Deep neural networks for automated detection of marine mammal species

Deep neural networks have advanced the field of detection and classification and allowed for effective identification of signals in challenging data sets. Numerous time-critical conservation needs may benefit from these methods. We developed and empirically studied a variety of deep neural networks...

Full description

Bibliographic Details
Published in:Scientific Reports
Main Authors: Shiu, Yu, Palmer, Kaitlin, Roch, Marie, Fleishman, Erica, Liu, Xiaobai, Nosal, Eva-Marie, Helble, Tyler, Cholewiak, Danielle, Gillespie, Douglas Michael, Klinck, Holger
Format: Article in Journal/Newspaper
Language:English
Published: 2020
Subjects:
Online Access:https://research-portal.st-andrews.ac.uk/en/publications/f425a62a-030f-4d10-8b4f-cf40476980e8
https://doi.org/10.1038/s41598-020-57549-y
https://research-repository.st-andrews.ac.uk/bitstream/10023/19305/1/Shiu_2020_SR_Deepneural_CC.pdf
id ftunstandrewcris:oai:research-portal.st-andrews.ac.uk:publications/f425a62a-030f-4d10-8b4f-cf40476980e8
record_format openpolar
spelling ftunstandrewcris:oai:research-portal.st-andrews.ac.uk:publications/f425a62a-030f-4d10-8b4f-cf40476980e8 2024-09-30T14:34:32+00:00 Deep neural networks for automated detection of marine mammal species Shiu, Yu Palmer, Kaitlin Roch, Marie Fleishman, Erica Liu, Xiaobai Nosal, Eva-Marie Helble, Tyler Cholewiak, Danielle Gillespie, Douglas Michael Klinck, Holger 2020-01-17 application/pdf https://research-portal.st-andrews.ac.uk/en/publications/f425a62a-030f-4d10-8b4f-cf40476980e8 https://doi.org/10.1038/s41598-020-57549-y https://research-repository.st-andrews.ac.uk/bitstream/10023/19305/1/Shiu_2020_SR_Deepneural_CC.pdf eng eng https://research-portal.st-andrews.ac.uk/en/publications/f425a62a-030f-4d10-8b4f-cf40476980e8 info:eu-repo/semantics/openAccess Shiu , Y , Palmer , K , Roch , M , Fleishman , E , Liu , X , Nosal , E-M , Helble , T , Cholewiak , D , Gillespie , D M & Klinck , H 2020 , ' Deep neural networks for automated detection of marine mammal species ' , Scientific Reports , vol. 10 , 607 . https://doi.org/10.1038/s41598-020-57549-y article 2020 ftunstandrewcris https://doi.org/10.1038/s41598-020-57549-y 2024-09-18T23:42:20Z Deep neural networks have advanced the field of detection and classification and allowed for effective identification of signals in challenging data sets. Numerous time-critical conservation needs may benefit from these methods. We developed and empirically studied a variety of deep neural networks to detect the vocalizations of endangered North Atlantic right whales ( Eubalaena glacialis ). We compared the performance of these deep architectures to that of traditional detection algorithms for the primary vocalization produced by this species, the upcall. We show that deep-learning architectures are capable of producing false-positive rates that are orders of magnitude lower than alternative algorithms while substantially increasing the ability to detect calls. We demonstrate that a deep neural network trained with recordings from a single geographic region recorded over a span of days is capable of generalizing well to data from multiple years and across the species’ range, and that the low false positives make the output of the algorithm amenable to quality control for verification. The deep neural networks we developed are relatively easy to implement with existing software, and may provide new insights applicable to the conservation of endangered species. Article in Journal/Newspaper Eubalaena glacialis North Atlantic University of St Andrews: Research Portal Scientific Reports 10 1
institution Open Polar
collection University of St Andrews: Research Portal
op_collection_id ftunstandrewcris
language English
description Deep neural networks have advanced the field of detection and classification and allowed for effective identification of signals in challenging data sets. Numerous time-critical conservation needs may benefit from these methods. We developed and empirically studied a variety of deep neural networks to detect the vocalizations of endangered North Atlantic right whales ( Eubalaena glacialis ). We compared the performance of these deep architectures to that of traditional detection algorithms for the primary vocalization produced by this species, the upcall. We show that deep-learning architectures are capable of producing false-positive rates that are orders of magnitude lower than alternative algorithms while substantially increasing the ability to detect calls. We demonstrate that a deep neural network trained with recordings from a single geographic region recorded over a span of days is capable of generalizing well to data from multiple years and across the species’ range, and that the low false positives make the output of the algorithm amenable to quality control for verification. The deep neural networks we developed are relatively easy to implement with existing software, and may provide new insights applicable to the conservation of endangered species.
format Article in Journal/Newspaper
author Shiu, Yu
Palmer, Kaitlin
Roch, Marie
Fleishman, Erica
Liu, Xiaobai
Nosal, Eva-Marie
Helble, Tyler
Cholewiak, Danielle
Gillespie, Douglas Michael
Klinck, Holger
spellingShingle Shiu, Yu
Palmer, Kaitlin
Roch, Marie
Fleishman, Erica
Liu, Xiaobai
Nosal, Eva-Marie
Helble, Tyler
Cholewiak, Danielle
Gillespie, Douglas Michael
Klinck, Holger
Deep neural networks for automated detection of marine mammal species
author_facet Shiu, Yu
Palmer, Kaitlin
Roch, Marie
Fleishman, Erica
Liu, Xiaobai
Nosal, Eva-Marie
Helble, Tyler
Cholewiak, Danielle
Gillespie, Douglas Michael
Klinck, Holger
author_sort Shiu, Yu
title Deep neural networks for automated detection of marine mammal species
title_short Deep neural networks for automated detection of marine mammal species
title_full Deep neural networks for automated detection of marine mammal species
title_fullStr Deep neural networks for automated detection of marine mammal species
title_full_unstemmed Deep neural networks for automated detection of marine mammal species
title_sort deep neural networks for automated detection of marine mammal species
publishDate 2020
url https://research-portal.st-andrews.ac.uk/en/publications/f425a62a-030f-4d10-8b4f-cf40476980e8
https://doi.org/10.1038/s41598-020-57549-y
https://research-repository.st-andrews.ac.uk/bitstream/10023/19305/1/Shiu_2020_SR_Deepneural_CC.pdf
genre Eubalaena glacialis
North Atlantic
genre_facet Eubalaena glacialis
North Atlantic
op_source Shiu , Y , Palmer , K , Roch , M , Fleishman , E , Liu , X , Nosal , E-M , Helble , T , Cholewiak , D , Gillespie , D M & Klinck , H 2020 , ' Deep neural networks for automated detection of marine mammal species ' , Scientific Reports , vol. 10 , 607 . https://doi.org/10.1038/s41598-020-57549-y
op_relation https://research-portal.st-andrews.ac.uk/en/publications/f425a62a-030f-4d10-8b4f-cf40476980e8
op_rights info:eu-repo/semantics/openAccess
op_doi https://doi.org/10.1038/s41598-020-57549-y
container_title Scientific Reports
container_volume 10
container_issue 1
_version_ 1811638120938995712