Loading…
SEAFWA 2017 has ended
Welcome to the interactive web schedule for the 2017 SEAFWA Conference! For tips on how to navigate this site, visit the "Helpful Info" section. To return to the SEAFWA website, go to: www.seafwa.org/conference/overview

Note: Session titles beginning with an asterisk (*) have student presenters.
Wednesday, November 1 • 11:20am - 11:40am
Wildlife Track. Public Geospatial Datasets as an Approach to Maximizing Efficiency in the Collection of Site Covariates in Wildlife–Vehicle Collision Studies

Sign up or log in to save this to your schedule, view media, leave feedback and see who's attending!

AUTHORS: James Vance, Department of Mathematics and Computer Science, The University of Virginia’s College at Wise; Walter Smith, Department of Natural Sciences, The University of Virginia’s College at Wise; Gabrielle Smith, The University of Virginia’s College at Wise

ABSTRACT: Wildlife-vehicle collisions (WVCs) are a major research focus because of increasing human health and safety concerns and the potential for biological impacts on wildlife. A key component of both understanding the causes of WVCs and designing mitigation measures is the collection and analysis of environmental and roadway data at WVC sites. However, collecting these site data can be logistically challenging and potentially dangerous to researchers. We studied the feasibility and accuracy of using public geospatial datasets, particularly Google Earth and Street View, as an alternative approach to assessing WVC onsite covariates. We randomly selected 50 sites from a larger WVC study and measured the topography, habitat type, width of the road median, and presence of fencing at each site as representatives of typical WVC site covariates. We compared the measurements recorded in the field to estimates obtained from public geospatial datasets in the lab. We determined that median topography had the lowest overall accuracy (60%), followed by presence of fencing with accuracy at 75% of sites. By contrast, median habitat type was identified correctly in almost all comparisons (96% overall accuracy). The root mean squared error for median width was 1.15 m overall. Our results suggest that Google platforms may serve as viable alternatives to field data collection for site covariates related to coarse measures of habitat type and some characteristics of road topography, thus reducing time requirements and potential safety risks to researchers in the field.

Wednesday November 1, 2017 11:20am - 11:40am EDT
Carroll Ford

Attendees (3)