Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.

Medium-to-large mammals within tropical forests represent a rich and functionally diversified component of this biome; however, they continue to be threatened by hunting and habitat loss. Assessing these communities implies studying species' richness and composition, and determining a state var...

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Main Authors: Francesco Rovero, Emanuel Martin, Melissa Rosa, Jorge A Ahumada, Daniel Spitale
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4108438?pdf=render
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spelling doaj-a791760604944c128e565e204f34a6592020-11-25T02:22:52ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0197e10330010.1371/journal.pone.0103300Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.Francesco RoveroEmanuel MartinMelissa RosaJorge A AhumadaDaniel SpitaleMedium-to-large mammals within tropical forests represent a rich and functionally diversified component of this biome; however, they continue to be threatened by hunting and habitat loss. Assessing these communities implies studying species' richness and composition, and determining a state variable of species abundance in order to infer changes in species distribution and habitat associations. The Tropical Ecology, Assessment and Monitoring (TEAM) network fills a chronic gap in standardized data collection by implementing a systematic monitoring framework of biodiversity, including mammal communities, across several sites. In this study, we used TEAM camera trap data collected in the Udzungwa Mountains of Tanzania, an area of exceptional importance for mammal diversity, to propose an example of a baseline assessment of species' occupancy. We used 60 camera trap locations and cumulated 1,818 camera days in 2009. Sampling yielded 10,647 images of 26 species of mammals. We estimated that a minimum of 32 species are in fact present, matching available knowledge from other sources. Estimated species richness at camera sites did not vary with a suite of habitat covariates derived from remote sensing, however the detection probability varied with functional guilds, with herbivores being more detectable than other guilds. Species-specific occupancy modelling revealed novel ecological knowledge for the 11 most detected species, highlighting patterns such as 'montane forest dwellers', e.g. the endemic Sanje mangabey (Cercocebus sanjei), and 'lowland forest dwellers', e.g. suni antelope (Neotragus moschatus). Our results show that the analysis of camera trap data with account for imperfect detection can provide a solid ecological assessment of mammal communities that can be systematically replicated across sites.http://europepmc.org/articles/PMC4108438?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Francesco Rovero
Emanuel Martin
Melissa Rosa
Jorge A Ahumada
Daniel Spitale
spellingShingle Francesco Rovero
Emanuel Martin
Melissa Rosa
Jorge A Ahumada
Daniel Spitale
Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
PLoS ONE
author_facet Francesco Rovero
Emanuel Martin
Melissa Rosa
Jorge A Ahumada
Daniel Spitale
author_sort Francesco Rovero
title Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
title_short Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
title_full Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
title_fullStr Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
title_full_unstemmed Estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
title_sort estimating species richness and modelling habitat preferences of tropical forest mammals from camera trap data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Medium-to-large mammals within tropical forests represent a rich and functionally diversified component of this biome; however, they continue to be threatened by hunting and habitat loss. Assessing these communities implies studying species' richness and composition, and determining a state variable of species abundance in order to infer changes in species distribution and habitat associations. The Tropical Ecology, Assessment and Monitoring (TEAM) network fills a chronic gap in standardized data collection by implementing a systematic monitoring framework of biodiversity, including mammal communities, across several sites. In this study, we used TEAM camera trap data collected in the Udzungwa Mountains of Tanzania, an area of exceptional importance for mammal diversity, to propose an example of a baseline assessment of species' occupancy. We used 60 camera trap locations and cumulated 1,818 camera days in 2009. Sampling yielded 10,647 images of 26 species of mammals. We estimated that a minimum of 32 species are in fact present, matching available knowledge from other sources. Estimated species richness at camera sites did not vary with a suite of habitat covariates derived from remote sensing, however the detection probability varied with functional guilds, with herbivores being more detectable than other guilds. Species-specific occupancy modelling revealed novel ecological knowledge for the 11 most detected species, highlighting patterns such as 'montane forest dwellers', e.g. the endemic Sanje mangabey (Cercocebus sanjei), and 'lowland forest dwellers', e.g. suni antelope (Neotragus moschatus). Our results show that the analysis of camera trap data with account for imperfect detection can provide a solid ecological assessment of mammal communities that can be systematically replicated across sites.
url http://europepmc.org/articles/PMC4108438?pdf=render
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