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In R, made a plot with a 3M points and saved it as PNG. It took a few hours and I would like to avoid re-drawing all the points.

enter image description here

How can I generate a new plot that has this PNG as a background?

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Never used it, but package png may have what you're after: cran.r-project.org/web/packages/png/png.pdf –  Chase Mar 11 '11 at 18:08
I suggest moving this thread to stackoverflow? It is purely on R programming. –  cbeleites Oct 16 '12 at 7:16
It would be good to add some transparency to your points, so you may see their distribution better. Like in a density plot. –  Rodrigo Feb 11 at 19:06

2 Answers 2

up vote 52 down vote accepted

Try this:


#Replace the directory and file information with your info
ima <- readPNG("C:\\Documents and Settings\\Bill\\Data\\R\\Data\\Images\\sun.png")

#Set up the plot area
plot(1:2, type='n', main="Plotting Over an Image", xlab="x", ylab="y")

#Get the plot information so the image will fill the plot box, and draw it
lim <- par()
rasterImage(ima, lim$usr[1], lim$usr[3], lim$usr[2], lim$usr[4])
lines(c(1, 1.2, 1.4, 1.6, 1.8, 2.0), c(1, 1.3, 1.7, 1.6, 1.7, 1.0), type="b", lwd=5, col="white")

Below is the plot.

enter image description here

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registered just to upvote this awesome answer.. bless you, bless you right in the mouth –  seand Feb 11 '12 at 2:49
@seand thanks, you made me laugh. –  bill_080 Feb 11 '12 at 16:08

While @bill_080's answer directly answers your question, is this really what you want? If you want to plot onto this, you'll have to carefully align your coordinate systems. See e.g. Houston Crime Map how this can be done with ggplot2.

For your problem, it seems to me that there may be an easier solution: binning, i.e. ceating 2d histograms.

> df <- data.frame (x = rnorm (1e6), y = rnorm (1e6))
> system.time (plot (df))
       User      System verstrichen 
     54.468       0.044      54.658 
> library (hexbin)
> system.time (binned <- hexbin (df, xbins=200))
       User      System verstrichen 
      0.252       0.012       0.266 
> system.time (plot (binned))
       User      System verstrichen 
      0.704       0.040       0.784

enter image description here

hexbin works directly with lattice and ggplot2, but the center coordinates of the bins are in binned@xcm and binned@ycm, so you could also plot the result in base graphics. With high number of bins, you get a fast version of your original plot:

> system.time (plot (binned@xcm, binned@ycm, pch = 20, cex=0.4))
       User      System verstrichen 
      0.780       0.004       0.786 

enter image description here

but you can easily have the colours coding the density:

> plot (binned@xcm, binned@ycm, pch = 20, cex=0.4, col = as.character (col))

> col <- cut (binned@count, 20)
> levels (col) <- grey.colors (20, start=0.9, end = 0)
> plot (binned@xcm, binned@ycm, pch = 20, cex=0.4, col = as.character (col))

enter image description here

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