Centre for Research into Ecological, and Environmental Modelling, University of St Andrews, St Andrews, Fife, UK.
Department of Computer Science, University of York, Deramore Lane, Heslington, York, UK.
Biometrics. 2022 Mar;78(1):274-285. doi: 10.1111/biom.13403. Epub 2020 Dec 10.
We anticipate that unmanned aerial vehicles will become popular wildlife survey platforms. Because detecting animals from the air is imperfect, we develop a mark-recapture line transect method using two digital cameras, possibly mounted on one aircraft, which cover the same area with a short time delay between them. Animal movement between the passage of the cameras introduces uncertainty in individual identity, so individual capture histories are unobservable and are treated as latent variables. We obtain the likelihood for mark-recapture line transects without capture histories by automatically enumerating all possibilities within segments of the transect that contain ambiguous identities, instead of attempting to decide identities in a prior step. We call this method "Latent Capture-history Enumeration" (LCE). We include an availability model for species that are periodically unavailable for detection, such as cetaceans that are undetectable while diving. External data are needed to estimate the availability cycle length, but not the mean availability rate, if the full availability model is employed. We compare the LCE method with the recently developed cluster capture-recapture method (CCR), which uses a Palm likelihood approximation, providing the first comparison of CCR with maximum likelihood. The LCE estimator has slightly lower variance, more so as sample size increases, and close to nominal coverage probabilities. Both methods are approximately unbiased. We illustrate with semisynthetic data from a harbor porpoise survey.
我们预计无人机将成为流行的野生动物调查平台。由于从空中探测动物并不完美,我们开发了一种使用两架数码相机的标记重捕线截距方法,这些相机可能安装在一架飞机上,它们在短时间延迟内覆盖相同的区域。动物在相机之间的移动会导致个体身份的不确定性,因此个体的捕获历史是不可观测的,被视为潜在变量。我们通过在包含模糊身份的截距段内自动枚举所有可能性,而不是在先前步骤中尝试确定身份,来获得没有捕获历史的标记重捕线截距的可能性。我们称这种方法为“潜在捕获历史枚举”(LCE)。我们为周期性不可检测的物种(例如潜水时无法检测到的鲸鱼)纳入了可用性模型。如果采用完整的可用性模型,则需要外部数据来估计可用性周期长度,但不需要估计平均可用性率。我们将 LCE 方法与最近开发的聚类捕获-再捕获方法(CCR)进行了比较,CCR 使用 Palm 似然逼近,这是首次对 CCR 与最大似然进行比较。LCE 估计量的方差略低,随着样本量的增加,方差更低,并且接近名义覆盖概率。两种方法都近似无偏。我们用港口海豚调查的半合成数据进行说明。