Veterinary Public Health Institute, Vetsuisse Faculty, University of Bern, Bern, Switzerland.
Universidad del Valle, Guatemala City, Guatemala.
PLoS One. 2020 Apr 8;15(4):e0225022. doi: 10.1371/journal.pone.0225022. eCollection 2020.
Population size estimation is performed for several reasons including disease surveillance and control, for example to design adequate control strategies such as vaccination programs or to estimate a vaccination campaign coverage. In this study, we aimed at investigating the possibility of using Unmanned Aerial Vehicles (UAV) to estimate the size of free-roaming domestic dog (FRDD) populations and compare the results with two regularly used methods for population estimations: foot-patrol transect survey and the human: dog ratio estimation. Three studies sites of one square kilometer were selected in Petén department, Guatemala. A door-to-door survey was conducted in which all available dogs were marked with a collar and owner were interviewed. The day after, UAV flight were performed twice during two consecutive days per study site. The UAV's camera was set to regularly take pictures and cover the entire surface of the selected areas. Simultaneously to the UAV's flight, a foot-patrol transect survey was performed and the number of collared and non-collared dogs were recorded. Data collected during the interviews and the number of dogs counted during the foot-patrol transects informed a capture-recapture (CR) model fit into a Bayesian inferential framework to estimate the dog population size, which was found to be 78, 259, and 413 in the three study sites. The difference of the CR model estimates compared to previously available dog census count (110 and 289) can be explained by the fact that the study population addressed by the different methods differs. The human: dog ratio covered the same study population as the dog census and tended to underestimate the FRDD population size (97 and 161). Under the conditions within this study, the total number of dogs identified on the UAV pictures was 11, 96, and 71 for the three regions (compared to the total number of dogs counted during the foot-patrol transects of 112, 354 and 211). In addition, the quality of the UAV pictures was not sufficient to assess the presence of a mark on the spotted dogs. Therefore, no CR model could be implemented to estimate the size of the FRDD using UAV. We discussed ways for improving the use of UAV for this purpose, such as flying at a lower altitude in study area wisely chosen. We also suggest to investigate the possibility of using infrared camera and automatic detection of the dogs to increase visibility of the dogs in the pictures and limit workload of finding them. Finally, we discuss the need of using models, such as spatial capture-recapture models to obtain reliable estimates of the FRDD population. This publication may provide helpful directions to design dog population size estimation methods using UAV.
人口规模估计是出于多种原因进行的,包括疾病监测和控制,例如设计适当的控制策略,如疫苗接种计划或估计疫苗接种运动的覆盖范围。在这项研究中,我们旨在调查使用无人机 (UAV) 估计自由漫游的家养犬 (FRDD) 数量的可能性,并将结果与两种常用于人口估计的方法进行比较:步行巡逻样带调查和人与狗的比例估计。在危地马拉的佩滕省选择了三个一平方公里的研究地点。进行了一次挨家挨户的调查,其中所有可用的狗都用项圈标记,并对其主人进行了采访。第二天,在每个研究地点进行了两次连续两天的无人机飞行。无人机的摄像头设置为定期拍摄照片并覆盖所选区域的整个表面。同时,在 UAV 飞行期间,进行了步行巡逻样带调查,并记录了戴项圈和未戴项圈的狗的数量。在采访中收集的数据和步行巡逻样带中记录的狗的数量为一个基于贝叶斯推理框架的捕获-再捕获 (CR) 模型提供了信息,以估计狗的数量,结果发现三个研究地点的狗的数量分别为 78、259 和 413。与之前可用的狗普查计数(110 和 289)相比,CR 模型估计值的差异可以用不同方法所针对的研究人群不同来解释。人与狗的比例涵盖了与狗普查相同的研究人群,并倾向于低估 FRDD 的数量(97 和 161)。在本研究条件下,无人机图像上识别出的狗的总数分别为三个地区的 11、96 和 71(相比之下,步行巡逻样带中记录的狗的总数分别为 112、354 和 211)。此外,无人机拍摄的照片质量不足以评估斑点狗身上是否有标记。因此,无法使用 CR 模型来估计使用 UAV 的 FRDD 数量。我们讨论了改善使用无人机进行此项工作的方法,例如明智地选择在研究区域以较低的高度飞行。我们还建议研究使用红外摄像机和自动检测狗的可能性,以增加图片中狗的可见度并减少找到它们的工作量。最后,我们讨论了使用空间捕获-再捕获模型等模型获得 FRDD 数量可靠估计的必要性。本出版物可能为使用无人机设计犬只数量估计方法提供有益的方向。