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Main Authors: Mishima, Yuka, Kawakami, Mizuki, Igarashi, Takeshi, Kita, Yuki F, Morisaka, Tadamichi
Format: Artículo científico
Language:en
Published: The Journal of the Acoustical Society of America 2025
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Online Access:https://pubmed.ncbi.nlm.nih.gov/40471052/
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author Mishima, Yuka
Kawakami, Mizuki
Igarashi, Takeshi
Kita, Yuki F
Morisaka, Tadamichi
author_facet Mishima, Yuka
Kawakami, Mizuki
Igarashi, Takeshi
Kita, Yuki F
Morisaka, Tadamichi
Mishima, Yuka
Kawakami, Mizuki
Igarashi, Takeshi
Kita, Yuki F
Morisaka, Tadamichi
collection PubMed - marine biology
contents Classification of sounds from Pacific white-sided dolphins using a convolutional neural network and a method to reduce false-positive detections. Mishima, Yuka Kawakami, Mizuki Igarashi, Takeshi Kita, Yuki F Morisaka, Tadamichi Animals Acoustics Convolutional Neural Networks Dolphins Japan Neural Networks, Computer Signal Processing, Computer-Assisted Sound Spectrography Vocalization, Animal An automatic detector for identifying the clicks and pulsed calls of Pacific white-sided dolphins (Lagenorhynchus obliquidens) was developed using a convolutional neural network architecture for passive acoustic monitoring, particularly in the areas surrounding the Mutsu and Funka Bays in Japan. Recordings were made at one site in each bay during the spring and early summer in both 2022 and 2023. The data exhibited different soundscapes, as broadband pulses, possibly attributed to snapping shrimp, were found far more frequently in Mutsu Bay than in Funka Bay. The developed detector showed a precision, recall, and accuracy of 0.94-0.95, 0.94, and 0.98, respectively, for both call types. Furthermore, considering the social and gregarious characteristics of the investigated species, an additional selection criterion using a two-process model was proposed to eliminate hours with few positive images. The selection criterion could remove 58%-84% of false-positive images, 0%-0.5% of true-positive images for clicks, 32%-96% of false-positives, and 6%-33% of true-positives for pulsed calls during the periods that were manually inspected. Processing using a combination of the detector and selection criterion can be applied to passive acoustic monitoring around these bays to reveal the migration patterns of Lagenorhynchus obliquidens.
format Artículo científico
id pubmed_40471052
institution PubMed
language en
publishDate 2025
publisher The Journal of the Acoustical Society of America
record_format pubmed
spellingShingle Classification of sounds from Pacific white-sided dolphins using a convolutional neural network and a method to reduce false-positive detections.
Mishima, Yuka
Kawakami, Mizuki
Igarashi, Takeshi
Kita, Yuki F
Morisaka, Tadamichi
Animals
Acoustics
Convolutional Neural Networks
Dolphins
Japan
Neural Networks, Computer
Signal Processing, Computer-Assisted
Sound Spectrography
Vocalization, Animal
Classification of sounds from Pacific white-sided dolphins using a convolutional neural network and a method to reduce false-positive detections. Mishima, Yuka Kawakami, Mizuki Igarashi, Takeshi Kita, Yuki F Morisaka, Tadamichi Animals Acoustics Convolutional Neural Networks Dolphins Japan Neural Networks, Computer Signal Processing, Computer-Assisted Sound Spectrography Vocalization, Animal An automatic detector for identifying the clicks and pulsed calls of Pacific white-sided dolphins (Lagenorhynchus obliquidens) was developed using a convolutional neural network architecture for passive acoustic monitoring, particularly in the areas surrounding the Mutsu and Funka Bays in Japan. Recordings were made at one site in each bay during the spring and early summer in both 2022 and 2023. The data exhibited different soundscapes, as broadband pulses, possibly attributed to snapping shrimp, were found far more frequently in Mutsu Bay than in Funka Bay. The developed detector showed a precision, recall, and accuracy of 0.94-0.95, 0.94, and 0.98, respectively, for both call types. Furthermore, considering the social and gregarious characteristics of the investigated species, an additional selection criterion using a two-process model was proposed to eliminate hours with few positive images. The selection criterion could remove 58%-84% of false-positive images, 0%-0.5% of true-positive images for clicks, 32%-96% of false-positives, and 6%-33% of true-positives for pulsed calls during the periods that were manually inspected. Processing using a combination of the detector and selection criterion can be applied to passive acoustic monitoring around these bays to reveal the migration patterns of Lagenorhynchus obliquidens.
title Classification of sounds from Pacific white-sided dolphins using a convolutional neural network and a method to reduce false-positive detections.
topic Animals
Acoustics
Convolutional Neural Networks
Dolphins
Japan
Neural Networks, Computer
Signal Processing, Computer-Assisted
Sound Spectrography
Vocalization, Animal
url https://pubmed.ncbi.nlm.nih.gov/40471052/