Spatial models for distance sampling data: recent developments and future directions



This article is corrected by:

  1. Errata: Corrigendum Article first published online: 25 March 2017


  1. Our understanding of a biological population can be greatly enhanced by modelling their distribution in space and as a function of environmental covariates. Such models can be used to investigate the relationships between distribution and environmental covariates as well as reliably estimate abundances and create maps of animal/plant distribution.
  2. Density surface models consist of a spatial model of the abundance of a biological population which has been corrected for uncertain detection via distance sampling methods.
  3. We review recent developments in the field and consider the likely directions of future research before focussing on a popular approach based on generalized additive models. In particular, we consider spatial modelling techniques that may be advantageous to applied ecologists such as quantification of uncertainty in a two-stage model and smoothing in areas with complex boundaries.
  4. The methods discussed are available in an R package developed by the authors (dsm) and are largely implemented in the popular Windows software Distance.