Citizen Science Theory and Practice,
Journal Year:
2021,
Volume and Issue:
6(1), P. 12 - 12
Published: April 13, 2021
Citizen
science
schemes
enable
ecological
data
collection
over
very
large
spatial
and
temporal
scales,
producing
datasets
of
high
value
for
both
pure
applied
research.
However,
the
accuracy
citizen
is
often
questioned,
owing
to
issues
surrounding
quality
verification,
process
by
which
records
are
checked
after
submission
correctness.
Verification
a
critical
ensuring
increasing
trust
in
such
datasets,
but
verification
approaches
vary
considerably
between
schemes.
Here,
we
systematically
review
across
that
feature
published
research,
aiming
identify
options
available
examine
factors
influence
used.
We
reviewed
259
were
able
locate
information
142
those.
Expert
was
most
widely
used,
especially
among
longer-running
schemes,
followed
community
consensus
automated
approaches.
has
been
default
approach
past,
as
volume
collected
through
grows
potential
develops,
many
might
be
implement
verify
more
efficiently.
present
an
idealised
system
identifying
where
this
could
requirements
implementation.
propose
hierarchical
bulk
verified
automation
or
consensus,
any
flagged
can
then
undergo
additional
levels
experts.
Citizen
science
is
an
increasingly
acknowledged
approach
applied
in
many
scientific
domains,
and
particularly
within
the
environmental
ecological
sciences,
which
non-professional
participants
contribute
to
data
collection
advance
research.
We
present
contributory
citizen
as
a
valuable
method
scientists
practitioners
focusing
on
full
life
cycle
of
practice,
from
design
implementation,
evaluation
management.
highlight
key
issues
how
address
them,
such
participant
engagement
retention,
quality
assurance
bias
correction,
well
ethical
considerations
regarding
sharing.
also
provide
range
examples
illustrate
diversity
applications,
biodiversity
research
land
cover
assessment
forest
health
monitoring
marine
pollution.
The
aspects
reproducibility
sharing
are
considered,
placing
encompassing
open
perspective.
Finally,
we
discuss
its
limitations
challenges
outlook
for
application
multiple
domains.
Contributory
whole
or
part
This
Primer
outlines
use
discussing
engagement,
correction.
Frontiers in Ecology and Evolution,
Journal Year:
2021,
Volume and Issue:
9
Published: Feb. 26, 2021
Camera
trapping
is
an
effective
non-invasive
method
for
collecting
data
on
wildlife
species
to
address
questions
of
ecological
and
conservation
interest.
We
reviewed
2,167
camera
trap
(CT)
articles
from
1994
2020.
Through
the
lens
technological
diffusion,
we
assessed
trends
in:
(1)
CT
adoption
measured
by
published
research
output,
(2)
topic,
taxonomic,
geographic
diversification
composition
applications,
(3)
sampling
effort,
spatial
extent,
temporal
duration
studies.
Annual
publications
have
grown
81-fold
since
1994,
increasing
at
a
rate
1.26
(SE
=
0.068)
per
year
2005,
but
with
decelerating
growth
2017.
Topic,
richness
studies
increased
encompass
100%
topics,
59.4%
ecoregions,
6.4%
terrestrial
vertebrates.
However,
declines
in
article
rates
accretion
plateaus
Shannon's
H
topics
major
taxa
studied
suggest
upper
limits
further
as
currently
practiced.
Notable
compositional
changes
included
decrease
capture-recapture,
recent
spatial-capture-recapture,
increases
occupancy,
interspecific
interactions,
automated
image
classification.
Mammals
were
dominant
taxon
studied;
within
mammalian
orders
carnivores
exhibited
unimodal
peak
whereas
primates,
rodents
lagomorphs
steadily
increased.
Among
biogeographic
realms
observed
decreases
Oceania
Nearctic,
Afrotropic
Palearctic,
peaks
Indomalayan
Neotropic.
days,
area
sampled
increased,
much
greater
0.90
quantile
compared
median.
Next-generation
are
poised
expand
knowledge
valuable
ecology
posing
previously
infeasible
unprecedented
spatiotemporal
scales,
array
species,
wider
variety
environments.
Converting
potential
into
broad-based
application
will
require
transferable
models
classification,
sharing
among
users
across
multiple
platforms
coordinated
manner.
Further
taxonomic
likely
modifications
that
permit
more
efficient
smaller
improvements
modeling
unmarked
populations.
Environmental
can
benefit
engineering
solutions
ease
traditionally
challenging
sites.
Proceedings of the ACM on Human-Computer Interaction,
Journal Year:
2024,
Volume and Issue:
8(CSCW1), P. 1 - 39
Published: April 17, 2024
Explainability
techniques
are
rapidly
being
developed
to
improve
human-AI
decision-making
across
various
cooperative
work
settings.
Consequently,
previous
research
has
evaluated
how
decision-makers
collaborate
with
imperfect
AI
by
investigating
appropriate
reliance
and
task
performance
the
aim
of
designing
more
human-centered
computer-supported
collaborative
tools.
Several
explainable
(XAI)
have
been
proposed
in
hopes
improving
decision-makers'
collaboration
AI;
however,
these
grounded
findings
from
studies
that
primarily
focus
on
impact
incorrect
advice.
Few
acknowledge
possibility
explanations
even
if
advice
is
correct.
Thus,
it
crucial
understand
XAI
affects
decision-making.
In
this
work,
we
contribute
a
robust,
mixed-methods
user
study
136
participants
evaluate
influence
humans'
behavior
bird
species
identification
task,
taking
into
account
their
level
expertise
an
explanation's
assertiveness.
Our
reveal
team
performance.
We
also
discuss
can
deceive
during
collaboration.
Hence,
shed
light
impacts
field
provide
guidelines
for
designers
systems.
Postdigital Science and Education,
Journal Year:
2024,
Volume and Issue:
unknown
Published: June 14, 2024
Abstract
This
collective
article
presents
a
theoretical
kaleidoscope,
the
multiple
lenses
of
which
are
used
to
examine
and
critique
citizen
science
humanities
in
postdigital
contexts
from
perspectives.
It
brings
together
19
short
experiential
contributions,
organised
into
six
loose
groups
explore
areas
perspectives
including
Indigenous
local
knowledge,
technology,
children
young
people
as
researchers.
suggests
that
this
approach
is
appropriate
because
both
research
founded
on
committed
collaboration,
dialogue,
co-creation,
well
challenging
tenets
approaches
traditional
academic
research.
In
particular,
it
transformations
contemporary
societies
changing
making
more
important.
Biological reviews/Biological reviews of the Cambridge Philosophical Society,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 17, 2025
ABSTRACT
Camera
traps
are
widely
used
in
wildlife
research
and
monitoring,
so
it
is
imperative
to
understand
their
strengths,
limitations,
potential
for
increasing
impact.
We
investigated
a
decade
of
use
cameras
(2012–2022)
with
case
study
on
Australian
terrestrial
vertebrates
using
multifaceted
approach.
(
i
)
synthesised
information
from
literature
review;
ii
conducted
an
online
questionnaire
132
professionals;
iii
hosted
in‐person
workshop
28
leading
experts
representing
academia,
non‐governmental
organisations
(NGOs),
government;
iv
mapped
camera
trap
usage
based
all
sources.
predicted
that
the
last
would
have
shown:
exponentially
sampling
effort,
continuation
trends
up
2012;
analytics
shifted
naive
presence/absence
capture
rates
towards
hierarchical
modelling
accounts
imperfect
detection,
thereby
improving
quality
outputs
inferences
occupancy,
abundance,
density;
broader
scales
terms
multi‐species,
multi‐site
multi‐year
studies.
However,
results
showed
effort
has
reached
plateau,
publication
only
modestly.
Users
reported
reaching
saturation
point
images
could
be
processed
by
humans
time
complex
analyses
academic
writing.
There
were
strong
taxonomic
geographic
biases
medium–large
mammals
(>500
g)
forests
along
Australia's
southeastern
coastlines,
reflecting
proximity
major
cities.
Regarding
analytical
choices,
bias‐prone
indices
still
accounted
~50%
this
was
consistent
across
user
groups.
Multi‐species,
multiple‐year
studies
rare,
largely
driven
hesitancy
around
collaboration
data
sharing.
no
repository
Atlas
Living
Australia
(ALA)
dominant
sharing
tabular
occurrence
records.
ALA
presence‐only
thus
unsuitable
creating
detection
histories
absences,
inhibiting
modelling.
Workshop
discussions
identified
pressing
need
enhance
efficiency,
scale
management
outcomes,
proposal
Wildlife
Observatory
(WildObs).
To
encourage
standards
sharing,
WildObs
should
promote
metadata
collection
app;
create
tagged
image
facilitate
artificial
intelligence/machine
learning
(AI/ML)
computer
vision
space;
address
identification
bottleneck
via
AI/ML‐powered
image‐processing
platforms;
commons
suitable
modelling;
v
provide
capacity
building
tools
Our
review
highlights
while
investments
monitoring
biodiversity
position
global
leader
context,
realising
requires
paradigm
shift
best
practices
collecting,
curating,
analysing
‘Big
Data’.
findings
framework
broad
applicability
outside
meet
conservation
objectives
ranging
local
scales.
This
articulates
country/continental
observatory
approach
also
international
collaborative
networks.
International Journal of Computational and Experimental Science and Engineering,
Journal Year:
2025,
Volume and Issue:
11(1)
Published: March 8, 2025
Incorporation
of
AI
into
the
developmental
process
illustrations
ICH
is
not
only
a
great
advancement
in
utilizing
technology
to
put
practice
ICH,
but
also
shows
shift
from
static
use
traditional
cultural
factors
representations
ICH.
In
this
research
context,
references
shall
be
made
how
information
science
and
AI,
particularly
connection
with
computer
technologies,
can
used
for
better
visualization
sharing
intangible
heritage
generations
come.
This
paper
discusses
computational
methods,
especially
deep
learning
generative
models
mine
replicate
historical
data
generate
new,
relevant,
culturally
authentic
heritage.
will
establish
tools
recreate
reimagine
signifiers
belonging
by
using
image
recognitions,
natural
language
processing,
adversarial
networks
(GANs).
Unlike
arts
that
have
copied
conform
current
standards,
these
technologies
replicate,
they
bring
new
approaches
providing
novel
interpretations
while
at
same
time
conserving
their
originality
as
discussed
below.
important
because
it
now
due
relevant
are
created,
which
shared
through
digital
platforms
making
more
accessible.
The
results
help
determine
whether
an
instrument
effective
sphere
conservation,
well
open
up
possibility
further
creation
provide
reference
point
artists,
historians
organizations,
who
want
repurposing
or
asset
modern
socio-technological
context.
Sustainability,
Journal Year:
2021,
Volume and Issue:
13(14), P. 8087 - 8087
Published: July 20, 2021
Advances
in
artificial
intelligence
(AI)
and
the
extension
of
citizen
science
to
various
scientific
areas,
as
well
generation
big
data,
are
resulting
AI
being
good
partners,
their
combination
benefits
both
fields.
The
integration
has
mostly
been
used
biodiversity
projects,
with
primary
focus
on
using
data
train
machine
learning
(ML)
algorithms
for
automatic
species
identification.
In
this
article,
we
will
look
at
how
ML
techniques
can
be
they
influence
volunteer
engagement,
collection,
validation.
We
reviewed
several
use
cases
from
domains
categorized
them
according
technique
impact
each
project.
Furthermore,
risks
integrating
explored,
some
recommendations
provided
enhance
while
mitigating
integration.
Finally,
because
is
still
its
early
phases,
have
proposed
potential
ideas
challenges
that
implemented
future
leverage
power
AI,
key
emphasis
article.
Scientific Reports,
Journal Year:
2021,
Volume and Issue:
11(1)
Published: March 25, 2021
With
an
accelerating
negative
impact
of
anthropogenic
actions
on
natural
ecosystems,
non-invasive
biodiversity
assessments
are
becoming
increasingly
crucial.
As
a
consequence,
the
interest
in
application
environmental
DNA
(eDNA)
survey
techniques
has
increased.
The
use
eDNA
extracted
from
faeces
generalist
predators,
have
recently
been
described
as
"biodiversity
capsules"
and
suggested
complementary
tool
for
improving
current
assessments.
In
this
study,
using
faecal
samples
two
omnivore
species,
Eurasian
badger
red
fox,
we
evaluated
applicability
metabarcoding
determining
dietary
composition,
compared
to
macroscopic
diet
identification
techniques.
Subsequently,
used
information
obtained
assess
its
contribution
Compared
classic
techniques,
found
that
detected
more
taxa,
at
higher
taxonomic
resolution,
proved
be
important
technique
verify
species
predator
field
collected
faeces.
Furthermore,
showed
how
analyses
complemented
observations
describing
by
identifying
consumed
flora
fauna
went
unnoticed
during
observations.
While
analysis
approaches
could
not
substitute
entirely,
suggest
their
integration
with
other
methods
might
overcome
intrinsic
limitations
single
future
surveys.