6

I have a stack of 4 rasters. I would like the average correlation through time between a pixel and each of its 8 neighbors.

some data:

library(raster)  

r1=raster(matrix(runif(25),nrow=5))
r2=raster(matrix(runif(25),nrow=5))
r3=raster(matrix(runif(25),nrow=5))
r4=raster(matrix(runif(25),nrow=5))
s=stack(r1,r2,r3,r4)

so for a pixel at position x, which has 8 neighbors at the NE, E, SE, S etc positions, I want the average of

cor(x,NE)
cor(x,E)
cor(x,SE)
cor(x,S)
cor(x,SW)
cor(x,W)
cor(x,NW)
cor(x,N)

and the average value saved at position x in the resulting raster. The edge cells would be NA or, if possible a flag to calculate the average correlation just with the cells it touches (either 3 or 5 cells). Thanks!

  • 1
    You probably are looking for the focal function. – user3710546 Jun 19 '15 at 3:38
  • focal() takes only a raster layer object as an argument, not a stack. It won't extract across multiple layers. – Forrest R. Stevens Jun 19 '15 at 4:09
6

I don't believe @Pascal's suggestion of using focal() could work because focal() takes a single raster layer as an argument, not a stack. This is the solution that is easiest to understand. It could be made more efficient by minimizing the number of times you extract values for each focal cell:

library(raster)  

set.seed(2002)
r1 <- raster(matrix(runif(25),nrow=5))
r2 <- raster(matrix(runif(25),nrow=5))
r3 <- raster(matrix(runif(25),nrow=5))
r4 <- raster(matrix(runif(25),nrow=5))
s <- stack(r1,r2,r3,r4)

##  Calculate adjacent raster cells for each focal cell:
a <- adjacent(s, 1:ncell(s), directions=8, sorted=T)

##  Create column to store correlations:
out <- data.frame(a)
out$cors <- NA

##  Loop over all focal cells and their adjacencies,
##    extract the values across all layers and calculate
##    the correlation, storing it in the appropriate row of
##    our output data.frame:
for (i in 1:nrow(a)) {
    out$cors[i] <- cor(c(s[a[i,1]]), c(s[a[i,2]]))
}

##  Take the mean of the correlations by focal cell ID:
r_out_vals <- aggregate(out$cors, by=list(out$from), FUN=mean)

##  Create a new raster object to store our mean correlations in
##    the focal cell locations:
r_out <- s[[1]]
r_out[] <- r_out_vals$x

plot(r_out)
  • clever! I did not know about adjacent. I was trying to use focal with a for loop to change the weights matrix and stackApply to extract the necessary values into a dataframe...same idea as this but not nearly as slick. and a bookkeeping headache. thanks! – Dominik Jun 19 '15 at 4:23
  • 1
    There is also the corLocal method, but that is for a slightly different case. – Robert Hijmans Jun 19 '15 at 4:38
  • You're welcome, and thanks Robert (in addition to writing the package) for mentioning the corLocal function, it's a huge time saver in the more common correlation use case it's designed for. – Forrest R. Stevens Jun 19 '15 at 4:57

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.