Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis

Estimating population density is critical for effective species conservation, wildlife management planning, and long‐term monitoring. Obtaining accurate estimates is especially important for the wolf (Canis lupus), a widely distributed northern hemisphere apex predator whose management and conservat...

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Published in:Ecosphere
Main Authors: Jiménez, José, Cara, Daniel, García‐Dominguez, Francisco, Barasona García-Arévalo, José Ángel
Format: Article in Journal/Newspaper
Language:English
Published: 2023
Subjects:
Online Access:https://hdl.handle.net/20.500.14352/107493
https://doi.org/10.1002/ecs2.4604
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spelling ftunivcmadrid:oai:docta.ucm.es:20.500.14352/107493 2024-09-15T18:01:06+00:00 Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis Jiménez, José Cara, Daniel García‐Dominguez, Francisco Barasona García-Arévalo, José Ángel 2023-07 application/pdf https://hdl.handle.net/20.500.14352/107493 https://doi.org/10.1002/ecs2.4604 eng eng Jimenez J*, Cara D, Garcia-Dominguez F and Barasona JA. Estimating wolf (Canis lupus) densities using video camera traps and spatial capture-recapture analysis. Ecosphere, 14(7):e4604. 2023. (A). ISSN: 2150-8925. Impact factor: 2.700. Category: Ecology, Quartile: 2, Position: 69 of 195. DOI:10.1002/ecs2.4604 https://hdl.handle.net/20.500.14352/107493 XXXX-XXXX doi:10.1002/ecs2.4604 2150-8925 Attribution 4.0 International http://creativecommons.org/licenses/by/4.0/ open access Camera trap Canis lupus Gregariousness Heterogeneity Identification Population density Spatial capture–recapture Video Wolf Veterinaria 3109 Ciencias Veterinarias journal article AM 2023 ftunivcmadrid https://doi.org/20.500.14352/10749310.1002/ecs2.4604 2024-08-22T23:41:28Z Estimating population density is critical for effective species conservation, wildlife management planning, and long‐term monitoring. Obtaining accurate estimates is especially important for the wolf (Canis lupus), a widely distributed northern hemisphere apex predator whose management and conservation are highly controversial in most of its range, and whose presence usually generates high‐profile media coverage. The peculiarities of wolf social spatial organization and behavior can violate the assumptions of capture–recapture models (uniformity and independence, respectively) to a greater or lesser extent and make it difficult to obtain precise and reliable density estimates. This paper presents a case study, which estimated the population density of the Iberian wolf in the Dorsal Gallega mountain ridge (Galicia, NW Spain) based on the identification of individual wolves from their traits and behavior using video camera traps and spatially explicit capture–recapture (SCR) analyses. The study followed three phases. Firstly, field data were collected by installing camera traps and changing their location until the entire area was sampled. Second, a complete morphological and behavioral study of the wolves recorded was performed to facilitate individual recognition. Third, overdispersion due to gregariousness and other sources of heterogeneity was modeled in the SCR analyses comparing Poisson and negative binomial observation models with different random effects on the baseline detection probability. We estimated a density of 2.88 (SD: 0.37) wolves/100 km2 in the study area. We concluded that estimating wolf population size using camera trap videos, individual identification, and SCR provides a feasible method and can be used for estimating the density in similar species. Ministerio para la Transicion Ecológica y el Reto Demográfico (España) Depto. de Sanidad Animal Centro de Vigilancia Sanitaria Veterinaria (VISAVET) TRUE pub Article in Journal/Newspaper Canis lupus Docta Complutense (Universidad Complutense de Madrid - UCM) Ecosphere 14 7
institution Open Polar
collection Docta Complutense (Universidad Complutense de Madrid - UCM)
op_collection_id ftunivcmadrid
language English
topic Camera trap
Canis lupus
Gregariousness
Heterogeneity
Identification
Population density
Spatial capture–recapture
Video
Wolf
Veterinaria
3109 Ciencias Veterinarias
spellingShingle Camera trap
Canis lupus
Gregariousness
Heterogeneity
Identification
Population density
Spatial capture–recapture
Video
Wolf
Veterinaria
3109 Ciencias Veterinarias
Jiménez, José
Cara, Daniel
García‐Dominguez, Francisco
Barasona García-Arévalo, José Ángel
Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis
topic_facet Camera trap
Canis lupus
Gregariousness
Heterogeneity
Identification
Population density
Spatial capture–recapture
Video
Wolf
Veterinaria
3109 Ciencias Veterinarias
description Estimating population density is critical for effective species conservation, wildlife management planning, and long‐term monitoring. Obtaining accurate estimates is especially important for the wolf (Canis lupus), a widely distributed northern hemisphere apex predator whose management and conservation are highly controversial in most of its range, and whose presence usually generates high‐profile media coverage. The peculiarities of wolf social spatial organization and behavior can violate the assumptions of capture–recapture models (uniformity and independence, respectively) to a greater or lesser extent and make it difficult to obtain precise and reliable density estimates. This paper presents a case study, which estimated the population density of the Iberian wolf in the Dorsal Gallega mountain ridge (Galicia, NW Spain) based on the identification of individual wolves from their traits and behavior using video camera traps and spatially explicit capture–recapture (SCR) analyses. The study followed three phases. Firstly, field data were collected by installing camera traps and changing their location until the entire area was sampled. Second, a complete morphological and behavioral study of the wolves recorded was performed to facilitate individual recognition. Third, overdispersion due to gregariousness and other sources of heterogeneity was modeled in the SCR analyses comparing Poisson and negative binomial observation models with different random effects on the baseline detection probability. We estimated a density of 2.88 (SD: 0.37) wolves/100 km2 in the study area. We concluded that estimating wolf population size using camera trap videos, individual identification, and SCR provides a feasible method and can be used for estimating the density in similar species. Ministerio para la Transicion Ecológica y el Reto Demográfico (España) Depto. de Sanidad Animal Centro de Vigilancia Sanitaria Veterinaria (VISAVET) TRUE pub
format Article in Journal/Newspaper
author Jiménez, José
Cara, Daniel
García‐Dominguez, Francisco
Barasona García-Arévalo, José Ángel
author_facet Jiménez, José
Cara, Daniel
García‐Dominguez, Francisco
Barasona García-Arévalo, José Ángel
author_sort Jiménez, José
title Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis
title_short Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis
title_full Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis
title_fullStr Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis
title_full_unstemmed Estimating wolf (Canis lupus) densities using video camera traps and spatial capture–recapture analysis
title_sort estimating wolf (canis lupus) densities using video camera traps and spatial capture–recapture analysis
publishDate 2023
url https://hdl.handle.net/20.500.14352/107493
https://doi.org/10.1002/ecs2.4604
genre Canis lupus
genre_facet Canis lupus
op_relation Jimenez J*, Cara D, Garcia-Dominguez F and Barasona JA. Estimating wolf (Canis lupus) densities using video camera traps and spatial capture-recapture analysis. Ecosphere, 14(7):e4604. 2023. (A). ISSN: 2150-8925. Impact factor: 2.700. Category: Ecology, Quartile: 2, Position: 69 of 195. DOI:10.1002/ecs2.4604
https://hdl.handle.net/20.500.14352/107493
XXXX-XXXX
doi:10.1002/ecs2.4604
2150-8925
op_rights Attribution 4.0 International
http://creativecommons.org/licenses/by/4.0/
open access
op_doi https://doi.org/20.500.14352/10749310.1002/ecs2.4604
container_title Ecosphere
container_volume 14
container_issue 7
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