Exploring Animal Behavior Through Sound: Volume 1 2022
DOI: 10.1007/978-3-030-97540-1_8
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Detection and Classification Methods for Animal Sounds

Abstract: Classification of the acoustic repertoires of animals into sound types is a useful tool for taxonomic studies, behavioral studies, and for documenting the occurrence of animals. Classification of acoustic repertoires enables the identification of species, age, gender, and individual identity, correlations between sound types and behavior, the identification of changes in vocal behavior over time or in response to anthropogenic noise, comparisons between the repertoires of populations living in different geogra… Show more

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Cited by 11 publications
(11 citation statements)
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“…However, agreement was higher when differentiating at the call type level (i.e., distinguishing different call types or identifying calls of the same type and subtype) but lower on finer variations (i.e., when to differentiate between subtypes). These differences likely arose because some people are "splitters" and others "lumpers" and thus even experienced observers classify sounds differently (Oswald et al, 2022). A shortcoming of the interobserver reliability test was that observers were asked to directly compare between only two call samples, thus lacking information for finer distinctions (i.e., subtypes), such as whether variation is graded or discrete and whether there are intermediates.…”
Section: Validation Of the Call Classificationmentioning
confidence: 99%
“…However, agreement was higher when differentiating at the call type level (i.e., distinguishing different call types or identifying calls of the same type and subtype) but lower on finer variations (i.e., when to differentiate between subtypes). These differences likely arose because some people are "splitters" and others "lumpers" and thus even experienced observers classify sounds differently (Oswald et al, 2022). A shortcoming of the interobserver reliability test was that observers were asked to directly compare between only two call samples, thus lacking information for finer distinctions (i.e., subtypes), such as whether variation is graded or discrete and whether there are intermediates.…”
Section: Validation Of the Call Classificationmentioning
confidence: 99%
“…To detect targeted calls among the recorded data, tonal information should first be converted into a spectrogram using the Fourier transform (Erbe et al, 2022). To facilitate the automatic detection and classification of targeted calls, various advanced statistical procedures based on machine learning or deep learning techniques are now available (Oswald et al, 2022; Shonfield & Bayne, 2017; Stowell et al, 2019; Sugai et al, 2019; Wu et al, 2022). More recently, there is also an outstanding approach using transfer learning, which could achieve PAM under conditions with limited training data through the use of a model trained on a given data set to predict a related task (examples targeted at primate calls, Dufourq et al, 2022; Ravaglia et al, 2023).…”
Section: Descriptionmentioning
confidence: 99%
“…More recently, there is also an outstanding approach using transfer learning, which could achieve PAM under conditions with limited training data through the use of a model trained on a given data set to predict a related task (examples targeted at primate calls, Dufourq et al, 2022; Ravaglia et al, 2023). Software packages for these analytical supports are readily accessible, including shareware and opensource R packages (for a detailed software list, see Oswald et al, 2022).…”
Section: Descriptionmentioning
confidence: 99%
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