raster (version 2.6-7)

corLocal: Local correlation coefficient

Description

Local correlation coefficient for two RasterLayer objects (using a focal neighborhood) or for two RasterStack or Brick objects (with the same number of layers (> 2))

Usage

# S4 method for RasterLayer,RasterLayer
corLocal(x, y, ngb=5, 
     method=c("pearson", "kendall", "spearman"), test=FALSE, filename='', ...)

# S4 method for RasterStackBrick,RasterStackBrick corLocal(x, y, method=c("pearson", "kendall", "spearman"), test=FALSE, filename='', ...)

Arguments

x

RasterLayer or RasterStack/RasterBrick

y

object of the same class as x, and with the same number of layers

ngb

neighborhood size. Either a single integer or a vector of two integers c(nrow, ncol)

method

character indicating which correlation coefficient is to be used. One of "pearson", "kendall", or "spearman"

test

logical. If TRUE, return a p-value

filename

character. Output filename (optional)

...

additional arguments as for writeRaster

Value

RasterLayer

See Also

cor, cor.test

Examples

Run this code
# NOT RUN {
b <- stack(system.file("external/rlogo.grd", package="raster"))
b <- aggregate(b, 2, mean)

set.seed(0)
b[[2]] <- flip(b[[2]], 'y') + runif(ncell(b))
b[[1]] <- b[[1]] + runif(ncell(b))

x <- corLocal(b[[1]], b[[2]], test=TRUE )
# plot(x)

# only cells where the p-value < 0.1
xm <- mask(x[[1]], x[[2]] < 0.1, maskvalue=FALSE)
plot(xm)


# for global correlation, use the cor function
x <- as.matrix(b)
cor(x, method="spearman")
 
# use sampleRegular for large datasets
x <- sampleRegular(b, 1000)
cor.test(x[,1], x[,2])

# RasterStack or Brick objects
y <- corLocal(b, flip(b, 'y'))
# }

Run the code above in your browser using DataCamp Workspace