Alibhai Sky, Jewell Zoe, Evans Jonah
Nicholas School of the Environment, Duke University, Durham, North Carolina, United States of America.
JMP Division, SAS, Cary, North Carolina, United States of America.
PLoS One. 2017 Mar 8;12(3):e0172065. doi: 10.1371/journal.pone.0172065. eCollection 2017.
Acquiring reliable data on large felid populations is crucial for effective conservation and management. However, large felids, typically solitary, elusive and nocturnal, are difficult to survey. Tagging and following individuals with VHF or GPS technology is the standard approach, but costs are high and these methodologies can compromise animal welfare. Such limitations can restrict the use of these techniques at population or landscape levels. In this paper we describe a robust technique to identify and sex individual pumas from footprints. We used a standardized image collection protocol to collect a reference database of 535 footprints from 35 captive pumas over 10 facilities; 19 females (300 footprints) and 16 males (235 footprints), ranging in age from 1-20 yrs. Images were processed in JMP data visualization software, generating one hundred and twenty three measurements from each footprint. Data were analyzed using a customized model based on a pairwise trail comparison using robust cross-validated discriminant analysis with a Ward's clustering method. Classification accuracy was consistently > 90% for individuals, and for the correct classification of footprints within trails, and > 99% for sex classification. The technique has the potential to greatly augment the methods available for studying puma and other elusive felids, and is amenable to both citizen-science and opportunistic/local community data collection efforts, particularly as the data collection protocol is inexpensive and intuitive.
获取大型猫科动物种群的可靠数据对于有效的保护和管理至关重要。然而,大型猫科动物通常独居、难以捉摸且夜行性强,难以进行调查。使用甚高频(VHF)或全球定位系统(GPS)技术标记和跟踪个体是标准方法,但成本高昂,且这些方法可能会损害动物福利。这些限制可能会限制这些技术在种群或景观层面的应用。在本文中,我们描述了一种从足迹识别美洲狮个体并判断性别的可靠技术。我们使用标准化图像采集协议,从10个设施中的35只圈养美洲狮收集了535个足迹的参考数据库;其中19只为雌性(300个足迹),16只为雄性(235个足迹),年龄范围为1至20岁。图像在JMP数据可视化软件中进行处理,每个足迹生成123个测量数据。使用基于成对足迹比较的定制模型进行数据分析,该模型采用稳健的交叉验证判别分析和沃德聚类方法。个体分类准确率始终>90%,足迹在路径内的正确分类准确率>90%,性别分类准确率>99%。该技术有可能极大地扩充研究美洲狮和其他难以捉摸的猫科动物的可用方法,并且适用于公民科学以及机会性/当地社区的数据收集工作,特别是因为数据收集协议成本低廉且直观。