial
expression
recognition
(FER)
utilizes
artificial
intelligence
for
the
detection
and
analysis
of
human
faces,
with
significant
applications
across
various
scenarios.
Our
objective
is
to
deploy
facial
emotion
network
on
mobile
devices
extend
its
application
diverse
areas,
including
classroom
effect
monitoring,
human–computer
interaction,
specialized
training
athletes
(such
as
in
figure
skating
rhythmic
gymnastics),
actor
training.
Recent
studies
have
employed
advanced
deep
learning
models
address
this
task,
though
these
often
encounter
challenges
like
subpar
performance
an
excessive
number
parameters
that
do
not
align
requirements
FER
embedded
devices.
To
tackle
issue,
we
devised
a
lightweight
structure
named
RS-Xception,
which
straightforward
yet
highly
effective.
Drawing
strengths
ResNet
SENet,
integrates
elements
from
Xception
architecture.
been
trained
FER2013
datasets
demonstrate
superior
efficiency
compared
conventional
models.
Furthermore,
assessed
model’s
CK+,
FER2013,
Bigfer2013
datasets,
achieving
accuracy
rates
97.13%,
69.02%,
72.06%,
respectively.
Evaluation
complex
RAF-DB
dataset
yielded
rate
82.98%.
The
incorporation
transfer
notably
enhanced
accuracy,
75.38%
dataset,
underscoring
significance
our
research.
In
conclusion,
proposed
model
proves
be
viable
solution
precise
sentiment
estimation.
future,
may
deployed
research
purposes.
Journal of Robotics and Control (JRC),
Journal Year:
2024,
Volume and Issue:
5(1), P. 263 - 270
Published: Feb. 1, 2024
Recognizing
the
fundamental
role
of
learners'
emotions
in
educational
process,
this
study
aims
to
enhance
experiences
by
incorporating
emotional
intelligence
(EI)
into
teacher
robots
through
artificial
and
image
processing
technologies.
The
primary
hurdle
addressed
is
inadequacy
conventional
methods,
particularly
convolutional
neural
networks
(CNNs)
with
pooling
layers,
imbuing
intelligence.
To
surmount
challenge,
research
proposes
an
innovative
solution—introducing
a
novel
learning
focal
point
(LFP)
layer
replace
resulting
significant
enhancements
accuracy
other
vital
parameters.
distinctive
contribution
lies
creation
application
LFP
algorithm,
providing
approach
emotion
classification
for
robots.
results
showcase
algorithm's
superior
performance
compared
traditional
CNN
approaches.
In
conclusion,
highlights
transformative
impact
algorithm
on
models
and,
consequently,
emotionally
intelligent
This
contributes
valuable
insights
convergence
education,
implications
future
advancements
field.
Jurnal Riset Informatika,
Journal Year:
2024,
Volume and Issue:
6(2), P. 119 - 130
Published: March 11, 2024
This
study
addresses
the
problem
of
plant
diseases
and
difficulty
detecting
them,
it
presents
a
unique
technique
for
automatic
detection
tea
leaf
by
combining
neural
networks
optimization
techniques.
Our
research
uses
curated
database
photographs
that
includes
healthy
diseased
specimens.
The
network
(CNN)
is
trained
fine-tuned
using
algorithms.
To
increase
disease
identification
accuracy,
we
used
hybrid
novel
algorithm
called
(POA-MA)
which
Pelican
Optimization
Algorithm
(POA),
Mayfly
(MA)
feature
selection,
followed
classification
with
Support
Vector
Machine
(SVM).
suggested
mechanism
performance
evaluated
MSE,
F-score,
recall,
sensitivity
measures.
CNN-POAMA
model
yielded
94.5%,
0.035,
0.91,
0.93,
0.92,
respectively.
advances
precision
agriculture
establishing
strong
framework
automated
detection,
allowing
early
intervention,
eventually
enhancing
crop
health.
International Journal of Power Electronics and Drive Systems/International Journal of Electrical and Computer Engineering,
Journal Year:
2024,
Volume and Issue:
14(4), P. 4046 - 4046
Published: June 4, 2024
Facial
expression
recognition
has
gathered
substantial
attention
in
computer
vision
applications,
with
the
need
for
robust
and
accurate
models
that
can
decipher
human
emotions
from
facial
images.
Performance
analysis
of
a
novel
hybrid
model
combines
strengths
residual
network
(ResNet)
dense
(DenseNet)
architectures
after
applying
preprocessing
recognition.
The
proposed
capitalizes
on
complementary
characteristics
ResNet's
DenseNet's
densely
connected
blocks
to
enhance
model's
capacity
extract
discriminative
features
This
research
evaluates
performance
conducts
comprehensive
benchmark
against
established
convolution
neural
(CNN)
models.
encompasses
key
aspects
performance,
including
classification
accuracy,
adaptability
LFW
dataset
expressions
such
as
Anger,
Fear,
Happy,
Disgust,
Sad,
Surprise,
along
Neutral.
observes
is
more
efficient
computationally
than
existing
consistently.
eliminates
information
perspective
further
research.
Electronics,
Journal Year:
2024,
Volume and Issue:
13(16), P. 3149 - 3149
Published: Aug. 9, 2024
Convolutional
neural
networks
have
made
significant
progress
in
human
Facial
Expression
Recognition
(FER).
However,
they
still
face
challenges
effectively
focusing
on
and
extracting
facial
features.
Recent
research
has
turned
to
attention
mechanisms
address
this
issue,
primarily
local
feature
details
rather
than
overall
Building
upon
the
classical
Block
Attention
Module
(CBAM),
paper
introduces
a
novel
Parallel
Hybrid
Model,
termed
PH-CBAM.
This
model
employs
split-channel
enhance
extraction
of
key
features
while
maintaining
minimal
parameter
count.
The
proposed
enables
network
emphasize
relevant
during
expression
classification.
Heatmap
analysis
demonstrates
that
PH-CBAM
highlights
information.
By
employing
multimodal
approach
initial
image
phase,
structure
captures
various
algorithm
integrates
residual
MISH
activation
function
create
multi-feature
network,
addressing
issues
such
as
gradient
vanishing
negative
zero
point
transmission.
enhances
retention
valuable
information
facilitates
flow
between
target
images.
Evaluation
benchmark
datasets
FER2013,
CK+,
Bigfer2013
yielded
accuracies
68.82%,
97.13%,
72.31%,
respectively.
Comparison
with
mainstream
models
FER2013
CK+
efficiency
model,
comparable
accuracy
current
advanced
models,
showcasing
its
effectiveness
emotion
detection.