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Corey T. Callaghan

Researcher at University of New South Wales

Publications -  80
Citations -  1249

Corey T. Callaghan is an academic researcher from University of New South Wales. The author has contributed to research in topics: Biodiversity & Biology. The author has an hindex of 12, co-authored 55 publications receiving 522 citations. Previous affiliations of Corey T. Callaghan include Martin Luther University of Halle-Wittenberg & Czech University of Life Sciences Prague.

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Generalists are the most urban-tolerant of birds: a phylogenetically controlled analysis of ecological and life history traits using a novel continuous measure of bird responses to urbanization

TL;DR: In this paper, the authors developed a methodology that evaluated the ecological and life history traits which most influence a species' adaptability to persist in urban environments and assigned species-specific scores based on continuous measures of response to urbanization, using VIIRS night-time light values (i.e. radiance) as a proxy for urbanization.
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Improving big citizen science data: Moving beyond haphazard sampling.

TL;DR: This paper argues that the haphazard structure of the data has been seen as an unfortunate but unchangeable aspect of citizen science data, and provides a very simple, tractable framework that could be adapted by broadscale citizen science projects to allow citizen scientists to optimize the marginal value of their efforts.
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Efficacy of eBird data as an aid in conservation planning and monitoring

TL;DR: In this article, the authors compared a year of standardized shorebird surveys by trained observers at Snook Islands Natural Area located in Palm Beach County, Florida, to the year of eBird observations from the same site.
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Monitoring large and complex wildlife aggregations with drones

TL;DR: In this article, a generalised semi-automated approach where machine learning can map targets of interest in drone imagery, supported by predictive modelling for estimating wildlife aggregation populations is presented.