Kcross(X, i, j, r=NULL, breaks=NULL, correction, ..., ratio=FALSE)X from which distances are measured.
    A character string (or something that will be converted to a
    character string).
    Defaults to the first level of marks(X).X to which distances are measured.
    A character string (or something that will be
    converted to a character string).
    Defaults to the second level of marks(X).r.
    Not normally invoked by the user. See the Details section."border", "bord.modif",
    "isotropic", "Ripley", "translate",
    "translation",
    "none" or TRUE, the numerator and denominator of
    each edge-corrected estimate will also be saved,
    for use in analysing replicated point patterns."fv" (see fv.object).Essentially a data frame containing numeric columns
"border", "bord.modif",
  "iso" and/or "trans",
  according to the selected edge corrections. These columns contain
  estimates of the function $K_{ij}(r)$
  obtained by the edge corrections named.  If ratio=TRUE then the return value also has two
  attributes called "numerator" and "denominator"
  which are "fv" objects
  containing the numerators and denominators of each
  estimate of $K(r)$.
i and j are always interpreted as
  levels of the factor X$marks. They are converted to character
  strings if they are not already character strings.
  The value i=1 does not
  refer to the first level of the factor.Kcross and its companions
  Kdot and Kmulti
  are generalisations of the function Kest
  to multitype point patterns.   A multitype point pattern is a spatial pattern of
  points classified into a finite number of possible
  ``colours'' or ``types''. In the X must be a point pattern (object of class
  "ppp") or any data that are acceptable to as.ppp.
  It must be a marked point pattern, and the mark vector
  X$marks must be a factor.
  The arguments i and j will be interpreted as
  levels of the factor X$marks. 
  If i and j are missing, they default to the first
  and second level of the marks factor, respectively.
  
  The ``cross-type'' (type $i$ to type $j$)
  $K$ function 
  of a stationary multitype point process $X$ is defined so that
  $\lambda_j K_{ij}(r)$ equals the expected number of
  additional random points of type $j$
  within a distance $r$ of a
  typical point of type $i$ in the process $X$.
  Here $\lambda_j$
  is the intensity of the type $j$ points,
  i.e. the expected number of points of type $j$ per unit area.
  The function $K_{ij}$ is determined by the 
  second order moment properties of $X$.
An estimate of $K_{ij}(r)$ is a useful summary statistic in exploratory data analysis of a multitype point pattern. If the process of type $i$ points were independent of the process of type $j$ points, then $K_{ij}(r)$ would equal $\pi r^2$. Deviations between the empirical $K_{ij}$ curve and the theoretical curve $\pi r^2$ may suggest dependence between the points of types $i$ and $j$.
  This algorithm estimates the distribution function $K_{ij}(r)$ 
  from the point pattern X. It assumes that X can be treated
  as a realisation of a stationary (spatially homogeneous) 
  random spatial point process in the plane, observed through
  a bounded window.
  The window (which is specified in X as X$window)
  may have arbitrary shape.
  Biases due to edge effects are
  treated in the same manner as in Kest,
  using the border correction.
  The argument r is the vector of values for the
  distance $r$ at which $K_{ij}(r)$ should be evaluated. 
  The values of $r$ must be increasing nonnegative numbers
  and the maximum $r$ value must not exceed the radius of the
  largest disc contained in the window.
  The pair correlation function can also be applied to the
  result of Kcross; see pcf.
Diggle, P.J. Statistical analysis of spatial point patterns. Academic Press, 1983.
Harkness, R.D and Isham, V. (1983) A bivariate spatial point pattern of ants' nests. Applied Statistics 32, 293--303 Lotwick, H. W. and Silverman, B. W. (1982). Methods for analysing spatial processes of several types of points. J. Royal Statist. Soc. Ser. B 44, 406--413.
Ripley, B.D. Statistical inference for spatial processes. Cambridge University Press, 1988.
Stoyan, D, Kendall, W.S. and Mecke, J. Stochastic geometry and its applications. 2nd edition. Springer Verlag, 1995.
Kdot,
 Kest,
 Kmulti,
 pcf# amacrine cells data
    K01 <- Kcross(amacrine, "off", "on") 
    plot(K01)
    <testonly>K01 <- Kcross(amacrine, "off", "on", ratio=TRUE)</testonly>
    K10 <- Kcross(amacrine, "on", "off")
    # synthetic example: point pattern with marks 0 and 1
    pp <- runifpoispp(50)
    pp <- pp %mark% factor(sample(0:1, npoints(pp), replace=TRUE))
    K <- Kcross(pp, "0", "1")
    K <- Kcross(pp, 0, 1) # equivalentRun the code above in your browser using DataLab