Frontiers in Computer Science,
Journal Year:
2024,
Volume and Issue:
6
Published: Dec. 18, 2024
Over
the
last
few
years,
wearable
devices
have
witnessed
immense
changes
in
terms
of
sensing
capabilities.
Wearable
devices,
with
their
ever-increasing
number
sensors,
been
instrumental
monitoring
human
activities,
health-related
indicators,
and
overall
wellness.
One
area
that
has
rapidly
adopted
is
mental
health
well-being
area,
which
covers
problems
such
as
psychological
distress.
The
continuous
capability
allows
detection
stress,
thus
enabling
early
problems.
In
this
paper,
we
present
a
systematic
review
different
types
sensors
used
by
researchers
to
detect
monitor
stress
individuals.
We
identify
detail
tasks
data
collection,
pre-processing,
features
computation,
training
model
explored
research
works.
each
step
involved
monitoring.
also
discuss
scope
opportunities
for
further
deals
management
once
it
detected.
International Journal of Human-Computer Interaction,
Journal Year:
2022,
Volume and Issue:
40(5), P. 1174 - 1194
Published: Oct. 27, 2022
Anxiety
and
stress
are
common
emotional
responses
for
human
beings,
but
their
chronic
manifestation
can
lead
to
physical
psychological
illnesses.
The
advancement
of
sensing
technologies,
such
as
Internet
Things,
has
contributed
the
understanding
assisting
events
related
anxiety
stress.
However,
main
challenge
is
knowing
which
approaches
be
used
better
monitor
these
emotions
assist
people.
Based
on
a
systematic
literature
review,
this
work
analyzed
studies
both
determine
how
data
collected,
levels.
Two
taxonomies
synthesize
techniques
mapped.
results
indicated
more
emphasis
studying
than
focus
detecting
levels
user.
Among
collect
data,
62.5%
physiological
like
heart
analysis
techniques,
48%
Decision
Trees.
International Journal for Research in Applied Science and Engineering Technology,
Journal Year:
2024,
Volume and Issue:
12(1), P. 175 - 182
Published: Jan. 8, 2024
Abstract:
The
human
face
is
an
essential
aspect
of
individual's
body.
It
plays
a
crucial
function
in
detecting
and
identifying
emotions
since
the
where
person
exhibits
all
their
fundamental
emotions.
Through
emotions,
we
solve
different
types
problems.
Like
healthcare,
security,
business,
education.
purpose
this
paper
to
present
detection
depression
mental
health
sector.
Depression
or
stress
faced
by
most
population
over
world
for
many
reasons
at
stages
life.
As
current
life
busy
cycle,
gets
depressed
stressed
daily
may
be
found
educational
activities,
competitive
challenging
tasks,
employment
pressure,
family
consequences,
sorts
connection
management,
issues,
old
age,
other
situations.
Artificial
intelligence
deep
learning
approaches
are
suggested
study
assess
depression.
This
research
useful
analyzing
every
employer
psychologist
when
counselling
patients.
Here,
propose
convolutional
neural
network
(DCNN)
model.
model
can
classify
two
facial
Which
based
on
positive
negative
trained
tested
using
FER-2013
dataset.
data
set
used
experimentation
FER
(Facial
Expression
Recognition)
dataset
available
KAGGLE
repository.
implementation
environment
includes
Keras,
TensorFlow,
OpenCV
Python
packages.
result
emotion
accuracy
between
training
test
phases.
average
achieved
was
77%.
The
accessibility
of
technology
and
the
IOT
(Internet
Things)
available
at
our
fingertips,
twenty-four
hours
per
day,
can
quickly
become
a
technological
overload.
For
many
reasons,
this
be
problematic
for
people
working
in
front
computers,
whether
home
or
an
office
setting.
Our
"first
responders"
cybersecurity,
analyst
that
works
consistently
multiple
computer
screens
mobile
devices
to
protect
data
from
various
forms
attacks
are
higher
risk.
Unmanaged
stress
lead
poor
job
performance
such
as
health-related
absences,
missed
warning
signals
on
possible
cyberattacks,
overall
lack
enthusiasm
work
needed
done.
Brain Informatics,
Journal Year:
2024,
Volume and Issue:
11(1)
Published: Dec. 1, 2024
Abstract
The
mental
health
of
students
in
higher
education
has
been
a
growing
concern,
with
increasing
evidence
pointing
to
heightened
risks
developing
condition.
This
research
aims
explore
whether
day-long
heart
rate
sequences,
collected
continuously
through
Apple
Watch
an
open
environment
without
restrictions
on
daily
routines,
can
effectively
indicate
states,
particularly
stress
for
university
students.
While
(HR)
is
commonly
used
monitor
physical
activity
or
responses
isolated
stimuli
controlled
setting,
such
as
stress-inducing
tests,
this
study
addresses
the
gap
by
analyzing
fluctuations
throughout
day,
examining
their
potential
gauge
overall
levels
more
comprehensive
and
real-world
context.
data
was
at
public
UK.
Using
signal
processing,
both
original
sequences
representations,
via
Fourier
transformation
wavelet
analysis,
have
modeled
using
advanced
machine
learning
algorithms.
Having
achieving
statistically
significant
results
over
baseline,
provides
understanding
how
alone
may
be
characterize
states
processing
learning,
system
poised
further
testing
ongoing
collection
continues.
Frontiers in Computer Science,
Journal Year:
2024,
Volume and Issue:
6
Published: Dec. 18, 2024
Over
the
last
few
years,
wearable
devices
have
witnessed
immense
changes
in
terms
of
sensing
capabilities.
Wearable
devices,
with
their
ever-increasing
number
sensors,
been
instrumental
monitoring
human
activities,
health-related
indicators,
and
overall
wellness.
One
area
that
has
rapidly
adopted
is
mental
health
well-being
area,
which
covers
problems
such
as
psychological
distress.
The
continuous
capability
allows
detection
stress,
thus
enabling
early
problems.
In
this
paper,
we
present
a
systematic
review
different
types
sensors
used
by
researchers
to
detect
monitor
stress
individuals.
We
identify
detail
tasks
data
collection,
pre-processing,
features
computation,
training
model
explored
research
works.
each
step
involved
monitoring.
also
discuss
scope
opportunities
for
further
deals
management
once
it
detected.