Comparison of relative abundance indices calculated from two methods of generating video count data
Authored by Matthew D Campbell, Adam G Pollack, Christopher T Gledhill, Theodore S Switzer, Douglas A DeVries
Date Published: 2015
DOI: 10.1016/j.fishres.2015.05.011
Sponsors:
No sponsors listed
Platforms:
Fortran
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
The use of baited remote underwater video to remotely observe fish and
generate indices of relative abundance has steadily gained acceptance as
a fisheries management tool particularly as survey time series have
matured. Because `capture' for this gear is visually derived, fish can
possibly be counted multiple times and therefore different methods of
estimating site abundances have been developed. We compared the
performance of two video abundance estimation techniques, MaxN and
MeanCount, by generating relative indices of abundance using a delta
lognormal model. We demonstrated high correspondence between
standardized indices produced through the years analyzed independent of
the species evaluated, indicating there was little change in the
information content between indices. Despite the agreement between the
indices, estimates for proportion positive and coefficient of variation
(CV) showed a general reduction in precision when using the MeanCount
method for all species analyzed. Systematic underestimation of
proportion positives and high CV values generated using MeanCount is
problematic for the use of that abundance estimation method.
Individual-based modeling results confirmed that MeanCount is linearly
related to true abundance, while MaxN showed a power relationship.
However, the MaxN estimate became linear as the area observed was
increased in the model from 25\% to 100\%, which suggests that syncing
cameras and generating counts over the entire observed area would
eliminate the asymptotic relationship and simplify the use of MaxN
estimators. Better understanding of catchability for optical type gears
would enhance understanding of the relationship between the generated
index and true population abundance, and supply assessment scientist
with a clearer understanding of how to incorporate these types of survey
data into assessments. Published by Elsevier B.V.
Tags
models
fisheries
Density
System
Gulf-of-mexico
St-lawrence
Reef fish
Geographic-distribution
Southern gulf
Unit-effort