Title of article
A method for automated individual, species and call type recognition in free-ranging animals
Author/Authors
Alexander Mielke ، نويسنده , , KLAUS ZUBERBuHLER، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
8
From page
475
To page
482
Abstract
The ability to identify individuals reliably is often a key prerequisite for animal behaviour studies in the wild. In primates, recognition of other group members can be based on individual differences in the voice, but these cues are typically too subtle for human observers. We applied a combined mechanism consisting of a call feature extraction (mel frequency cepstral coefficients) and pattern recognition algorithm (artificial neural networks) to investigate whether automated caller identification is possible in free-ranging primates. The mechanism was tested for its accuracy in recognizing species, call type and caller identity in a large population of free-ranging blue monkeys, Cercopithecus mitis stuhlmanni, in Budongo Forest, Uganda. Classification was highly accurate with 96% at the species, 98% at the call type and 73% at the caller level. It also outperformed conventional discriminant function analysis in the individual recognition task. We conclude that software based on this method will make a powerful tool for future animal behaviour research, as it allows for automatic, fast and objective classifications in different animal species.
Keywords
mel frequency cepstral coefficient , voice recognition , Artificial neural network , Cercopithecus mitis , blue monkey
Journal title
Animal Behaviour
Serial Year
2013
Journal title
Animal Behaviour
Record number
1284628
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