A flexible framework for spatial capture-recapture with unknown identities

Author:

van Dam-Bates Paul1ORCID,Papathomas Michail1ORCID,Stevenson Ben C2ORCID,Fewster Rachel M2ORCID,Turek Daniel3ORCID,Stewart Frances E C4,Borchers David L15ORCID

Affiliation:

1. School of Mathematics and Statistics, University of St Andrews , St Andrews, Fife, KY16 9LZ , United Kingdom

2. Department of Statistics, University of Auckland , Auckland, 1010 , New Zealand

3. Department of Mathematics and Statistics, Williams College , Williamstown, 01267 , United States

4. Department of Biology, Wilfrid Laurier University , Waterloo, N2L 3C5 , Canada

5. Centre for Statistics in Ecology, Environment and Conservation, Department of Statistical Sciences, University of Cape Town , Private Bag 7700, Rondebosch , South Africa

Abstract

ABSTRACT Camera traps or acoustic recorders are often used to sample wildlife populations. When animals can be individually identified, these data can be used with spatial capture-recapture (SCR) methods to assess populations. However, obtaining animal identities is often labor-intensive and not always possible for all detected animals. To address this problem, we formulate SCR, including acoustic SCR, as a marked Poisson process, comprising a single counting process for the detections of all animals and a mark distribution for what is observed (eg, animal identity, detector location). The counting process applies equally when it is animals appearing in front of camera traps and when vocalizations are captured by microphones, although the definition of a mark changes. When animals cannot be uniquely identified, the observed marks arise from a mixture of mark distributions defined by the animal activity centers and additional characteristics. Our method generalizes existing latent identity SCR models and provides an integrated framework that includes acoustic SCR. We apply our method to estimate density from a camera trap study of fisher (Pekania pennanti) and an acoustic survey of Cape Peninsula moss frog (Arthroleptella lightfooti). We also test it through simulation. We find latent identity SCR with additional marks such as sex or time of arrival to be a reliable method for estimating animal density.

Funder

Innotech Alberta

Natural Sciences and Engineering Research Council of Canada

Publisher

Oxford University Press (OUP)

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