Learn R Programming

spatstat (version 1.64-1)

density.psp: Kernel Smoothing of Line Segment Pattern or Linear Network

Description

Compute a kernel smoothed intensity function from a line segment pattern or a linear network.

Usage

# S3 method for psp
density(x, sigma, …, edge=TRUE,
                   method=c("FFT", "C", "interpreted"),
                   at=NULL)

# S3 method for linnet density(x, …)

Arguments

x

Line segment pattern (object of class "psp") or linear network (object of class "linnet") to be smoothed.

sigma

Standard deviation of isotropic Gaussian smoothing kernel.

Extra arguments, including arguments passed to as.mask to determine the resolution of the resulting image.

edge

Logical flag indicating whether to apply edge correction.

method

Character string (partially matched) specifying the method of computation. Option "FFT" is the fastest, while "C" is the most accurate.

at

Optional. An object specifying the locations where density values should be computed. Either a window (object of class "owin") or a point pattern (object of class "ppp" or "lpp").

Value

A pixel image (object of class "im") or a numeric vector.

Details

These are methods for the generic function density for the classes "psp" (line segment patterns) and "linnet" (linear networks). If x is a linear network, it is first converted to a line segment pattern.

A kernel estimate of the intensity of the line segment pattern is computed. The result is the convolution of the isotropic Gaussian kernel, of standard deviation sigma, with the line segments. The result is computed as follows:

  • if method="FFT" (the default), the line segments are discretised using pixellate.psp, then the Fast Fourier Transform is used to calculate the convolution. This method is the fastest, but is slightly less accurate. Accuracy can be improved by increasing pixel resolution.

  • if method="C" the exact value of the convolution at the centre of each pixel is computed analytically using C code;

  • if method="interpreted", the exact value of the convolution at the centre of each pixel is computed analytically using R code. This method is the slowest.

If edge=TRUE this result is adjusted for edge effects by dividing it by the convolution of the same Gaussian kernel with the observation window.

If the argument at is given, then it specifies the locations where density values should be computed.

  • If at is a window, then the window is converted to a binary mask using the arguments , and density values are computed at the centre of each pixel in this mask. The result is a pixel image.

  • If at is a point pattern, then density values are computed at each point location, and the result is a numeric vector.

See Also

psp.object, im.object, density

Examples

Run this code
# NOT RUN {
  L <- psp(runif(20),runif(20),runif(20),runif(20), window=owin())
  D <- density(L, sigma=0.03)
  plot(D, main="density(L)")
  plot(L, add=TRUE)
# }

Run the code above in your browser using DataLab