YOLOv10 to Its Genesis: A Decadal and Comprehensive Review of The You Only Look Once Series
Опубликована: Июнь 20, 2024
This
review
systematically
examines
the
progression
of
You
Only
Look
Once
(YOLO)
object
detection
algorithms
from
YOLOv1
to
recently
unveiled
YOLOv10.
Employing
a
reverse
chronological
analysis,
this
study
advancements
introduced
by
YOLO
algorithms,
beginning
with
YOLOv10
and
progressing
through
YOLOv9,
YOLOv8,
subsequent
versions
explore
each
version's
contributions
enhancing
speed,
accuracy,
computational
efficiency
in
real-time
detection.
The
highlights
transformative
impact
across
five
critical
application
areas:
automotive
safety,
healthcare,
industrial
manufacturing,
surveillance,
agriculture.
By
detailing
incremental
technological
that
iteration
brought,
not
only
chronicles
evolution
but
also
discusses
challenges
limitations
observed
earlier
versions.
signifies
path
towards
integrating
multimodal,
context-aware,
General
Artificial
Intelligence
(AGI)
systems
for
next
decade,
promising
significant
implications
future
developments
AI-driven
applications.
Язык: Английский
YOLOGX: an improved forest fire detection algorithm based on YOLOv8
Frontiers in Environmental Science,
Год журнала:
2025,
Номер
12
Опубликована: Янв. 7, 2025
To
tackle
issues,
including
environmental
sensitivity,
inadequate
fire
source
recognition,
and
inefficient
feature
extraction
in
existing
forest
detection
algorithms,
we
developed
a
high-precision
algorithm,
YOLOGX.
YOLOGX
integrates
three
pivotal
technologies:
First,
the
GD
mechanism
fuses
extracts
features
from
multi-scale
information,
significantly
enhancing
capability
for
targets
of
varying
sizes.
Second,
SE-ResNeXt
module
is
integrated
into
head,
optimizing
capability,
reducing
number
parameters,
improving
accuracy
efficiency.
Finally,
proposed
Focal-SIoU
loss
function
replaces
original
function,
effectively
directional
errors
by
combining
angle,
distance,
shape,
IoU
losses,
thus
model
training
process.
was
evaluated
on
D-Fire
dataset,
achieving
[email protected]
80.92%
speed
115
FPS,
surpassing
most
classical
algorithms
specialized
models.
These
enhancements
establish
as
robust
efficient
solution
detection,
providing
significant
improvements
reliability.
Язык: Английский
YOLO-ESIDE: fire hydrant detection under fire environment
Signal Image and Video Processing,
Год журнала:
2025,
Номер
19(3)
Опубликована: Янв. 17, 2025
Язык: Английский
Advanced Object Detection for Maritime Fire Safety
Fire,
Год журнала:
2024,
Номер
7(12), С. 430 - 430
Опубликована: Ноя. 25, 2024
In
this
study,
we
propose
an
advanced
object
detection
model
for
fire
and
smoke
in
maritime
environments,
leveraging
the
DETR
(Detection
with
Transformers)
framework.
To
address
specific
challenges
of
shipboard
detection,
such
as
varying
lighting
conditions,
occlusions,
complex
structure
ships,
enhance
baseline
by
integrating
EfficientNet-B0
backbone.
This
modification
aims
to
improve
accuracy
while
maintaining
computational
efficiency.
We
utilize
a
custom
dataset
images
captured
from
diverse
incorporating
range
data
augmentation
techniques
increase
robustness.
The
proposed
is
evaluated
against
YOLOv5
variants,
showing
significant
improvements
Average
Precision
(AP),
especially
detecting
small
medium-sized
objects.
Our
achieves
superior
AP
score
38.7
outperforms
alternative
models
across
multiple
IoU
thresholds
(AP50,
AP75),
particularly
scenarios
requiring
high
precision
occluded
experimental
results
highlight
model’s
efficacy
early
demonstrating
its
potential
deployment
real-time
safety
monitoring
systems.
These
findings
provide
foundation
future
research
aimed
at
enhancing
challenging
environments.
Язык: Английский
Human Remains Detection in Natural Disasters using YOLO: A Deep Learning Approach
Jyotsna Rani Thota,
Anuradha Padala
Engineering Technology & Applied Science Research,
Год журнала:
2024,
Номер
14(6), С. 17678 - 17682
Опубликована: Дек. 2, 2024
Natural
catastrophes
are
defined
as
events
whose
precise
location
and
timing
unexpected.
disasters
can
cause
property
damage
death.
The
NDRF
has
to
coordinate
rapid
evacuation
help
victims
of
natural
minimize
their
losses.
In
reality,
the
process
is
rather
challenging.
journey
begins
with
tackling
challenging
terrain
ends
equipment
limitations.
Most
studies
focus
on
classifying
various
types
disasters,
estimating
amount
incurred
during
a
disaster,
identifying
in
post-disaster
situations.
Many
use
image
processing
locate
vulnerable
locations.
This
study
aims
establish
system
for
human
bodies
after
assist
teams
volunteers
find
hard-to-reach
areas.
You
Only
Look
Once
(YOLO)
method
used
conjunction
artificial
intelligence's
computer
vision
algorithms
Python
programming
language
effectively
detect
an
accuracy
96%.
Язык: Английский
YOLOv10 to Its Genesis: A Decadal and Comprehensive Review of The You Only Look Once Series
Опубликована: Июнь 24, 2024
This
review
systematically
examines
the
progression
of
You
Only
Look
Once
(YOLO)
object
detection
algorithms
from
YOLOv1
to
recently
unveiled
YOLOv10.
Employing
a
reverse
chronological
analysis,
this
study
advancements
introduced
by
YOLO
algorithms,
beginning
with
YOLOv10
and
progressing
through
YOLOv9,
YOLOv8,
subsequent
versions
explore
each
version's
contributions
enhancing
speed,
accuracy,
computational
efficiency
in
real-time
detection.
The
highlights
transformative
impact
across
five
critical
application
areas:
automotive
safety,
healthcare,
industrial
manufacturing,
surveillance,
agriculture.
By
detailing
incremental
technological
that
iteration
brought,
not
only
chronicles
evolution
but
also
discusses
challenges
limitations
observed
earlier
versions.
signifies
path
towards
integrating
multimodal,
context-aware,
General
Artificial
Intelligence
(AGI)
systems
for
next
decade,
promising
significant
implications
future
developments
AI-driven
applications.
Язык: Английский