Register      Login
Wildlife Research Wildlife Research Society
Ecology, management and conservation in natural and modified habitats
FOREWORD

Foreword to the Special Issue on ‘The rapidly expanding role of drones as a tool for wildlife research’

Aaron J. Wirsing https://orcid.org/0000-0001-8326-5394 A D , Aaron N. Johnston B and Jeremy J. Kiszka C
+ Author Affiliations
- Author Affiliations

A School of Environmental and Forest Sciences, University of Washington, Seattle, WA 98195, USA.

B U.S. Geological Survey, Northern Rocky Mountain Science Center, Bozeman, MT 59715, USA.

C Institute of Environment, Department of Biological Sciences, Florida International University, North Miami, FL 33818, USA.

D Corresponding author. Email: wirsinga@uw.edu

Wildlife Research 49(1) i-v https://doi.org/10.1071/WR22006
Submitted: 17 January 2022  Accepted: 25 January 2022   Published: 9 February 2022

Abstract

Drones have emerged as a popular wildlife research tool, but their use for many species and environments remains untested and research is needed on validation of sampling approaches that are optimised for unpiloted aircraft. Here, we present a foreword to a special issue that features studies pushing the taxonomic and innovation boundaries of drone research and thus helps address these knowledge and application gaps. We then conclude by highlighting future drone research ideas that are likely to push biology and conservation in exciting new directions.

Keywords: animal behavior, animal health, conflict, habitat characterisation, human–wildlife conflict, remotely piloted aircraft systems, unmanned/unpiloted aerial vehicles, unmanned/unpiloted aircraft systems, RPAS, UAS, UAV.

Drones are now used widely as a tool for wildlife research in both aquatic and terrestrial environments (Christie et al. 2016; Chabot 2018; Joyce et al. 2019). Also known as remotely piloted aircraft systems (RPAS), unmanned/unpiloted aerial vehicles (UAV), or when combined with the technology and software surrounding their operation and use, unmanned/unpiloted aircraft systems (UAS), drones span a wide variety of sizes and platforms. For wildlife research, typically small UAVs, under 10 kg, are employed because of their wide availability, cost effectiveness, and ability to carry sensors that meet many objectives. Drones can accomplish a variety of tasks ranging from remote sensing to monitoring animal populations and even individuals, from their behaviour to their body condition (Chabot and Bird 2015; Linchant et al. 2015; Fiori et al. 2017; Kiszka and Heithaus 2018; Torres et al. 2018; Fust and Loos 2020; Corcoran et al. 2021; Graves et al. in press). Moreover, they have the potential to collect data on wildlife populations and individuals in inaccessible areas, in a way that involves lower cost, and less risk, invasiveness and labour than do more traditional approaches, including direct observations from the ground, the water or piloted vehicles (Christie et al. 2016; Fiori et al. 2017; Wang et al. 2019; Corcoran et al. 2021; Preston et al. 2021). Accordingly, drones are increasingly being recognised for their potential to advance wildlife biology and conservation by enabling, for instance, widespread ground-truthing of satellite imagery and opportunities for multi-modal (e.g. optical and acoustic) animal monitoring, and by facilitating enforcement of animal protections (e.g. by detecting poaching; Chabot and Bird 2015; Nowak et al. 2018; Joyce et al. 2019; Wang et al. 2019; Fust and Loos 2020). However, this promise has yet to be fully realised, in part because of technological and legal constraints, including the limiting effect of battery life and size on load capacity and flight time, as well as flight restrictions that are increasing in many countries around the globe. Furthermore, the use of drone use for many species and environments remains untested and research is needed on validation of sampling approaches that are optimised for unpiloted aircraft (Linchant et al. 2015; Christie et al. 2016; Corcoran et al. 2021).

Featuring studies from both aquatic and terrestrial ecosystems, this special issue of Wildlife Research highlights the environmental and taxonomic reach of drone research today for observing wildlife and, as a corollary, the myriad ways in which drones are helping overcome limitations of and complement more traditional sampling approaches. For example, Aubert et al. (2022) reported a pioneering drone survey of a West African crocodilian assemblage. They found that although they were less effective than nocturnal visual (on-the-ground) surveys, drone surveys were better at detecting crocodilians than were diurnal visual surveys, in large part because their aerial perspective overcomes on-the-ground visual obstructions caused by plants and other forms of habitat complexity. Moreover, drones alleviated many of the considerable logistical constraints imposed by both traditional techniques. This marked efficiency advantage is critical in the system studied by Aubert et al. (2022), and many others, where focal taxa are simultaneously imperilled and difficult to monitor. Sudholz et al. (2022) pushed a different research boundary, showing that drone surveys are an effective means of monitoring invasive species, in their case Rusa deer (Rusa timorensis) in Queensland, Australia, particularly when paired with automated detection via machine learning. Finally, Ejrnæs and Sprogis (2022) used drones off the coast of Western Australia to establish patterns of resting behaviour and energy expenditure in humpback whale (Megaptera novaeangliae) mother–calf pairs (Fig. 1a), providing crucial baselines from an undisturbed population for understanding anthropogenic impacts.


Fig. 1.  (a) Aerial photograph of a humpback whale (Megaptera novaeangliae) mother–calf pair taken during a drone-based focal observation. Ejrnæs and Sprogis (2022) used these drone focal follows to explore patterns of resting behaviour and energy expenditure on a breeding ground off the coast of Western Australia. Photo credit: Kate Sprogis. (b) McMahon et al. (2022) launched a fixed-wing drone equipped with a thermal infrared sensor to estimate white-tailed deer (Odocoileus virginianus) population density. Photo credit: Michael McMahon.
Click to zoom

Just as importantly, this special issue also showcases cutting-edge methods and methodological caveats that should further improve the breadth and rigour of drone research and may also catalyse development of new applications. For example, Saunders et al. (2022) demonstrated that, across a range of landscapes, drone-based radio-tracking allows for much greater spatial coverage than does tracking from the ground. The viewshed analyses Saunders et al. (2022) used to quantify spatial coverage also enabled them to identify telemetry ‘blind spots’ that would need to be surveyed in a more targeted fashion to avoid missing or losing tagged animals. Both Howell et al. (2022) and McMahon et al. (2022) illustrated the effectiveness of drones equipped with thermal sensors, in contrast to more conventional wildlife monitoring approaches. Namely, Howell et al. (2022) showed that thermal imaging drones outperform the two more conventional field-based approaches of spotlighting and diurnal radial searches for detecting the koala (Phascolarctos cinereus), a cryptic forest-dwelling species. Similarly, McMahon et al. (2022) demonstrated that drone surveys estimate white-tailed deer (Odocoileus virginianus) densities as well as conventional pellet counts, while also allowing for greater efficiency and temporal coverage (Fig. 1b). Finally, using decoys to stand in for green sea turtles (Chelonia mydas), Odzer et al. (2022) showed that factors impeding visibility (glare, water depth, substrate vegetation) can markedly degrade subsurface drone detection performance in marine systems, leading them to caution that identifying and accounting for environmental limitations on detection efficacy are crucial components of drone survey design.


Looking ahead

As the role of drones in wildlife research continues to expand, we envision the insights they provide pushing biology and conservation in many exciting new directions. Here, while acknowledging that a full accounting of these future drone research directions is beyond the scope of this foreword, we highlight four such frontiers, namely: (1) individual behaviour for species that challenge focal observation and tracking via more conventional means; (2) monitoring the health of free-ranging animals; (3) assessing the conflicts between wildlife and humans; and (4) enhanced habitat characterisation.

Focal observation has long been a staple in animal behaviour research, merging detailed data collection capacity with the flexibility to monitor individuals or groups and to record spontaneous and unforeseen events (Altmann 1974). Although emerging biologging and tracking technology increasingly enables researchers to infer patterns of animal behaviour without direct visual observation (Smith and Pinter-Wollman 2021), a growing literature cautions of the disturbance responses that can bias drone surveys for some species. In this issue, for example, Landeo-Yauri et al. (2022) show that drone flights elicit persistent changes to respiration rates and activity budgets in captive Antillean manatees (Trichechus manatus manatus). For species without such effects, drones have the potential to address an important data gap. The unparalleled insights that can stem from continuously viewing an individual as it moves through its environment have thus far been largely restricted to species that can be watched (or filmed) directly and circumstances where more cryptic taxa are captured remotely on video (e.g. by motion-activated cameras). UAVs are being used increasingly to conduct focal and collective animal observations (Rieucau et al. 2018; Smith and Pinter-Wollman 2021), although typically while being operated manually (e.g. cetaceans, Torres et al. 2018, 2020; Ejrnæs and Sprogis 2022; rays, Oleksyn et al. 2021). Accordingly, the next advance is to program drones to automatically follow individual animals, or even groups of animals, as they move within and across habitats. Using drones aided by artificial neural networks for image processing, such follows (of individual animals at least) have been conducted successfully in laboratory environments, but automated tracking under field conditions has yet to be attempted (Straw 2021). Drone deployments of this nature offer many exciting research possibilities, including identification of spatiotemporal patterns of cryptic behaviours (e.g. reproduction), exploration of inter- and intraspecific interactions involving cryptic taxa or in inaccessible environments, and comparisons of animal behaviour with and without human observers or other forms of disturbance.

Over the past few years, drones have also proved their value as a tool for investigating individual body condition and size by using photogrammetric methods, and for assessing (and potentially monitoring) individual- and population-level health status (e.g. nutritional status) of a range of species, particularly in marine environments (e.g. Pirotta et al. 2017; Allan et al. 2019; Stewart et al. 2021a). Recent advances have shown that the precision of photogrammetric methods can be dramatically improved using deep learning, reducing the amount of time spent inputting information manually, which will facilitate expansion and development of photogrammetric methods to automatically measure individual animals with the greatest precision (Gray et al. 2019). By implication, drone-based assessments of individual animal condition and size offer a new means of understanding impacts of environmental conditions and degradation associated with human activities on the health, nutritional status, and population dynamics of a range of species, in both aquatic and terrestrial ecosystems. Furthermore, continuous monitoring of changes to body condition and size of individual animals within populations using drones may allow researchers to evaluate long-term trends in associations between these measures and human activities and impacts (e.g. Stewart et al. 2021b).

Another potential area of research involves the use of drones to assess and monitor spatial and temporal patterns of conflicts between humans and wildlife. Both on land and in coastal marine environments, interactions between human activities (e.g. agriculture, tourism, urbanisation) and wildlife may lead to a diversity of challenges (e.g. crop destruction, aggressive interactions between wildlife and tourism), which drones could be employed to monitor at multiple spatial and temporal scales, including in real time. For example, Rutten et al. (2018) used drones to assess the spatial extent of and therefore identify the factors affecting damage to plantations caused by wild boars (Sus scrofa) across multiple habitats with considerable accuracy (Rutten et al. 2018). Such drone monitoring could help shape adaptive management policy aimed at reducing human–wildlife conflict and promoting coexistence.

In addition to animal observations, drones can advance understanding of animal distributions and improve habitat prioritisation for wildlife conservation through enriched spatiotemporal characterisation of wildlife habitat from local to landscape scales. Spatially extensive maps of vegetation, topography and other landscape features are powerful tools that support analyses of habitat selection and suitability mapping for wildlife to investigate innumerable research questions about their habitat requirements and responses to environmental perturbations such as anthropogenic development and climate change. However, vegetation maps are often inadequate in their specificity and accuracy for fine-scale wildlife applications. Drones can provide accurate, high-resolution maps of specific vegetation types or species in focal areas or across a network of sites, which, when combined with other remote-sensing imagery, enables the development of more extensive maps (Kattenborn et al. 2019; Rigge et al. 2020; Bhatnagar et al. 2021). Research has shown that many traditional field measures of vegetation can be replicated from drone imagery (Alonzo et al. 2018; Räsänen and Virtanen 2019; Sankey et al. 2021), which can provide spatially continuous measures over much larger areas to improve accuracy of training data for broad-scale mapping. Inclusion of drones in vegetation monitoring programs that are used to develop vegetation maps from satellite imagery (e.g. Allred et al. 2021) has high potential for improving these mapping efforts but requires extensive research on the capabilities of drone imagery to identify vegetation species and assessment of practical limits to sampling effort and equipment. For example, species identification can be enhanced with data from drone flights, including three-dimensional information from LiDAR or structure-from-motion, hyperspectral imagery, and plant phenology measured from multiple flights. In addition, each of these data types can directly describe important habitat attributes for many wildlife species, such as forest canopy complexity for arboreal species (e.g. Johnston and Moskal 2017) or timing of green-up for migratory species (e.g. Aikens et al. 2017). Finally, the flexibility and cost effectiveness of drones for frequent, targeted deployment with several sensor types allow researchers to test and optimise acquisitions of remotely sensed data to explore new approaches for characterising habitat that explain animal distributions.

Undoubtedly, drones have emerged as powerful and exciting tools for wildlife research with much potential that remains unrealised. As researchers continue to evaluate the capabilities of this technology, we need to consider how drones fit into a broader vision for wildlife research and conservation, including as a means for collecting citizen-science data (Preece 2016). Integration of drones into multi-scale management programs with diverse objectives to provide complete research, monitoring and assessment capabilities will be a challenging but worthwhile endeavour. This new aerial perspective, along with advancing sensors, analytical software, and animal tracking techniques, is inspiring researchers to think creatively about how to answer questions about wildlife, and we look forward to the discoveries that lie ahead.


Data availability

No data were used as part of this paper.


Conflicts of interest

Aaron Wirsing is an Editor-in-Chief for Wildlife Research and served as Editor-in-Chief for this special issue. Aaron Johnston and Jeremy Kiszka were also guest editors for this special issue. The authors have no further conflicts of interest to declare.


Declaration of funding

This research did not receive any specific funding.



Acknowledgements

We thank the journal for supporting this special issue. We are also grateful to the authors who contributed their research to this special issue and the reviewers of those papers. The research reported within this issue was supported by many organisations, which are described in each paper. D. Wood, T. Graves and A. Taylor provided helpful comments that improved this foreword. Any use of trade, firm or product names is for descriptive purposes only and does not imply endorsement by the U.S. Government.


References

Aikens, E. O., Kauffman, M. J., Merkle, J. A., Dwinnell, S. P. H., Fralick, G. L., and Monteith, K. L. (2017). The greenscape shapes surfing of resource waves in a large migratory herbivore. Ecology Letters 20, 741–750.
The greenscape shapes surfing of resource waves in a large migratory herbivore.Crossref | GoogleScholarGoogle Scholar | 28444870PubMed |

Allan, B. M., Ierodiaconou, D., Hoskins, A. J., and Arnould, J. P. (2019). A rapid UAV method for assessing body condition in fur seals. Drones 3, 24.
A rapid UAV method for assessing body condition in fur seals.Crossref | GoogleScholarGoogle Scholar |

Allred, B. W., Bestelmeyer, B. T., Boyd, C. S., Brown, C., Davies, K. W., Duniway, M. C., Ellsworth, L. M., Erickson, T. A., Fuhlendorf, S. D., Griffiths, T. V., Jansen, V., Jones, M. O., Karl, J., Knight, A., Maestas, J. D., Maynard, J. J., McCord, S. E., Naugle, D. E., Starns, H. D., Twidwell, D., and Uden, D. R. (2021). Improving Landsat predictions of rangeland fractional cover with multitask learning and uncertainty. Methods in Ecology and Evolution 12, 841–849.
Improving Landsat predictions of rangeland fractional cover with multitask learning and uncertainty.Crossref | GoogleScholarGoogle Scholar |

Alonzo, M., Andersen, H., Morton, D. C., and Cook, B. D. (2018). Quantifying boreal forest structure and composition using UAV structure from motion. Forests 9, 119.
Quantifying boreal forest structure and composition using UAV structure from motion.Crossref | GoogleScholarGoogle Scholar |

Altmann, J. (1974). Observational study of behavior: sampling methods. Behaviour 49, 227–267.
Observational study of behavior: sampling methods.Crossref | GoogleScholarGoogle Scholar | 4597405PubMed |

Aubert, C., Le Moguédec, G., Assio, C., Blatrix, R., Ahizi, M. N., Hedegbetan, G. C., Kpera, N. G., Lapeyre, V., Martin, D., Labbé, P., and Shirley, M. H. (2022). Evaluation of the use of drones to monitor a diverse crocodylian assemblage in West Africa. Wildlife Research 49, 11–23.
Evaluation of the use of drones to monitor a diverse crocodylian assemblage in West Africa.Crossref | GoogleScholarGoogle Scholar |

Bhatnagar, S., Gilla, L., Regan, S., Waldren, S., and Ghosh, B. (2021). A nested drone-satellite approach to monitoring the ecological conditions of wetlands. ISPRS Journal of Photogrammetry and Remote Sensing 174, 151–165.
A nested drone-satellite approach to monitoring the ecological conditions of wetlands.Crossref | GoogleScholarGoogle Scholar |

Chabot, D. (2018). Trends in drone research and applications as the Journal of Unmanned Vehicle Systems turns five. Journal of Unmanned Vehicle Systems 6, vi–xv.
Trends in drone research and applications as the Journal of Unmanned Vehicle Systems turns five.Crossref | GoogleScholarGoogle Scholar |

Chabot, D., and Bird, D. M. (2015). Wildlife research and management methods in the 21st century: where do unmanned aircraft fit in? Journal of Unmanned Vehicle Systems 3, 137–155.
Wildlife research and management methods in the 21st century: where do unmanned aircraft fit in?Crossref | GoogleScholarGoogle Scholar |

Christie, K. S., Gilbert, S. L., Brown, C. L., Hatfield, M., and Hanson, L. (2016). Unmanned aircraft systems in wildlife research: current and future applications of a transformative technology. Frontiers in Ecology and the Environment 14, 241–251.
Unmanned aircraft systems in wildlife research: current and future applications of a transformative technology.Crossref | GoogleScholarGoogle Scholar |

Corcoran, E., Winsen, M., Sudholz, A., and Hamilton, G. (2021). Automated detection of wildlife using drones: synthesis, opportunities and constraints. Methods in Ecology and Evolution 12, 1103–1114.
Automated detection of wildlife using drones: synthesis, opportunities and constraints.Crossref | GoogleScholarGoogle Scholar |

Ejrnæs, D. D., and Sprogis, K. R. (2022). Ontogenetic changes in energy expenditure and resting behavior of humpback whale mother–calf pairs examined using unmanned aerial vehicles. Wildlife Research 49, 34–45.
Ontogenetic changes in energy expenditure and resting behavior of humpback whale mother–calf pairs examined using unmanned aerial vehicles.Crossref | GoogleScholarGoogle Scholar |

Fiori, L., Doshi, A., Martinez. E., Orams, M. B., and Bollard-Breen, B. (2017). The use of unmanned aerial systems in marine mammal research. Remote Sensing 9, 54310.3390/rs9060543

Fust, P., and Loos, J. (2020). Development perspectives for the application of autonomous, unmanned aerial systems (UAS) in wildlife conservation. Biological Conservation 241, 108380.
Development perspectives for the application of autonomous, unmanned aerial systems (UAS) in wildlife conservation.Crossref | GoogleScholarGoogle Scholar |

Graves, T. A., Yarnall, M., Johnston, A., Chong, G., Cole, E. K., Janousek, W. M., and Cross, P. (2022). Eyes on the herd: quantifying elk aggregation from satellite, GPS, and UAS data. Ecological Applications , .

Gray, P. C., Bierlich, K. C., Mantell, S. A., Friedlaender, A. S., Goldbogen, J. A., and Johnston, D. W. (2019). Drones and convolutional neural networks facilitate automated and accurate cetacean species identification and photogrammetry. Methods in Ecology and Evolution 10, 1490–1500.
Drones and convolutional neural networks facilitate automated and accurate cetacean species identification and photogrammetry.Crossref | GoogleScholarGoogle Scholar |

Howell, L. G., Clulow, J., Jordan, N. R., Beranek, C. T., Ryan, S. A., Roff, A., and Witt, R. R. (2022). Drone thermal imaging technology provides a cost-effective tool for landscape-scale monitoring of a cryptic forest-dwelling species across all population densities. Wildlife Research 49, 66–78.
Drone thermal imaging technology provides a cost-effective tool for landscape-scale monitoring of a cryptic forest-dwelling species across all population densities.Crossref | GoogleScholarGoogle Scholar |

Johnston, A. N., and Moskal, L. M. (2017). High-resolution habitat modeling with airborne LiDAR for red tree voles. The Journal of Wildlife Management 81, 58–72.
High-resolution habitat modeling with airborne LiDAR for red tree voles.Crossref | GoogleScholarGoogle Scholar |

Joyce, K. E., Duce, S., Leahy, S. M., Leon, J., and Maier, S. W. (2019). Principles and practice of acquiring drone-based image data in marine environments. Marine and Freshwater Research 70, 952–963.
Principles and practice of acquiring drone-based image data in marine environments.Crossref | GoogleScholarGoogle Scholar |

Kattenborn, T., Lopatin, J., Förster, M., Braun, A. C., and Fassnacht, F. E. (2019). UAV data as alternative to field sampling to map woody invasive species based on combined Sentinel-1 and Sentinel-2 data. Remote Sensing of Environment 227, 61–73.
UAV data as alternative to field sampling to map woody invasive species based on combined Sentinel-1 and Sentinel-2 data.Crossref | GoogleScholarGoogle Scholar |

Kiszka, J. J., and Heithaus, M. R. (2018). Using aerial surveys to investigate the distribution, abundance, and behavior of sharks and rays. In ‘Shark Research: Emerging Technologies and Applications for the Field and Laboratory’. (Eds C. Carrier, M. R. Heithaus, C. A. Simpfendorfer.) pp. 71–82. (CRC Press: Boca Raton, FL, USA.)

Landeo-Yauri, S. S., Castelblanco-Martínez, D. N., Hénaut, Y., Arreola, M. R., and Ramos, E. A. (2022). Behavioural and physiological responses of captive Antillean manatees to small aerial drones. Wildlife Research 49, 24–33.
Behavioural and physiological responses of captive Antillean manatees to small aerial drones.Crossref | GoogleScholarGoogle Scholar |

Linchant, J., Lisein, J., Semeki, J., Lejeune, P., and Vermeulen, C. (2015). Are unmanned aircraft systems (UASs) the future of wildlife monitoring? A review of accomplishments and challenges. Mammal Review 45, 239–252.
Are unmanned aircraft systems (UASs) the future of wildlife monitoring? A review of accomplishments and challenges.Crossref | GoogleScholarGoogle Scholar |

McMahon, M. C., Ditmer, M. A., and Forester, J. D. (2022). Comparing unmanned aerial systems with conventional methodology for surveying a wild white-tailed deer population. Wildlife Research 49, 54–65.
Comparing unmanned aerial systems with conventional methodology for surveying a wild white-tailed deer population.Crossref | GoogleScholarGoogle Scholar |

Nowak, M. M., Dziób, K., and Bogawski, P. (2018). Unmanned aerial vehicles (UAVs) in environmental biology: a review. European Journal of Ecology 4, 56–74.
Unmanned aerial vehicles (UAVs) in environmental biology: a review.Crossref | GoogleScholarGoogle Scholar |

Odzer, M. N., Brooks, A. M. L., Heithaus, M. R., and Whitman, E. R. (2022). Effects of environmental factors on the detection of subsurface green turtles in aerial drone surveys. Wildlife Research 49, 79–88.
Effects of environmental factors on the detection of subsurface green turtles in aerial drone surveys.Crossref | GoogleScholarGoogle Scholar |

Oleksyn, S., Tosetto, L., Raoult, V., and Williamson, J. E. (2021). Drone-based tracking of the fine-scale movement of a coastal stingray (Bathytoshia brevicaudata). Remote Sensing 13, 40.
Drone-based tracking of the fine-scale movement of a coastal stingray (Bathytoshia brevicaudata).Crossref | GoogleScholarGoogle Scholar |

Pirotta, V., Smith, A., Ostrowski, M., Russell, D., Jonsen, I. D., Grech, A., and Harcourt, R. (2017). An economical custom-built drone for assessing whale health. Frontiers in Marine Science 4, 425.
An economical custom-built drone for assessing whale health.Crossref | GoogleScholarGoogle Scholar |

Preece, J. (2016). Citizen science: new research challenges for human–computer interaction. International Journal of Human–Computer Interaction 32, 585–612.
Citizen science: new research challenges for human–computer interaction.Crossref | GoogleScholarGoogle Scholar |

Preston, T. P., Wildhaber, M. L., Green, N. S., Albers, J. L., and Debenedetto, G. P. (2021). Enumerating white-tailed deer using Unmanned Aerial Vehicles. Wildlife Society Bulletin 45, 97–108.
Enumerating white-tailed deer using Unmanned Aerial Vehicles.Crossref | GoogleScholarGoogle Scholar |

Räsänen, A., and Virtanen, T. (2019). Data and resolution requirements in mapping vegetation in spatially heterogeneous landscapes. Remote Sensing of Environment 230, 111207.
Data and resolution requirements in mapping vegetation in spatially heterogeneous landscapes.Crossref | GoogleScholarGoogle Scholar |

Rieucau, G., Kiszka, J. J., Castillo, J. C., Mourier, J., Boswell, K. M., and Heithaus, M. R. (2018). Using unmanned aerial vehicle (UAV) surveys and image analysis in the study of large surface‐associated marine species: a case study on reef sharks Carcharhinus melanopterus shoaling behaviour. Journal of Fish Biology 93, 119–127.
Using unmanned aerial vehicle (UAV) surveys and image analysis in the study of large surface‐associated marine species: a case study on reef sharks Carcharhinus melanopterus shoaling behaviour.Crossref | GoogleScholarGoogle Scholar | 29855056PubMed |

Rigge, M., Homer, C., Cleeves, L., Meyer, D. K., Bunde, B., Shi, H., Xian, G., Schell, S., and Bobo, M. (2020). Quantifying western US rangelands as fractional components with multi-resolution remote sensing and in situ data. Remote Sensing 12, 412.
Quantifying western US rangelands as fractional components with multi-resolution remote sensing and in situ data.Crossref | GoogleScholarGoogle Scholar |

Rutten, A., Casaer, J., Vogels, M. F., Addink, E. A., Vanden Borre, J., and Leirs, H. (2018). Assessing agricultural damage by wild boar using drones. Wildlife Society Bulletin 42, 568–576.
Assessing agricultural damage by wild boar using drones.Crossref | GoogleScholarGoogle Scholar |

Sankey, J. B., Sankey, T. T., Li, J., Ravi, S., Wang, G., Caster, J., and Kasprak, A. (2021). Quantifying plant-soil-nutrient dynamics in rangelands: fusion of UAV hyperspectral-LiDAR, UAV multispectral-photogrammetry, and ground-based LiDAR-digital photography in a shrub-encroached desert grassland. Remote Sensing of Environment 253, 112223.
Quantifying plant-soil-nutrient dynamics in rangelands: fusion of UAV hyperspectral-LiDAR, UAV multispectral-photogrammetry, and ground-based LiDAR-digital photography in a shrub-encroached desert grassland.Crossref | GoogleScholarGoogle Scholar |

Saunders, D., Nguyen, H., Cowen, S., Magrath, M., Marsh, K., Bell, S., and Bobruk, J. (2022). Radio-tracking wildlife with drones: a viewshed analysis quantifying survey coverage across diverse landscapes. Wildlife Research 49, 1–10.
Radio-tracking wildlife with drones: a viewshed analysis quantifying survey coverage across diverse landscapes.Crossref | GoogleScholarGoogle Scholar |

Smith, J. A., and Pinter-Wollman, N. (2021). Observing the unwatchable: integrating automated sensing, naturalistic observations and animal social network analysis in the age of big data. Journal of Animal Ecology 90, 62–75.
Observing the unwatchable: integrating automated sensing, naturalistic observations and animal social network analysis in the age of big data.Crossref | GoogleScholarGoogle Scholar |

Stewart, J. D., Durban, J. W., Fearnbach, H., Barrett‐Lennard, L. G., Casler, P. K., Ward, E. J., and Dapp, D. R. (2021a). Survival of the fattest: linking body condition to prey availability and survivorship of killer whales. Ecosphere 12, e03660.
Survival of the fattest: linking body condition to prey availability and survivorship of killer whales.Crossref | GoogleScholarGoogle Scholar |

Stewart, J. D., Durban, J. W., Knowlton, A. R., Lynn, M. S., Fearnbach, H., Barbaro, J., Perryman, W. L., Miller, C. A., and Moore, M. J. (2021b). Decreasing body lengths in North Atlantic right whales. Current Biology 31, 3174–3179.
Decreasing body lengths in North Atlantic right whales.Crossref | GoogleScholarGoogle Scholar | 34087102PubMed |

Straw, A. D. (2021). Review of methods for animal videography using camera systems that automatically move to follow the animal. Integrative and Comparative Biology 61, 917–925.
Review of methods for animal videography using camera systems that automatically move to follow the animal.Crossref | GoogleScholarGoogle Scholar | 34117754PubMed |

Sudholz, A., Denman, S., Pople, A., Brennan, M., Amos, M., and Hamilton, G. (2022). A comparison of manual and automated detection of rusa deer (Rusa timorensis) from RPAS-derived thermal imagery. Wildlife Research 49, 46–53.
A comparison of manual and automated detection of rusa deer (Rusa timorensis) from RPAS-derived thermal imagery.Crossref | GoogleScholarGoogle Scholar |

Torres, L. G., Nieukirk, S. L., Lemos, L., and Chandler, T. E. (2018). Drone up! Quantifying whale behavior from a new perspective improves observational capacity. Frontiers in Marine Science 5, 319.
Drone up! Quantifying whale behavior from a new perspective improves observational capacity.Crossref | GoogleScholarGoogle Scholar |

Torres, L. G., Barlow, D. R., Chandler, T. E., and Burnett, J. D. (2020). Insight into the kinematics of blue whale surface foraging through drone observations and prey data. PeerJ 8, e8906.
Insight into the kinematics of blue whale surface foraging through drone observations and prey data.Crossref | GoogleScholarGoogle Scholar | 32351781PubMed |

Wang, D., Shao, Q., and Yue, H. (2019). Surveying wild animals from satellites, manned aircraft and unmanned aerial systems (UASs): a review. Remote Sensing 11, 1308.
Surveying wild animals from satellites, manned aircraft and unmanned aerial systems (UASs): a review.Crossref | GoogleScholarGoogle Scholar |