Comparing unmanned aerial systems with conventional methodology for surveying a wild white-tailed deer population

Michael C. Mcmahon, Mark A Ditmer, James D. Forester

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

Context: Ungulate populations are subject to fluctuations caused by extrinsic factors and require efficient and frequent surveying to monitor population sizes and demographics. Unmanned aerial systems (UAS) have become increasingly popular for ungulate research; however, little is understood about how this novel technology compares with conventional methodologies for surveying wild populations. Aims: We examined the feasibility of using a fixed-wing UAS equipped with a thermal infrared sensor for estimating the population density of wild white-tailed deer (Odocoileus virginianus) at the Cedar Creek Ecosystem Science Reserve (CCESR), Minnesota, USA. We compared UAS density estimates with those derived from faecal pellet-group counts. Methods: We conducted UAS thermal survey flights from March to April of 2018 and January to March of 2019. Faecal pellet-group counts were conducted from April to May in 2018 and 2019. We modelled deer counts and detection probabilities and used these results to calculate point estimates and bootstrapped prediction intervals for deer density from UAS and pellet-group count data. We compared results of each survey approach to evaluate the relative efficacy of these two methodologies. Key results: Our best-fitting model of certain deer detections derived from our UAS-collected thermal imagery produced deer density estimates (WR20204-IE1.gif, 95% prediction interval = 4.32-17.84 deer km-2) that overlapped with the pellet-group count model when using our mean pellet deposition rate assumption (WR20204-IE2.gif, 95% prediction interval = 4.14-11.29 deer km-2). Estimates from our top UAS model using both certain and potential deer detections resulted in a mean density of 13.77 deer km-2 (95% prediction interval = 6.64-24.35 deer km-2), which was similar to our pellet-group count model that used a lower rate of pellet deposition (WR20204-IE3.gif, 95% prediction interval = 6.46-17.65 deer km-2). The mean point estimates from our top UAS model predicted a range of 136.68-273.81 deer, and abundance point estimates using our pellet-group data ranged from 112.79 to 239.67 deer throughout the CCESR. Conclusions: Overall, UAS yielded results similar to pellet-group counts for estimating population densities of wild ungulates; however, UAS surveys were more efficient and could be conducted at multiple times throughout the winter. Implications: We demonstrated how UAS could be applied for regularly monitoring changes in population density. We encourage researchers and managers to consider the merits of UAS and how they could be used to enhance the efficiency of wildlife surveys.

Original languageEnglish (US)
Pages (from-to)54-65
Number of pages12
JournalWildlife Research
Volume49
Issue number1
DOIs
StatePublished - Feb 2022

Bibliographical note

Funding Information:
We thank Dr F. Isbell, Dr C. Potter, T. Mielke, and the rest of the staff at the Cedar Creek Ecosystem Science Reserve for their assistance with project planning and field support. We thank Dr T. Arnold and Dr J. Knight of the University of Minnesota Twin Cities for their advisement and input. We thank T. Colten and M. Skelton of Sentera for their technical support and field assistance with deploying the PHX. We thank J. Tillery and D. Brown for their assistance as field technicians. Funding was provided by the Minnesota Agricultural Experiment Station (Project# MIN-41-020), the University of Minnesota Graduate School (fellowship support for M. McMahon), and the Environment and Natural Resources Trust Fund as recommended by the Legislative-Citizen Commission on Minnesota Resources. We also recognise the University of Minnesota Department of Fisheries, Wildlife, and Conservation Biology for its technical support on this project.

Publisher Copyright:
© 2022 CSIRO.

Keywords

  • FLIR
  • UAS
  • deer
  • population estimation
  • thermal detection
  • unmanned aerial system

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