rMatClust(kappa, r, mu, 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.  In the simplest case, where kappa and mu
  are single numbers, the algorithm 
  generates a uniform Poisson point process of kappa. Then each parent point is
  replaced by a random cluster of mu)
  distributed, and their
  positions being placed and uniformly inside
  a disc of radius r centred on the parent point.
  The resulting point pattern
  is a realisation of the classical
  win.
  This point process has intensity kappa * mu.
  The algorithm can also generate spatially inhomogeneous versions of
  the 
kappais afunction(x,y)or a pixel image (object of class"im"), then it is taken
    as specifying the intensity function of an inhomogeneous Poisson
    process that generates the parent points.muis afunction(x,y)or a pixel image (object of class"im"), then it is
    interpreted as the reference density for offspring points,
    in the sense of Waagepetersen (2007).
    For a given parent point, the offspring constitute a Poisson process
    with intensity function equal tomu/(pi * r^2)inside the disc of radiusrcentred on the parent
    point, and zero intensity outside this disc.
    Equivalently we first generate,
    for each parent point, a Poisson ($M$) random number of
    offspring (where$M$is the maximum value ofmu)
    placed independently and uniformly in the disc of radiusrcentred on the parent location, and then randomly thin the
    offspring points, with retention probabilitymu/M.  Note that if kappa is a pixel image, its domain must be larger
  than the window win. This is because an offspring point inside
  win could have its parent point lying outside win.
  In order to allow this, the simulation algorithm
  first expands the original window win
  by a distance r and generates the Poisson process of
  parent points on this larger window. If kappa is a pixel image,
  its domain must contain this larger window.
  The intensity of the kappa * mu
  if either kappa or mu is a single number. In the general
  case the intensity is an integral involving kappa, mu
  and r.
  The kappa is a single number)
  can be fitted to data using kppm or related functions.
  Currently it is not possible to fit the
  
  
Waagepetersen, R. (2007) An estimating function approach to inference for inhomogeneous Neyman-Scott processes. Biometrics 63, 252--258.
rpoispp,
  rThomas,
  rGaussPoisson,
  rNeymanScott,
  matclust.estK,
  matclust.estpcf,
  kppm.# homogeneous
 X <- rMatClust(10, 0.05, 4)
 # inhomogeneous
 Z <- as.im(function(x,y){ 4 * exp(2 * x - 1) }, owin())
 Y <- rMatClust(10, 0.05, Z)Run the code above in your browser using DataLab