Volume 33, Issue 2
Article

Acoustic classification of dolphins in the California Current using whistles, echolocation clicks, and burst pulses

Shannon Rankin

Corresponding Author

E-mail address: shannon.rankin@noaa.gov

Southwest Fisheries Science Center, NMFS, NOAA, 8901 La Jolla Shores Drive, La Jolla, California 92037 U.S.A.

Corresponding author (e‐mail: shannon.rankin@noaa.gov). Search for more papers by this author
Frederick Archer

Southwest Fisheries Science Center, NMFS, NOAA, 8901 La Jolla Shores Drive, La Jolla, California 92037 U.S.A.

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Jennifer L. Keating

Southwest Fisheries Science Center, NMFS, NOAA, 8901 La Jolla Shores Drive, La Jolla, California 92037 U.S.A.

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Julie N. Oswald

Bio‐waves, Inc., 364 2nd Street, Suite #3, Encinitas, California 92024, U.S.A.

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Michael Oswald

Bio‐waves, Inc., 364 2nd Street, Suite #3, Encinitas, California 92024, U.S.A.

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Alex Curtis

Ocean Associates, Inc., under contract to Southwest Fisheries Science Center, NMFS, NOAA, 8901 La Jolla Shores Drive, La Jolla, California 92037 U.S.A.

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Jay Barlow

Southwest Fisheries Science Center, NMFS, NOAA, 8901 La Jolla Shores Drive, La Jolla, California 92037 U.S.A.

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First published: 14 December 2016
Citations: 11

Abstract

Passive acoustic monitoring of dolphins is limited by our ability to classify calls to species. Significant overlap in call characteristics among many species, combined with a wide range of call types and acoustic behavior, makes classification of calls to species challenging. Here, we introduce BANTER, a compound acoustic classification method for dolphins that utilizes information from all call types produced by dolphins rather than a single call type, as has been typical for acoustic classifiers. Output from the passive acoustic monitoring software, PAMGuard, was used to create independent classifiers for whistles, echolocation clicks, and burst pulses, which were then merged into a final, compound classifier for each species. Classifiers for five species found in the California Current ecosystem were trained and tested using 153 single‐species acoustic events recorded during a 4.5 mo combined visual and acoustic shipboard cetacean survey off the west coast of the United States. Correct classification scores for individual species ranged from 71% to 92%, with an overall correct classification score of 84% for all five species. The conceptual framework of this approach easily lends itself to other species and study areas as well as to noncetacean taxa.

Number of times cited according to CrossRef: 11

  • Detection and classification of narrow-band high frequency echolocation clicks from drifting recorders, The Journal of the Acoustical Society of America, 10.1121/10.0001229, 147, 5, (3511-3522), (2020).
  • Model-based unsupervised clustering for distinguishing Cuvier's and Gervais' beaked whales in acoustic data, Ecological Informatics, 10.1016/j.ecoinf.2020.101094, (101094), (2020).
  • Determinants of echolocation click frequency characteristics in small toothed whales: recent advances from anatomical information, Mammal Review, 10.1111/mam.12212, 50, 4, (413-425), (2020).
  • Mark recapture distance sampling: using acoustics to estimate the fraction of dolphins missed by observers during shipboard line-transect surveys, Environmental and Ecological Statistics, 10.1007/s10651-020-00443-7, (2020).
  • Description and classification of echolocation clicks of Indian Ocean humpback (Sousa plumbea) and Indo-Pacific bottlenose (Tursiops aduncus) dolphins from Menai Bay, Zanzibar, East Africa, PLOS ONE, 10.1371/journal.pone.0230319, 15, 3, (e0230319), (2020).
  • undefined, OCEANS 2019 - Marseille, 10.1109/OCEANSE.2019.8867118, (1-7), (2019).
  • A review of unmanned vehicles for the detection and monitoring of marine fauna, Marine Pollution Bulletin, 10.1016/j.marpolbul.2019.01.009, 140, (17-29), (2019).
  • Integrative bioacoustics discrimination of eight delphinid species in the western South Atlantic Ocean, PLOS ONE, 10.1371/journal.pone.0217977, 14, 6, (e0217977), (2019).
  • Whistle Classification of Sympatric False Killer Whale Populations in Hawaiian Waters Yields Low Accuracy Rates, Frontiers in Marine Science, 10.3389/fmars.2019.00645, 6, (2019).
  • Validating automated click detector dolphin detection rates and investigating factors affecting performance, The Journal of the Acoustical Society of America, 10.1121/1.5049802, 144, 2, (931-939), (2018).
  • Automatic classification of whistles from coastal dolphins of the southern African subregion, The Journal of the Acoustical Society of America, 10.1121/1.4978000, 141, 4, (2489-2500), (2017).

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