Abstract
A fast, robust technique is needed to facilitate studies of
vocalisations by dolphins and other marine mammals such as whales
in which large quantities of acoustic data are commonly generated.
It is sometimes necessary to be able to describe whistle contours
quantitatively, rather than simply looking at descriptors such as
start frequency, maximum frequency, number of inflection points,
etc. This is important when whistles are to be compared using an
automated classification system, and is an essential component of a
real-time, automated classification system for use with a raw data
stream. In this paper we describe a rapid and robust high order
polynomial curve fitting technique which extracts features in
preparation for automated classifica- tion. We applied this method
to classify natural vocalizations of Indo-Pacific humpback dolphins
(Sousa chinensis). We believe the method will be widely applicable
to bioacoustic studies involving FM acoustic signals in both
underwater and in-air environments.
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