Remote Sensing (Feb 2022)

Estimating Wildlife Density as a Function of Environmental Heterogeneity Using Unmarked Data

  • Thomas Connor,
  • Wildlife Division,
  • Emilio Tripp,
  • William T. Bean,
  • B. J. Saxon,
  • Jessica Camarena,
  • Asa Donahue,
  • Daniel Sarna-Wojcicki,
  • Luke Macaulay,
  • William Tripp,
  • Justin Brashares

DOI
https://doi.org/10.3390/rs14051087
Journal volume & issue
Vol. 14, no. 5
p. 1087

Abstract

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Recent developments to spatial-capture recapture models have allowed their use on species whose members are not uniquely identifiable from photographs by including individual identity as a latent, unobserved variable in the model. These ‘unmarked’ spatial capture recapture (uSCR) models have also been extended to presence-absence data and modified to allow categorical environmental covariates on density, but a uSCR model, which allows fitting continuous environmental covariates to density, has yet to be formulated. In this paper, we fill this gap and present an extension to the uSCR modeling framework by modeling animal density on a discrete state space as a function of continuous environmental covariates and investigate a form of Bayesian variable selection to improve inference. We used an elk population in their winter range within Karuk Indigenous Territory in Northern California as a case study and found a positive credible effect of increasing forb/grass cover on elk density and a negative credible effect of increasing tree cover on elk density. We posit that our extensions to uSCR modeling increase its utility in a wide range of ecological and management applications in which spatial counts of wildlife can be derived and environmental heterogeneity acts as a control on animal density.

Keywords