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The eleven ‘best’ candidate OBIA algorithms used in this study to identify beluga whale locations.

The eleven ‘best’ candidate OBIA algorithms used in this study to identify beluga whale locations.

<p>The segment algorithm was EDGE and the merge algorithm was FAST LAMBDA for all of the eleven algorithms listed.</p>

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Bibliographic Details
Main Author: John Iacozza (5787789) (author)
Other Authors: Bryanna Sherbo (17714231) (author), Cortney Watt (20189736) (author)
Published: 2024
Subjects:
Biochemistry
Space Science
Biological Sciences not elsewhere classified
Information Systems not elsewhere classified
texture variance attributes
delphinapterus leucas )</
based image analysis
false positive rate
false negative rate
automated count deviation
sized beluga whales
enumerate beluga whales
used spectral mean
traditional detection methods
processing large amounts
free panchromatic image
div >< p
3 satellite imagery
algorithm detected imagery
satellite imagery
false positives
automated results
whales detected
test imagery
viable solution
various algorithms
significant advantages
reliably identify
reading training
open water
one another
ocean conditions
manually review
limiting factor
human read
experienced readers
determining counts
detection time
best algorithm
autodetection algorithm
algorithm could
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