Acoustic censusing using automatic vocalization classification and identity recognition
Authors:
- Kuntoro Adi,
- Michael T. Johnson,
- Tomasz Stanisław Osiejuk
Abstract
This paper presents an advanced method to acoustically assess animal abundance. The framework combines supervised classification (song-type and individual identity recognition), unsupervised classification (individual identity clustering), and the mark-recapture model of abundance estimation. The underlying algorithm is based on clustering using hidden Markov models (HMMs) and Gaussian mixture models (GMMs) similar to methods used in the speech recognition community for tasks such as speaker identification and clustering. Initial experiments using a Norwegian ortolan bunting (Emberiza hortulana) data set show the feasibility and effectiveness of the approach. Individually distinct acoustic features have been observed in a wide range of animal species, and this combined with the widespread success of speaker identification and verification methods for human speech suggests that robust automatic identification of individuals from their vocalizations is attainable. Only a few studies, however, have yet attempted to use individual acoustic distinctiveness to directly assess population density and structure. The approach introduced here offers a direct mechanism for using individual vocal variability to create simpler and more accurate population assessment tools in vocally active species. © 2010 Acoustical Society of America.
- Record ID
- UAM663773f875d44ee0a552d78b4b6d7f71
- Author
- Journal series
- Journal of the Acoustical Society of America, ISSN 0001-4966
- Issue year
- 2010
- Vol
- 127
- Pages
- 874-883
- ASJC Classification
- ;
- DOI
- DOI:10.1121/1.3273887 Opening in a new tab
- Language
- (en) English
- Score (nominal)
- 0
- Score source
- journalList
- Publication indicators
- = 18; = 23; : 2010 = 1.516; : 2010 (2 years) = 1.644 - 2010 (5 years) =1.900
- Uniform Resource Identifier
- https://researchportal.amu.edu.pl/info/article/UAM663773f875d44ee0a552d78b4b6d7f71/
- URN
urn:amu-prod:UAM663773f875d44ee0a552d78b4b6d7f71
* presented citation count is obtained through Internet information analysis and it is close to the number calculated by the Publish or PerishOpening in a new tab system.