Photoelasticity
is
a
non-destructive
optical
testing
technique
that
focuses
on
stress
analysis.
Traditional
methods
of
demodulating
fields
are
limited
by
various
conditions,
such
as
the
image
acquisition
set,
material
properties,
load
values,
light
sources
and
isoclinics.
As
an
alternative,
deep
convolutional
neural
networks
(DCNNs)
have
been
used
to
recover
in
automated
predictive
methods.
In
this
study,
different
DCNNs
architectures
trained
means
two
datasets,
each
one
with
45000
images.
First
dataset
has
images
four
polarization
states
(0°,
45°,
90°
135°).
Second
3-channel,
corresponding
Stokes
parameter
(s0,
s1,
s2).
The
quality
predicted
evaluated
metrics
MSE,
SSIM,
PSNR.
MSE
Adam
loss
function
optimizer,
respectively.
Results
show
average,
use
achieve
better
than
These
results
indicate
it
possible
obtain
real-time
using
representations
polarized
opens
new
opportunities
for
representing
learning
models
extending
its
applications
Frontiers in Neurorobotics,
Journal Year:
2022,
Volume and Issue:
16
Published: May 19, 2022
The
development
of
object
detection
technology
makes
it
possible
for
robots
to
interact
with
people
and
the
environment,
but
changeable
application
scenarios
make
accuracy
small
medium
objects
in
practical
low.
In
this
paper,
based
on
multi-scale
feature
fusion
indoor
target
method,
using
device
collect
different
images
angle,
light,
shade
conditions,
use
image
enhancement
set
up
amplify
a
date
set,
SSD
algorithm
layer
its
adjacent
features
fusion.
Faster
R-CNN,
YOLOv5,
SSD,
models
were
trained
an
scene
data
transfer
learning.
experimental
results
show
that
can
improve
all
kinds
objects,
especially
relatively
scale.
addition,
although
speed
improved
decreases,
is
faster
than
which
better
achieves
balance
between
speed.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: April 11, 2022
In
order
to
solve
the
problems
of
poor
image
quality,
loss
detail
information
and
excessive
brightness
enhancement
during
in
low
light
environment,
we
propose
a
low-light
algorithm
based
on
improved
multi-scale
Retinex
Artificial
Bee
Colony
(ABC)
optimization
this
paper.
First
all,
makes
two
copies
original
image,
afterwards,
irradiation
component
is
obtained
by
used
structure
extraction
from
texture
via
relative
total
variation
for
first
combines
it
with
obtain
reflection
which
are
simultaneously
enhanced
using
histogram
equalization,
bilateral
gamma
function
correction
filtering.
next
part,
second
equalization
edge-preserving
Weighted
Guided
Image
Filtering
(WGIF).
Finally,
weight-optimized
fusion
performed
ABC
algorithm.
The
mean
values
Information
Entropy
(IE),
Average
Gradient
(AG)
Standard
Deviation
(SD)
images
respectively
7.7878,
7.5560
67.0154,
improvement
compared
2.4916,
5.8599
52.7553.
results
experiment
show
that
proposed
paper
improves
problem
process,
enhances
sharpness,
highlights
details,
restores
color
also
reduces
noise
good
edge
preservation
enables
better
visual
perception
image.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: Aug. 16, 2022
The
continuous
development
of
deep
learning
improves
target
detection
technology
day
by
day.
current
research
focuses
on
improving
the
accuracy
technology,
resulting
in
model
being
too
large.
number
parameters
and
speed
are
very
important
for
practical
application
embedded
systems.
This
article
proposed
a
real-time
method
based
lightweight
convolutional
neural
network
to
reduce
improve
speed.
In
this
article,
depthwise
separable
residual
module
is
constructed
combining
convolution
non-bottleneck-free
module,
structure
used
replace
VGG
backbone
SSD
feature
extraction
parameter
quantity
At
same
time,
kernels
1
×
3
standard
adding
1,
respectively,
obtain
multiple
graphs
corresponding
SSD,
established
integrating
information
graphs.
self-built
dataset
complex
scenes
comparative
experiments;
experimental
results
verify
effectiveness
superiority
method.
tested
video
performance
model,
deployed
Android
platform
scalability
model.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: May 19, 2022
The
analysis
of
robot
inverse
kinematic
solutions
is
the
basis
control
and
path
planning,
great
importance
for
research.
Due
to
limitations
analytical
geometric
methods,
intelligent
algorithms
are
more
advantageous
because
they
can
obtain
approximate
directly
from
robot's
positive
equations,
saving
a
large
number
computational
steps.
Particle
Swarm
Algorithm
(PSO),
as
one
algorithms,
widely
used
due
its
simple
principle
excellent
performance.
In
this
paper,
we
propose
an
improved
particle
swarm
algorithm
kinematics
solving.
Since
setting
weights
affects
global
local
search
ability
algorithm,
paper
proposes
adaptive
weight
adjustment
strategy
improving
ability.
Considering
running
time
condition
based
on
limit
joints,
introduces
position
coefficient
k
in
velocity
factor.
Meanwhile,
exponential
product
form
modeling
method
(POE)
spinor
theory
chosen.
Compared
with
traditional
DH
method,
approach
describes
motion
rigid
body
whole
avoids
singularities
that
arise
when
described
by
coordinate
system.
order
illustrate
advantages
terms
accuracy,
time,
convergence
adaptability,
three
experiments
were
conducted
general
six-degree-of-freedom
industrial
robotic
arm,
PUMA560
arm
seven-degree-of-freedom
research
objects.
all
experiments,
parameters
range
joint
angles,
initial
attitude
end-effector
given,
impact
point
set
verify
whether
angles
found
reach
specified
positions.
Experiments
2
3,
proposed
compared
(PSO)
quantum
(QPSO)
direction
solving
operation
convergence.
results
show
other
two
ensure
higher
accuracy
orientation
end-effector.
error
0
maximum
1.29
×
10-8.
while
minimum
-1.64
10-5
-4.03
10-6.
has
shorter
algorithms.
last
computing
0.31851
0.30004s
respectively,
shortest
0.33359
0.30521s
respectively.
convergence,
achieve
faster
stable
than
After
changing
experimental
subjects,
still
maintains
which
indicates
applicable
certain
potential
multi-arm
solution.
This
provides
new
way
thinking
solution
problem.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: March 22, 2022
Complete
trajectory
planning
includes
path
planning,
inverse
solution
solving
and
optimization.
In
this
paper,
a
highly
smooth
time-saving
approach
to
is
obtained
by
improving
the
kinematic
optimization
algorithms
for
time-optimal
problem.
By
partitioning
joint
space,
paper
obtains
an
calculation
based
on
of
saving
40%
kinematics
time.
This
means
that
large
number
computational
resources
can
be
saved
in
planning.
addition,
improved
sparrow
search
algorithm
(SSA)
proposed
complete
trajectory.
A
Tent
chaotic
mapping
was
used
optimize
way
generating
initial
populations.
The
further
combining
it
with
adaptive
step
factor.
experiments
demonstrated
performance
SSA.
robot’s
optimized
time
algorithm.
Experimental
results
show
method
improve
convergence
speed
global
capability
ensure
trajectories.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: July 1, 2022
Intelligent
vehicles
were
widely
used
in
logistics
handling,
agriculture,
medical
service,
industrial
production,
and
other
industries,
but
they
often
not
smooth
enough
planning
the
path,
number
of
turns
was
large,
resulting
high
energy
consumption.
Aiming
at
unsmooth
path
problem
four-wheel
intelligent
vehicle
algorithm,
this
article
proposed
an
improved
genetic
ant
colony
hybrid
physical
model
established.
This
first
optimization
algorithm
about
heuristic
function
with
adaptive
change
evaporation
factor.
Then,
it
on
fitness
function,
adjustment
crossover
factor,
mutation
Last,
addition
a
deletion
operator,
adoption
elite
retention
strategy,
suboptimal
solutions
obtained
from
to
obtain
optimized
new
populations.
The
simulation
environment
for
is
windows
10,
processor
Intel
Core
i5-5257U,
running
memory
4GB,
compilation
MATLAB2018b,
samples
50,
maximum
iterations
100,
initial
population
size
200,
50.
Simulation
experiments
show
that
effective.
Compared
traditional
reduced
by
46%
average
75%
simple
grid.
47%
21%
complex
works
better
reduce
maps.
IEEE Sensors Journal,
Journal Year:
2022,
Volume and Issue:
23(18), P. 20619 - 20632
Published: Aug. 5, 2022
There
are
a
variety
of
objects,
random
postures
and
multiple
objects
stacked
in
disorganized
manner
unstructured
home
applications,
which
leads
to
the
object
grasping
posture
estimation
planning
based
on
machine
vision
become
very
complicated.
This
paper
proposes
method
cluttering
pose
detection
convolutional
neural
network
with
self-powered
sensors
information.
Firstly,
search
strategy
for
candidate
poses
3D
point
cloud
is
proposed,
single-channel
image
dataset
representing
this
established
by
using
Bigbird
dataset.
Secondly,
ResNet
constructed
rank
filter
single
channel
captured
images
bit
pose.
It
also
compared
three
mainstream
classification
networks,
Inception
V2,
VGG-A
LetNet,
perception
analysis
function
execution
developed
under
ROS.
The
effective
manipulator
scene
scattered
piles
realized
results
position
combined
information
sensors,
other
networks.
In
environment
experiment
show
that
superior
average
success
rate
ResNet,
InceptionV2,
VGGA
LetNet
networks
90.67%,
82.67%,
86.67%
87.33%
respectively,
verifies
effectiveness
superiority
deep
learn-based
model
proposed
paper.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: Feb. 28, 2022
Autonomous
Underwater
Vehicle
are
widely
used
in
industries,
such
as
marine
resource
exploitation
and
fish
farming,
but
they
often
subject
to
a
large
amount
of
interference
which
cause
poor
control
stability,
while
performing
their
tasks.
A
decoupling
algorithm
is
proposed
single
volume-single
attitude
angle
model
constructed
for
the
problem
severe
coupling
system
six
degrees
freedom
Vehicle.
Aiming
at
complex
Active
Disturbance
Rejection
Control
(ADRC)
adjustment
relying
on
manual
experience,
PSO-ADRC
realize
automatic
its
parameters,
improves
anti-interference
ability
accuracy
dynamic
environment.
The
method
were
verified
through
experiments.
Frontiers in Bioengineering and Biotechnology,
Journal Year:
2022,
Volume and Issue:
10
Published: June 7, 2022
As
a
key
technology
for
the
non-invasive
human-machine
interface
that
has
received
much
attention
in
industry
and
academia,
surface
EMG
(sEMG)
signals
display
great
potential
advantages
field
of
collaboration.
Currently,
gesture
recognition
based
on
sEMG
suffers
from
inadequate
feature
extraction,
difficulty
distinguishing
similar
gestures,
low
accuracy
multi-gesture
recognition.
To
solve
these
problems
new
network
called
Multi-stream
Convolutional
Block
Attention
Module-Gate
Recurrent
Unit
(MCBAM-GRU)
is
proposed,
which
signals.
The
multi-stream
formed
by
embedding
GRU
module
CBAM.
Fusing
ACC
further
improves
action
experimental
results
show
proposed
method
obtains
excellent
performance
dataset
collected
this
paper
with
accuracies
94.1%,
achieving
advanced
89.7%
Ninapro
DB1
dataset.
system
high
classifying
52
kinds
different
delay
less
than
300
ms,
showing
terms
real-time
human-computer
interaction
flexibility
manipulator
control.