Assemblage of Focal Species Recognizers-AFSR: A technique for decreasing false indications of presence from acoustic automatic identification in a multiple species context
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Campos, Ivan Braga
Landers, T J
Lee, Kate D.
Lee, William George
Friesen, Megan R
Gaskett, A. C
Ranjard, Louis
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Public Library of Science
Abstract
Passive acoustic monitoring (PAM) coupled with automated species identification is a promising tool for species monitoring and conservation worldwide. However, high false indications of presence are still an important limitation and a crucial factor for acceptance of these
techniques in wildlife surveys. Here we present the Assemblage of Focal Species Recognizers—AFSR, a novel approach for decreasing false positives and increasing models’ precision in multispecies contexts. AFSR focusses on decreasing false positives by excluding
unreliable sound file segments that are prone to misidentification. We used MatlabHTK, a
hidden Markov models interface for bioacoustics analyses, for illustrating AFSR technique
by comparing two approaches, 1) a multispecies recognizer where all species are identified
simultaneously, and 2) an assemblage of focal species recognizers (AFSR), where several
recognizers that each prioritise a single focal species are then summarised into a single output, according to a set of rules designed to exclude unreliable segments. Both approaches
(the multispecies recognizer and AFSR) used the same sound files training dataset, but different processing workflow. We applied these recognisers to PAM recordings from a remote
island colony with five seabird species and compared their outputs with manual species
identifications. False positives and precision improved for all the five species when using
AFSR, achieving remarkable 0% false positives and 100% precision for three of five seabird
species, and < 6% false positives, and >90% precision for the other two species. AFSR’ output was also used to generate daily calling activity patterns for each species. Instead of
attempting to withdraw useful information from every fragment in a sound recording, AFSR
prioritises more trustworthy information from sections with better quality data. AFSR can be
applied to automated species identification from multispecies PAM recordings worldwide.
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PLOS ONE
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