Computes an adaptive estimate of the intensity function of a point pattern using the Dirichlet-Voronoi tessellation.
densityVoronoi(X, …)# S3 method for ppp
densityVoronoi(X, f = 1, …,
                          counting=FALSE,
                          fixed=FALSE,
                          nrep = 1, verbose=TRUE)
Point pattern dataset (object of class "ppp").
Fraction (between 0 and 1 inclusive) of the data points that will be used to build a tessellation for the intensity estimate.
Arguments passed to as.im determining the
    pixel resolution of the result.
Logical value specifying the choice of estimation method. See Details.
Logical. If FALSE (the default), the data points are independently
    randomly thinned, so the number of data points that are retained
    is random. If TRUE, the number of data points retained
    is fixed. See Details.
Number of independent repetitions of the randomised procedure.
Logical value indicating whether to print progress reports.
A pixel image (object of class "im") whose values are
  estimates of the intensity of X.
This function is an alternative to density.ppp. It
  computes an estimate of the intensity function of a point pattern
  dataset. The result is a pixel image giving the estimated intensity.
If f=1 (the default), the Voronoi estimate (Barr and Schoenberg, 2010)
  is computed: the point pattern X is used to construct
  a Voronoi/Dirichlet tessellation (see dirichlet);
  the areas of the Dirichlet tiles are computed; the estimated intensity
  in each tile is the reciprocal of the tile area.
  The result is a pixel image
  of intensity estimates which are constant on each tile of the tessellation.
If f=0, the intensity estimate at every location is
  equal to the average intensity (number of points divided by window area).
  The result is a pixel image
  of intensity estimates which are constant.
If f is strictly between 0 and 1,
  the estimation method is applied to a random subset of X.
  This randomised procedure is repeated nrep times,
  and the results are averaged.
  The subset is selected as follows:
if fixed=FALSE,
    the dataset X is randomly
    thinned by deleting or retaining each point independently, with
    probability f of retaining a point.
if fixed=TRUE,
    a random sample of fixed size m is taken from
    the dataset X, where m is the largest integer
    less than or equal to f*n and n is the number of
    points in X.
Then the intensity estimate is calculated as follows:
if counting = FALSE (the default), the thinned pattern
    is used to construct a Dirichlet tessellation and form the
    Voronoi estimate (Barr and Schoenberg, 2010) which is then
    adjusted by a factor 1/f or n/m as appropriate.
    to obtain an estimate
    of the intensity of X in the tile.
if counting = TRUE,
    the randomly selected subset A
    is used to construct a Dirichlet tessellation, while the
    complementary subset B (consisting of points that were not
    selected in the sample) is used for counting
    to calculate a quadrat count estimate of intensity.
    For each tile of the Dirichlet tessellation formed by A,
    we count the number of points of B falling in the
    tile, and divide by the area of the same tile, to obtain an estimate
    of the intensity of the pattern B in the tile.
    This estimate is adjusted by 1/(1-f)
    or n/(n-m) as appropriate 
    to obtain an estimate of the intensity of X in the tile.
Ogata et al. (2003) and Ogata (2004) estimated intensity using the
  Dirichlet-Voronoi tessellation in a modelling context.
  Baddeley (2007) proposed intensity estimation by subsampling
  with 0 < f < 1, and used the  technique described above 
  with fixed=TRUE and counting=TRUE.
  Barr and Schoenberg (2010) described and analysed the
  Voronoi estimator (corresponding to f=1).
  Moradi et al (2019) developed the subsampling technique with
  fixed=FALSE and counting=FALSE and called it the
  smoothed Voronoi estimator.
Baddeley, A. (2007) Validation of statistical models for spatial point patterns. In J.G. Babu and E.D. Feigelson (eds.) SCMA IV: Statistical Challenges in Modern Astronomy IV, volume 317 of Astronomical Society of the Pacific Conference Series, San Francisco, California USA, 2007. Pages 22--38.
Barr, C., and Schoenberg, F.P. (2010). On the Voronoi estimator for the intensity of an inhomogeneous planar Poisson process. Biometrika 97 (4), 977--984.
Moradi, M., Cronie, 0., Rubak, E., Lachieze-Rey, R., Mateu, J. and Baddeley, A. (2019) Resample-smoothing of Voronoi intensity estimators. Statistics and Computing, in press.
Ogata, Y. (2004) Space-time model for regional seismicity and detection of crustal stress changes. Journal of Geophysical Research, 109, 2004.
Ogata, Y., Katsura, K. and Tanemura, M. (2003). Modelling heterogeneous space-time occurrences of earthquakes and its residual analysis. Applied Statistics 52 499--509.
densityVoronoi.lpp,
  adaptive.density,
  density.ppp,
  dirichlet,
  im.object.
# NOT RUN {
  plot(densityVoronoi(nztrees, 1, f=1), main="Voronoi estimate")
  nr <- if(interactive()) 100 else 5
  plot(densityVoronoi(nztrees, f=0.5, nrep=nr), main="smoothed Voronoi estimate")
# }
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