Habitat geometry rather than visual acuity limits the visibility of a ground-nesting bird's clutch to terrestrial predators
Creators
- 1. University of Exeter
- 2. Game and Wildlife Conservation Trust*
- 3. University of Bristol
Description
The nests of ground-nesting birds rely heavily on camouflage for their survival, and predation risk, often linked to ecological changes from human activity, is a major source of mortality. Numerous ground-nesting bird populations are in decline, so understanding the effects of camouflage on their nesting behaviour is of relevance to their conservation concern. Habitat three-dimensional (3D) geometry together with predator visual abilities, viewing distance, and viewing angle determine whether a nest is either visible, occluded or too far away to detect. While this link is intuitive, few studies have investigated how fine-scale geometry is likely to help defend nests from different predator guilds. We quantified nest visibility based on 3D occlusion, camouflage, and predator visual modelling in northern lapwing, Vanellus vanellus, on different land management regimes. Lapwings selected local backgrounds that had a higher 3D complexity at a spatial scale greater than their entire clutches compared to local control sites. Importantly, our findings show that habitat geometry – rather than predator visual acuity – restricts nest visibility to terrestrial predators, and that their field habitats perceived by humans as open are functionally closed with respect to a terrestrial predator searching for nests on the ground. Taken together with lapwings' careful nest site selection, our findings highlight the importance of considering habitat geometry for understanding the evolutionary ecology and management of conservation sites for ground-nesting birds.
Notes
Files
EE_NestGeometry_Hancock.et.al.zip
Files
(307.6 MB)
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Additional details
Related works
- Is cited by
- 10.22541/au.168978475.53445460/v1 (DOI)
- Is derived from
- https://github.com/GeorgeHancock471/3D_RNL_Tools (URL)