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:



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


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

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:


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

  • 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

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