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Predicting bird song from space.

Authors :
Smith, Thomas B.
Harrigan, Ryan J.
Kirschel, Alexander N. G.
Buermann, Wolfgang
Saatchi, Sassan
Blumstein, Daniel T.
de Kort, Selvino R.
Slabbekoorn, Hans
Source :
Evolutionary Applications. Sep2013, Vol. 6 Issue 6, p865-874. 10p.
Publication Year :
2013

Abstract

Environmentally imposed selection pressures are well known to shape animal signals. Changes in these signals can result in recognition mismatches between individuals living in different habitats, leading to reproductive divergence and speciation. For example, numerous studies have shown that differences in avian song may be a potent prezygotic isolating mechanism. Typically, however, detailed studies of environmental pressures on variation in animal behavior have been conducted only at small spatial scales. Here, we use remote-sensing data to predict animal behavior, in this case, bird song, across vast spatial scales. We use remotely sensed data to predict the song characteristics of the little greenbul (Andropadus virens), a widely distributed African passerine, found across secondary and mature rainforest habitats and the rainforest-savanna ecotone. Satellite data that captured ecosystem structure and function explained up to 66% of the variation in song characteristics. Song differences observed across habitats, including those between human-altered and mature rainforest, have the potential to lead to reproductive divergence, and highlight the impacts that both natural and anthropogenic change may have on natural populations. Our approach offers a novel means to examine the ecological correlates of animal behavior across large geographic areas with potential applications to both evolutionary and conservation biology. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17524563
Volume :
6
Issue :
6
Database :
Academic Search Index
Journal :
Evolutionary Applications
Publication Type :
Academic Journal
Accession number :
102204864
Full Text :
https://doi.org/10.1111/eva.12072