Jimenez Jose, Chandler Richard, Tobajas Jorge, Descalzo Esther, Mateo Rafael, Ferreras Pablo
Instituto de Investigación en Recursos Cinegéticos (IREC, CSIC-UCLM-JCCM) Ciudad Real Spain.
Warnell School of Forestry and Natural Resources University of Georgia Athens Georgia.
Ecol Evol. 2019 Mar 22;9(8):4739-4748. doi: 10.1002/ece3.5077. eCollection 2019 Apr.
The estimation of abundance of wildlife populations is an essential part of ecological research and monitoring. Spatially explicit capture-recapture (SCR) models are widely used for abundance and density estimation, frequently through individual identification of target species using camera-trap sampling.Generalized spatial mark-resight (Gen-SMR) is a recently developed SCR extension that allows for abundance estimation when only a subset of the population is recognizable by artificial or natural marks. However, in many cases, it is not possible to read the marks in camera-trap pictures, even though individuals can be recognized as marked. We present a new extension of Gen-SMR that allows for this type of incomplete identification.We used simulation to assess how the number of marked individuals and the individual identification rate influenced bias and precision. We demonstrate the model's performance in estimating red fox () density with two empirical datasets characterized by contrasting densities and rates of identification of marked individuals. According to the simulations, accuracy increases with the number of marked individuals (), but is less sensitive to changes in individual identification rate (δ). In our case studies of red fox density estimation, we obtained a posterior mean of 1.60 (standard deviation SD: 0.32) and 0.28 (: 0.06) individuals/km, in high and low density, with an identification rate of 0.21 and 0.91, respectively.This extension of Gen-SMR is broadly applicable as it addresses the common problem of incomplete identification of marked individuals during resighting surveys.
野生动物种群数量的估计是生态研究和监测的重要组成部分。空间明确的捕获再捕获(SCR)模型被广泛用于数量和密度估计,通常是通过使用相机陷阱采样对目标物种进行个体识别。广义空间标记重捕(Gen-SMR)是最近开发的一种SCR扩展模型,当只有一部分种群可以通过人工或自然标记识别时,它可以用于估计种群数量。然而,在许多情况下,即使个体可以被识别为有标记,也无法在相机陷阱照片中读取标记。我们提出了一种新的Gen-SMR扩展模型,以解决这种不完全识别的问题。我们使用模拟来评估有标记个体的数量和个体识别率如何影响偏差和精度。我们用两个具有不同密度和标记个体识别率的实证数据集,展示了该模型在估计赤狐(Vulpes vulpes)密度方面的性能。根据模拟结果,准确性随着有标记个体的数量(m)增加而提高,但对个体识别率(δ)的变化不太敏感。在我们对赤狐密度估计的案例研究中,在高密度和低密度情况下,识别率分别为0.21和0.91时,我们得到的后验均值分别为每平方公里1.60(标准差SD:0.32)和0.28(标准差:0.06)只。Gen-SMR的这种扩展具有广泛的适用性,因为它解决了重捕调查中标记个体不完全识别的常见问题。