13

In order to classify a jpeg image in R, I would like to get the RGB values of each pixel.

My question: Is there a way to extract RGB channels from a jpeg image in R ?

  • Jpeg format does not have layers or channels. Furthermore it is typically in a compressed mode. You will need to convert to a raster format and then extract color pixel by pixel. Probably easier in a program designed for this task or a graphics converted application. – 42- Apr 23 '13 at 7:48
  • 1
    since the biOps package is no longer available, I think the solution using jpeg should be made the correct answer. – Bastiaan Quast Sep 21 '17 at 9:09
  • Thanks, I have changed it – DJack Sep 21 '17 at 10:03
15

You have several package to read in JPEG. Here I use package jpeg:

library(jpeg)
img <- readJPEG("Rlogo.jpg")

dim(img)
[1]  76 100   3

As you can see, there is 3 layers: they correspond to your R, G and B values. In each layer, each cell is a pixel.

img[35:39,50:54,]
, , 1

          [,1]      [,2]      [,3]      [,4]      [,5]
[1,] 0.5098039 0.5921569 0.4549020 0.3372549 0.1921569
[2,] 0.5098039 0.6000000 0.4549020 0.3372549 0.1921569
[3,] 0.5137255 0.6000000 0.4549020 0.3450980 0.1921569
[4,] 0.5215686 0.6039216 0.4627451 0.3450980 0.1921569
[5,] 0.5215686 0.6039216 0.4627451 0.3450980 0.1882353

, , 2

          [,1]      [,2]      [,3]      [,4]      [,5]
[1,] 0.5882353 0.6666667 0.5098039 0.3803922 0.2156863
[2,] 0.5882353 0.6627451 0.5098039 0.3803922 0.2156863
[3,] 0.5843137 0.6627451 0.5098039 0.3764706 0.2156863
[4,] 0.5843137 0.6627451 0.5058824 0.3764706 0.2117647
[5,] 0.5843137 0.6627451 0.5058824 0.3764706 0.2156863

, , 3

          [,1]      [,2]      [,3]      [,4]      [,5]
[1,] 0.7254902 0.7921569 0.6156863 0.4588235 0.2705882
[2,] 0.7254902 0.7921569 0.6156863 0.4588235 0.2784314
[3,] 0.7254902 0.7921569 0.6156863 0.4588235 0.2784314
[4,] 0.7176471 0.7921569 0.6156863 0.4666667 0.2862745
[5,] 0.7176471 0.7921569 0.6156863 0.4666667 0.2862745
  • 2
    And you can multiply it by 255 to get the RGB values (a round(...) might be required to get rid of those pesky machine rounding errors). – Andreï Kostyrka Aug 31 '16 at 9:02
8

I recommend the biOpspackage for image manipulation.

Here is an example:

library(biOps)
x <- readJpeg(system.file("samples", "violet.jpg", package="biOps"))
plot(x)

r <- imgRedBand(x)
plot(r)
image(x[,,1])

g <- imgGreenBand(x)
plot(g)
image(x[,,2])

b <- imgBlueBand(x)
plot(b)
image(x[,,3])

Visual example:

redPal <- colorRampPalette(c("black", "red"))
greenPal <- colorRampPalette(c("black", "green"))
bluePal <- colorRampPalette(c("black", "blue"))

x11(width=9, height=2.5)
par(mfcol=c(1,3))
image(x=seq(ncol(r)), y=seq(nrow(r)), z=t(r), asp=1, xaxt="n", yaxt="n", bty="n", xlab="", ylab="", main="red channel", col=redPal(256))
image(x=seq(ncol(g)), y=seq(nrow(g)), z=t(g), asp=1, xaxt="n", yaxt="n", bty="n", xlab="", ylab="", main="green channel", col=greenPal(256))
image(x=seq(ncol(b)), y=seq(nrow(b)), z=t(b), asp=1, xaxt="n", yaxt="n", bty="n", xlab="", ylab="", main="blue channel", col=bluePal(256))

enter image description here

  • Exactly what I wanted, thank you. – DJack Apr 23 '13 at 8:04
  • Glad it helped. Cheers – Marc in the box Apr 23 '13 at 8:12
  • Just leaving a note for future readers. biOps is no longer available in CRAN. – jazzurro Apr 11 '18 at 0:44
5

I like the approach via R's biOps package. After loading your data into canvas, you're able to convert your jpg file from imagedata to raster and do some further processing. Here's my code:

# Required packages
library(biOps)
library(raster)

# Load and plot data
data(logo)
jpg <- logo

plot.imagedata(jpg)

# Convert imagedata to raster
rst.blue <- raster(jpg[,,1])
rst.green <- raster(jpg[,,2])
rst.red <- raster(jpg[,,3])

# Plot single raster images and RGB composite
plot(stack(rst.blue, rst.green, rst.red), 
     main = c("Blue band", "Green band", "Red band"))
plotRGB(stack(rst.blue, rst.green, rst.red))
  • By the way, thanks to @Marcinthebox for the nice suggestion via image(x[,,1])! – fdetsch Apr 23 '13 at 8:14
  • 1
    Ok, perfect answer, much easier to deal with raster. Thank you. – DJack Apr 23 '13 at 8:24
  • 1
    Just leaving a note for future readers. biOps is no longer available in CRAN. – jazzurro Apr 11 '18 at 0:44

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