Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a fairly large (1040x1392) matrix of doubles and I would like to extract another matrix whose columns are the 16x16 patches of the first matrix. (I know, it is a lot of data and it may not be practical to use it, but this should work...)

I tried using this code, where 'data' is the original matrix:

# Create a matrix of starting coordinates for each patch
patch.size = 16 = patch.size - 1
coords = expand.grid(x=1:(ncol(data), y=1:(nrow(data)
coords = as.matrix(coords)

# Pre-allocate the destination matrix
patches = double(nrow(coords)*patch.size^2)
dim(patches) = c(patch.size^2, nrow(coords))

#Create overlapping patches
for (i in 1:nrow(coords))
  patches[,i] = as.vector(data[y:(, x:(])

This runs impossibly slowly on a reasonably fast Win7-64 machine with 8GB of RAM; even creating just 100 patches is slow.

It turns out that the assignment to patches[,i] is the problem. Looking at Task Manager, there is a huge spike in memory use when I assign to patches[,i].

I have a couple of questions. First, what is going on? It looks like the whole patches matrix is being copied on each assignment. Is that right? If so, why? I thought that pre-allocating the patches matrix would avoid that. Second, is there a better way to write this code so it might complete within my lifetime :-) ?

Thanks! Kent

share|improve this question
up vote 1 down vote accepted

For the 2nd question, here's a solution using lapply.

You could transpose the result out if you want the exact output as your script. I checked with smaller dimensions and verified that its equal to your output patches.

nr <- 1040
nc <- 1392
data <- matrix(rnorm(nr*nc), nrow = nr)
patch.size <- 16
idx <- expand.grid(1:(ncol(data)-patch.size+1), 1:(nrow(data)-patch.size+1))
idx[,3] <- idx[,1]+patch.size-1
idx[,4] <- idx[,2]+patch.size-1
idx <- as.matrix(idx)

# using rbenchmark
myFun <- function() {
    out <-, lapply(1:nrow(idx), 
        function(tx) c(data[idx[tx,2]:idx[tx,4], idx[tx,1]:idx[tx,3]])))
benchmark(myFun(), replications = 2)

# Result:
     test replications elapsed relative user.self sys.self user.child sys.child
1 myFun()            2 152.146        1   147.957    4.184          0         0

# using system.time
system.time(out <-, lapply(1:nrow(idx), 
        function(tx) c(data[idx[tx,2]:idx[tx,4], idx[tx,1]:idx[tx,3]]))))        

# Result
  user  system elapsed 
58.852   1.784  60.638 
share|improve this answer
Thank you, that works! I'm still curious about the first question if anyone has any thoughts... – Kent Johnson Jan 8 '13 at 20:04

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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