Local range estimation in wild animals

February 13, 2007

Over the past decade global positioning systems and communications technologies have come together in the design of devices attached to animals that allow us to monitor at regular intervals of time (as fine as a fraction of a minute apart) the location of an animal to within the precision of a few meters. A new class of computational methods have been developed to construct distributions of where such monitored organisms are most likely to be found in space and time using this data, and are much more accurate than previous methods when dealing with large sets of data. Previous methods, called Kernel Methods, were based on associating a parametric distribution, such as a Normal distribution, with each location point. The new methods, referred to as LoCoH (local convex hull) methods, are essentially non-parametric kernel methods where the kernel associated with each data point is constructed directly from that point and a given number of its nearest neighbors. These methods have application to all types of ecological and biological resource management problems, but will prove especially useful in evaluating the spatial needs of threatened species and designing parks to conserve them.
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The following press release refers to an upcoming article in PLoS ONE. The release has been provided by the article authors and/or their institutions. Any opinions expressed in these releases or articles are the personal views of the contributors, and do not necessarily represent the views or policies of PLoS. PLoS expressly disclaims any and all warranties and liability in connection with the information found in the releases and articles and your use of such information.

This study will be published on February 14, 2007 in PLoS ONE, the international, peer-reviewed, open-access, online publication from the Public Library of Science (PLoS).

Citation: Getz WM, Fortmann-Roe S, Cross PC, Lyons AJ, Ryan SJ et al (2007) LoCoH: Nonparameteric Kernel Methods for Constructing Home Ranges and Utilization Distributions. PLoS ONE 2(2): e207. doi:10.1371/journal.pone.0000207

PLEASE ADD THE LINK TO THE PUBLISHED ARTICLE IN ONLINE VERSIONS OF YOUR REPORT: http://dx.doi.org/10.1371/journal.pone.0000207
PRESS ONLY PREVIEW OF THE ARTICLE: http://www.plos.org/press/pone-02-02-getz.pdf

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