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spatstat.explore (version 3.1-0)

Kmeasure: Reduced Second Moment Measure

Description

Estimates the reduced second moment measure \(\kappa\) from a point pattern in a window of arbitrary shape.

Usage

Kmeasure(X, sigma, edge=TRUE, ..., varcov=NULL)

Value

A real-valued pixel image (an object of class "im", see im.object) whose pixel values are estimates of the density of the reduced second moment measure at each location.

Arguments

X

The observed point pattern, from which an estimate of \(\kappa\) will be computed. An object of class "ppp", or data in any format acceptable to as.ppp().

sigma

Standard deviation \(\sigma\) of the Gaussian smoothing kernel. Incompatible with varcov.

edge

Logical value indicating whether an edge correction should be applied.

...

Arguments passed to as.mask controlling the pixel resolution.

varcov

Variance-covariance matrix of the Gaussian smoothing kernel. Incompatible with sigma.

Warning

Some writers use the term reduced second moment measure when they mean the \(K\)-function. This has caused confusion.

As originally defined, the reduced second moment measure is a measure, obtained by modifying the second moment measure, while the \(K\)-function is a function obtained by evaluating this measure for discs of increasing radius. In spatstat, the \(K\)-function is computed by Kest and the reduced second moment measure is computed by Kmeasure.

Author

Adrian Baddeley Adrian.Baddeley@curtin.edu.au and Rolf Turner r.turner@auckland.ac.nz

Details

Given a point pattern dataset, this command computes an estimate of the reduced second moment measure \(\kappa\) of the point process. The result is a pixel image whose pixel values are estimates of the density of the reduced second moment measure.

The reduced second moment measure \(\kappa\) can be regarded as a generalisation of the more familiar \(K\)-function. An estimate of \(\kappa\) derived from a spatial point pattern dataset can be useful in exploratory data analysis. Its advantage over the \(K\)-function is that it is also sensitive to anisotropy and directional effects.

In a nutshell, the command Kmeasure computes a smoothed version of the Fry plot. As explained under fryplot, the Fry plot is a scatterplot of the vectors joining all pairs of points in the pattern. The reduced second moment measure is (essentially) defined as the average of the Fry plot over different realisations of the point process. The command Kmeasure effectively smooths the Fry plot of a dataset to obtain an estimate of the reduced second moment measure.

In formal terms, the reduced second moment measure \(\kappa\) of a stationary point process \(X\) is a measure defined on the two-dimensional plane such that, for a `typical' point \(x\) of the process, the expected number of other points \(y\) of the process such that the vector \(y - x\) lies in a region \(A\), equals \(\lambda \kappa(A)\). Here \(\lambda\) is the intensity of the process, i.e. the expected number of points of \(X\) per unit area.

The \(K\)-function is a special case. The function value \(K(t)\) is the value of the reduced second moment measure for the disc of radius \(t\) centred at the origin; that is, \(K(t) = \kappa(b(0,t))\).

The command Kmeasure computes an estimate of \(\kappa\) from a point pattern dataset X, which is assumed to be a realisation of a stationary point process, observed inside a known, bounded window. Marks are ignored.

The algorithm approximates the point pattern and its window by binary pixel images, introduces a Gaussian smoothing kernel and uses the Fast Fourier Transform fft to form a density estimate of \(\kappa\). The calculation corresponds to the edge correction known as the ``translation correction''.

The Gaussian smoothing kernel may be specified by either of the arguments sigma or varcov. If sigma is a single number, this specifies an isotropic Gaussian kernel with standard deviation sigma on each coordinate axis. If sigma is a vector of two numbers, this specifies a Gaussian kernel with standard deviation sigma[1] on the \(x\) axis, standard deviation sigma[2] on the \(y\) axis, and zero correlation between the \(x\) and \(y\) axes. If varcov is given, this specifies the variance-covariance matrix of the Gaussian kernel. There do not seem to be any well-established rules for selecting the smoothing kernel in this context.

The density estimate of \(\kappa\) is returned in the form of a real-valued pixel image. Pixel values are estimates of the normalised second moment density at the centre of the pixel. (The uniform Poisson process would have values identically equal to \(1\).) The image x and y coordinates are on the same scale as vector displacements in the original point pattern window. The point x=0, y=0 corresponds to the `typical point'. A peak in the image near (0,0) suggests clustering; a dip in the image near (0,0) suggests inhibition; peaks or dips at other positions suggest possible periodicity.

If desired, the value of \(\kappa(A)\) for a region \(A\) can be estimated by computing the integral of the pixel image over the domain \(A\), i.e.\ summing the pixel values and multiplying by pixel area, using integral.im. One possible application is to compute anisotropic counterparts of the \(K\)-function (in which the disc of radius \(t\) is replaced by another shape). See Examples.

References

Stoyan, D, Kendall, W.S. and Mecke, J. (1995) Stochastic geometry and its applications. 2nd edition. Springer Verlag.

Stoyan, D. and Stoyan, H. (1994) Fractals, random shapes and point fields: methods of geometrical statistics. John Wiley and Sons.

See Also

Kest, fryplot, spatstat.options, integral.im, im.object

Examples

Run this code
 plot(Kmeasure(cells, 0.05))
 # shows pronounced dip around origin consistent with strong inhibition
 plot(Kmeasure(redwood, 0.03), col=grey(seq(1,0,length=32)))
 # shows peaks at several places, reflecting clustering and ?periodicity
 M <- Kmeasure(cells, 0.05)
 # evaluate measure on a sector
 W <- Window(M)
 ang <- as.im(atan2, W)
 rad <- as.im(function(x,y){sqrt(x^2+y^2)}, W)
 sector <- solutionset(ang > 0 & ang < 1 & rad < 0.6)
 integral.im(M[sector, drop=FALSE])

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