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Accounting for matching uncertainty in two stage capture-recapture experiments using photographic measurements of natural marks

机译:考虑自然标记的摄影测量在两阶段捕获-捕获实验中的匹配不确定性

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摘要

We propose a Bayesian hierarchical modeling approach for estimating the size of a closed population from data obtained by identifying individuals through photographs of natural markings. We assume that noisy measurements of a set of distinctive features are available for each individual present in a photographic catalogue. To estimate the population size from two catalogues obtained during two different sampling occasions, we embed the standard two-stage M_t capture-recapture model for closed population into a multivariate normal data matching model that identifies the common individuals across the catalogues. In addition to estimating the population size while accounting for the matching process uncertainty, this hierarchical modelling approach allows to identify the common individuals by using the information provided by the capture-recapture model. This way, our model also represents a novel and reliable tool able to reduce the amount of effort researchers have to expend in matching individuals. We illustrate and motivate the proposed approach via a real data set of photo-identification of narwhals. Moreover, we compare our method with a set of possible alternative approaches by using both the empirical data set and a simulation study.
机译:我们提出了一种贝叶斯分层建模方法,用于根据通过自然标记照片识别个人而获得的数据来估计封闭人口的规模。我们假设摄影目录中的每个人都可以使用一组独特功能的噪声测量。为了从在两个不同采样时机获得的两个目录中估计种群规模,我们将标准的两阶段M_t捕获-捕获模型用于封闭人群嵌入到多变量正常数据匹配模型中,该模型可识别目录中的常见个体。除了在考虑匹配过程不确定性的情况下估计人口规模之外,这种分层建模方法还允许通过使用捕获-捕获模型提供的信息来识别普通个体。这样,我们的模型也代表了一种新颖而可靠的工具,能够减少研究人员在匹配个人时所花费的精力。我们通过对独角鲸进行照片识别的真实数据集来说明并激发提出的方法。此外,我们通过使用经验数据集和模拟研究,将我们的方法与一组可能的替代方法进行了比较。

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