Accounting for matching uncertainty in two stage capture-recapture experiments using photographic measurements of natural marks

We propose a Bayesian hierarchical modeling approach for estimating the size of a closed population from data obtained by identifying individuals through photographs of natural markings. We assume that noisy measurements of a set of distinctive features are available for each individual present in a...

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Bibliographic Details
Published in:Environmental and Ecological Statistics
Main Authors: TANCREDI, ANDREA, Marie Auger Methe, Marianne Marcoux, LISEO, Brunero
Other Authors: Tancredi, Andrea, Marie Auger, Methe, Marianne, Marcoux, Liseo, Brunero
Format: Article in Journal/Newspaper
Language:English
Published: SPRINGER 2013
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Online Access:http://hdl.handle.net/11573/508254
https://doi.org/10.1007/s10651-013-0239-2
Description
Summary:We propose a Bayesian hierarchical modeling approach for estimating the size of a closed population from data obtained by identifying individuals through photographs of natural markings. We assume that noisy measurements of a set of distinctive features are available for each individual present in a photographic catalogue. To estimate the population size from two catalogues obtained during two different sampling occasions, we embed the standard two-stage Mt capture-recapture model for closed population into a multivariate normal data matching model that identifies the common individuals across the catalogues. In addition to estimating the population size while accounting for the matching process uncertainty, this hierarchical modelling approach allows to identify the common individuals by using the information provided by the capture-recapture model. This way, our model also represents a novel and reliable tool able to reduce the amount of effort researchers have to expend in matching individuals. We illustrate and motivate the proposed approach via a real data set of photo-identification of narwhals. Moreover, we compare our method with a set of possible alternative approaches by using both the empirical data set and a simulation study. © 2013 Springer Science+Business Media New York.