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Does somebody know whether there is a sliding window method in R for 2d matrices and not just vectors. I need to apply median function to an image stored in matrix

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migrated from Mar 29 '12 at 18:59

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possible duplicate of Rolling median algorithm in C – Joshua Ulrich Mar 29 '12 at 19:04

The function focal() in the excellent raster package is good for this. It takes several arguments beyond those shown in the example below, and can be used to specify a non-rectangular sliding window if that's needed.


## Create some example data
m <- matrix(1, ncol=10, nrow=10)
diag(m) <- 2
r <- as(m, "RasterLayer") # Coerce matrix to RasterLayer object

## Apply a function that returns a single value when passed values of cells
## in a 3-by-3 window surrounding each focal cell 
rmean <- focal(r, w=matrix(1/9, ncol=3, nrow=3), fun=mean)
rmedian <- focal(r, w=matrix(1/9, ncol=3, nrow=3), fun=median)

## Plot the results to confirm that this behaves as you'd expect

## Coerce results back to a matrix, if you so desire
mmean <- as(rmean, "matrix")

enter image description here

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Where is focalFilter, are you sure it is in raster? – mdsumner Mar 29 '12 at 21:47
@mdsumner -- Oops, looks like it's now gone from the raster package (as explained in the Note: section of ?focal). Instead, the current focal() can do everything that the old focal() and focalFilter() did. That's been accomplished by allowing the w= argument to alternatively take a matrix of weights, which is what focalFilter() used to do. In short, filter() is all that's needed any more, and I'll amend the post accordingly. Thanks for pointing that out. – Josh O'Brien Mar 29 '12 at 23:23
I tried it and it works. Sadly it hangs on 1280x1024 images with window width around 10. With 3 however it finishes but it takes at least 5 minutes on my computer :( – Sergej Andrejev Mar 30 '12 at 0:32
Too bad. I'll be interested to learn if there are any faster alternatives. I'm not too hopeful, though, as this seems like an inherently time-consuming type of calculation. (FWIW, ma3x3.matrix() from the limma package is a bit slower than focal(), and only allows a 3-by-3 moving window.) – Josh O'Brien Mar 30 '12 at 7:02

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