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I'd like to scale an image in R for further analysis rather than for immediate plotting.

EBImage's resize() would be ideal for this if I could use EBImage, but I need to avoid it so I have to find an alternative.

I haven't had any luck searching. I could implement bilinear filtering by hand, but before I do that I'd like to confirm that there aren't any alternatives.

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rasterImage can do interpolation, but probably only when actually rendered. –  baptiste Jun 2 '12 at 23:19

2 Answers 2

Nearest neighbour resizing is the most common and simplest to implement.

Assuming your image is one layer/channel, and thus one matrix:

resizePixels = function(im, w, h) {
  pixels = as.vector(im)
  # initial width/height
  w1 = nrow(im)
  h1 = ncol(im)
  # target width/height
  w2 = w
  h2 = h
  # Create empty vector
  temp = vector('numeric', w2*h2)
  # Compute ratios
  x_ratio = w1/w2
  y_ratio = h1/h2
  # Do resizing
  for (i in 0:(h2-1)) {
    for (j in 0:(w2-1)) {
      px = floor(j*x_ratio)
      py = floor(i*y_ratio)
      temp[(i*w2)+j] = pixels[(py*w1)+px]

  m = matrix(temp, h2, w2)

I'll let you figure out how to apply this to a RGB image

Heres a test run for the code above on the red channel of this image:

lena = readImage('~/Desktop/lena.jpg')[,,1]

enter image description here

r = resizePixels(lena, 150, 150)

enter image description here

r2 = resizePixels(lena, 50, 50)

enter image description here


  1. be careful, the target widths and heights must maintain the aspect ratio of the original image or it wont work
  2. If you're trying to avoid EBImage, to read/write images try the package jpeg methods readJPEG and writeJPEG
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Nearest neighbour scaling (no interpolation) can be implemented quite easily.
While the answer by @by0 is clear, I'd like to offer an alternate implementation. It works on the matrix representation of the image, which I find simpler than indexing into a vector.

resizeImage = function(im, w.out, h.out) {
  # function to resize an image 
  # im = input image, w.out = target width, h.out = target height
  # Bonus: this works with non-square image scaling.

  # initial width/height
  w.in = nrow(im)
  h.in = ncol(im)

  # Create empty matrix
  im.out = matrix(rep(0,w.out*h.out), nrow =w.out, ncol=h.out )

  # Compute ratios -- final number of indices is n.out, spaced over range of 1:n.in
  w_ratio = w.in/w.out
  h_ratio = h.in/h.out

  # Do resizing -- select appropriate indices
  im.out <- im[ floor(w_ratio* 1:w.out), floor(h_ratio* 1:h.out)]


This works with arbitrary image scalings, not just square. On the other hand, it will only preserve the aspect ratio of the image if w.out/w.in = h.out/h.in.

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