Exact(2)
Kernel distributions for 100 realizations.
Then, the kernel distributions were estimated.
Similar(58)
In order to improve the representation quality of the quadratic separable kernel distribution, the distribution known as the modified B distribution (MBD) [4, 8, 9] has been proposed.
This drawback of the WVD is the motivation for introducing other TFDs such as Pseudo Wigner-Ville Distribution (PWVD), SPWVD, Choi-Williams Distribution (CWD), and Cohen kernel distribution to define a kernel in ambiguity domain that can eliminate cross terms.
Also, the use of reduced interference TFDs (RIDs -such as MBD, Smoothed WigneRIDs -suchstribution (SWVD), Gasssian Kernel distribution (GKD), SpectrograMBDSmoothedeparable Kernel based RID (SEPK) [[6], Chapter 2 & Section 5.7] slightly improves the performance of the proposed method.
Normal and Kernel distribution was performed on these samples for FAK expression.
Briefly, along each RW, each individual's score is converted to a kernel distribution which contributes to an overall kernel density function formulated for the group to which it belongs [ 49].
We fixed the number of sample to N=10000 and we generated 100 realizations of the subset P S, i, i=1,…,100, of the parameters space with L H S. The kernel distribution estimates for the 100 realizations of the three evaluation functions are shown in Fig. 6 b, 6 c and 6 d, respectively.
To assess AAU habitat selection, we calculated 95% fixed kernel utilization distributions (KDE) in Geospatial Modeling Environment (Ver. 0.7.4; Beyer 2012).
Home range (95% Kernel Utilization Distributions) and use of space (Resource selection function models) for cheetahs reintroduced into a small (284 km2), arid, fenced national park was analysed.
We used data from 16 snow leopards equipped with GPS collars in the Tost Mountains of South Gobi, Mongolia, to calculate home range size and overlap using three different estimators: minimum convex polygons (MCP), kernel utility distributions (Kernel), and local convex hulls (LoCoH).
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