2013
DOI: 10.1111/2041-210x.12078
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Abundance estimation with sightability data: aBayesian data augmentation approach

Abstract: (Biometrics 1989; 45, 415-425) showed how logistic regression models, fit to detection data collected from radiocollared animals, can be used to estimate and adjust for visibility bias in wildlife population surveys. Population abundance is estimated using a modified Horvitz-Thompson (mHT) estimator in which counts of observed animal groups are divided by their estimated inclusion probabilities (determined by plot-level sampling probabilities and detection probabilities estimated from radiocollared individual… Show more

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Cited by 15 publications
(35 citation statements)
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“…Given that the population is hunted, bison in the Henry Mountains may respond to aerial surveys by segregating from their original group and moving into yet‐to‐be surveyed areas, which could easily result in duplicate observations as a survey progresses. Our approach to estimating ungulate abundance from aerial surveys while accounting for duplicate observations should be applied to sample‐unit estimation of density in design‐based surveys whenever nonrandom movement may occur (Fieberg and Giudice , Fieberg et al ).…”
Section: Discussionmentioning
confidence: 99%
“…Given that the population is hunted, bison in the Henry Mountains may respond to aerial surveys by segregating from their original group and moving into yet‐to‐be surveyed areas, which could easily result in duplicate observations as a survey progresses. Our approach to estimating ungulate abundance from aerial surveys while accounting for duplicate observations should be applied to sample‐unit estimation of density in design‐based surveys whenever nonrandom movement may occur (Fieberg and Giudice , Fieberg et al ).…”
Section: Discussionmentioning
confidence: 99%
“…The first term compares the observed data with the posterior predictive mean and provides a measure of model fit, and the second term represents posterior predictive variances and adds a penalty for model complexity (Gelfand and Ghosh , Fieberg et al. , Hooten and Hobbs ). Lower PPL scores indicate better model performance.…”
Section: Methodsmentioning
confidence: 99%
“…For instance, Chen et al initializes the hyper-parameters of DCNN with an unsupervised sparse autoencoder machine rather than the Backpropagation algorithm used in AlexNet model [9]. The unsupervised sparse autoencoder machine possesses the auto-learning capacity, which accelerates the feature learning of DCNN [10]. The experiment of this method on MSTAR database obtains a target recognition accuracy of 90.1% for 3 classes and 84.7% for 10 classes.…”
Section: I! Introductionmentioning
confidence: 99%