rGaussPoisson(kappa, r, p2, win = owin(c(0,1),c(0,1)))
"owin"
or something acceptable to as.owin
."ppp"
). Additionally, some intermediate results of the simulation are
returned as attributes of this point pattern.
See rNeymanScott
.
win
.
The process is constructed by first
generating a Poisson point process of parent points
with intensity kappa
. Then each parent point is either retained
(with probability 1 - p2
)
or replaced by a pair of points at a fixed distance r
apart
(with probability p2
). In the case of clusters of 2 points,
the line joining the two points has uniform random orientation.In this implementation, parent points are not restricted to lie in the window; the parent process is effectively the uniform Poisson process on the infinite plane.
rpoispp
,
rThomas
,
rMatClust
,
rNeymanScott
pp <- rGaussPoisson(30, 0.07, 0.5)
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