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I am currently working on an application of Principal Component Analysis to visual data in R.

In Matlab, one can invoke commands such as "im2double" and "mat2gray" to convert a bitmap into a numerical matrix and back again to an image.

I was wondering whether this can be achieved in R, maybe via additional packages.

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Off topic I think as not a statistical question. Probably better for R-help than here. But there are packages like bmp, readbitmap, pixmap, and raster which may do what you want - depending on exactly what that is (I don't quite see the link to principal components). –  Peter Ellis Jan 3 '13 at 22:04
The image command will allow you to display simple greyscale or indexed images, e.g. image(1:100,1:100,(1:100)%*%t(1:100)/100, col=rgb(1:100/100,1:100/100,1:100/100)), but the EBImage package that @MattBagg talks about below seems far superior. As far as I know, base R has no support for loading images, so you'd have to preprocess with netpbm or similar. –  user295691 Jan 3 '13 at 23:21
There are two packages available for image processing: EBImage and adimpro. –  Martín Bel Jul 27 at 0:52

4 Answers 4

I've used the EBImage package (vignette here) available on bioconductor to work with and manipulate images:

# installing package if needed

f = readImage(system.file("images", "lena-color.png", package="EBImage"))
#Formal class 'Image' [package "EBImage"] with 2 slots
#  ..@ .Data    : num [1:512, 1:512, 1:3] 0.886 0.886 0.875 0.875 0.886 ...
#  ..@ colormode: int 2
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I was curious enough to try this out; clearly a package is a better solution, but if you really want to stick to base R, this will load a png (albeit upside down and backwards; that's probably fixable). It assumes the presence of the netpbm tools, so probably won't work out of the box on Windows systems.

readPng <- function(pngFile) {
  contents <- system(paste('pngtopnm',pngFile,'| pnmtoplainpnm'),intern=TRUE)
  imgDims <- strsplit(contents[2], ' ')
  width <- as.numeric(imgDims[[1]][1])
  height <- as.numeric(imgDims[[1]][2])
  rawimg <- scan(textConnection(contents),skip=3)

You can run image(img) on the list returned from this function directly, or access the per-pixel values using img$z.

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There are a variety of packages that add the ability to read image files and then convert to matrix form. The ReadImages package works for jpg and png formats and the grImport will bring in Postscript files.

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The relatively new package tiff will read and write TIF images quite nicely.
All the same, for anything other than relatively simple image manipulation, I'd recommend using ImageJ or SAOImage9 from the Harvard-Smithsonian group: http://www.cfa.harvard.edu/resources/software.html .

I've written tools in R to do pixel merging, pixel splitting, Sobel & Hough transforms, decolorization, etc., with great success. Ultimately the choice of application depends on the size of your images and the type of processing you need to do.

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Why not share some of your tools? –  by0 Mar 12 '13 at 22:08
@by0 sadly, there's a big difference between some quick hacks that get the job done and a function which is robust, does proper input validation, and in particular for image processing, is reasonably fast. None of my image tools meet such qualifications. –  Carl Witthoft Mar 13 '13 at 0:22

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