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I'm trying to implement/convert the daltonize algorithm for correcting images for colour-blind people into ruby.

There are two primary reference implementations written in javascript and python + other implementations in languages/environments I'm not familiar with.

I have virtually no experience with image processing, let alone with VIPS / ruby-vips. I'm wondering how to make the first steps. The documentation seems primarily in C/C++ and very little on the ruby side. It's also extremely detailed. I'm not even sure which basic operations to use. Looks like the lin function is a good starting point, but I'm not exactly sure how to apply it.

Anybody with some VIPS experience can probably work out the entire algorithm in a few minutes. I wonder if anybody can give me some pointers on where to start. Specifically:

  • How to access a single (R/G/B) element?
  • Are there better approaches based on the daltonize implementations?
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2 Answers 2

up vote 6 down vote accepted

I'm the ruby-vips maintainer.

There is fairly complete Ruby documentation here:

For some reason the docs are mostly missing in the current version of the gem (0.3.5), but are present in 0.3.0, I've not been able to work out why. The changes between 0.3.0 and 0.3.5 are mostly just bugfixes, so the 0.3.0 docs are fine to use.

Like most image processing libraries, you don't access single pixels with ruby-vips (or only very rarely). Ruby is too slow for this to be practical. Instead you chain together the vector operations provided by ruby-vips. For example:


require 'rubygems'
require 'vips'

a = VIPS::Image.jpeg(ARGV[0])

b = a.lin(1.1, 0)


The method x.lin(a, b) takes image x and applies a linear transform. It returns a new image where each pixel has been multiplied by a and then had b added to it, see . If you run this program like this:

$ ./try.rb k2.jpg x.jpg 

It will load image k2.jpg, multiply every pixel by 1.1 (ie. make it 10% brighter), and save it to x.jpg.

You can change the central line to be:

b = a.pow(1 / 2.4).lin(1.1, 0).pow(2.4)

Now it will do three operations: it'll linearise the image (assuming the gamma of the input image is 2.4), scale brightness, then reapply the gamma. Internally, vips will compute these three operations in one go and spread the work over your available processors.

(This isn't the best way to linearise an image, I'm just trying to show chaining)

Finally, since the operation we are performing is a simple pixel-by-pixel calculation with no rotates or flips, we can stream the image, we don't need to load the whole thing in advance. You can change the load operation to be:

a = VIPS::Image.jpeg(ARGV[0], :sequential => true)

And now ruby-vips will stream the image through your computer and not load the whole image into memory. This lets you process images of any size without hitting memory limits.

Here's a complete Daltonize example


# daltonize an image with ruby-vips
# based on

require 'rubygems'
require 'vips'

im =[0])

# remove any alpha channel before processing
alpha = nil
if im.bands == 4
    alpha = im.extract_band(3)
    im = im.extract_band(0, 3)

    # import to CIELAB with lcms
    # if there's no profile there, we'll fall back to the thing below
    lab = im.icc_import_embedded(:relative)
    xyz = lab.lab_to_xyz()
rescue VIPS::Error
    # nope .. use the built-in converter instead
    xyz = im.srgb_to_xyz()

# and now to bradford cone space (a variant of LMS)
brad = xyz.recomb([[0.8951,  0.2664, -0.1614],
                   [-0.7502,  1.7135,  0.0367],
                   [0.0389, -0.0685,  1.0296]])

# through the Deuteranope matrix
# we need rows to sum to 1 in Bradford space --- the matrix in the original
# Python code sums to 1.742
deut = brad.recomb([[1, 0, 0],
                    [0.7, 0, 0.3],
                    [0, 0, 1]])

# back to xyz (this is the inverse of the brad matrix above)
xyz = deut.recomb([[0.987, -0.147, 0.16],
                   [0.432, 0.5184, 0.0493],
                   [-0.0085, 0.04, 0.968]])

# .. and back to sRGB 
rgb = xyz.xyz_to_srgb()

# so this is the colour error 
err = im - rgb

# add the error back to other channels to make a compensated image
im = im + err.recomb([[0, 0, 0],
                      [0.7, 1, 0],
                      [0.7, 0, 1]])

# reattach any alpha we saved above
if alpha
    im = im.bandjoin(alpha.clip2fmt(im.band_fmt))

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Wow. Thanks so much. It makes me feel so stupid spending hours trying to convert the js/python algorithms. I knew someone with experience with this would only take a few minutes to work this out. I'll try to see if I can figure out how this works so I can maybe learn a bit in the process. I wish I could +1000 this. Thanks! – gingerlime Jan 29 '13 at 14:16
@YoavAner, also see this:… – Stanislav Jan 31 '13 at 14:03
Thanks @Stanislaw - I did see your question already, but was still feeling very lost on how to make any progress with the daltonize conversion. I haven't tried the suggested implementation yet, but hopefully will dig into it again very soon. – gingerlime Jan 31 '13 at 19:52
Hey guys, remember that ruby-vips has wiki with "examples" and "basic concepts" pages: After you succeed, feel free to add your daltonize code there. Examples page really lacks the good use cases for ruby-vips. – Stanislav Feb 1 '13 at 6:08
@Stanislaw. I've added a modified example to the wiki. I tested it quickly and it works. The difference between the original implementation above and the version of the wiki is that the wiki version uses LMS and not bradford cone space and that seems to work better somehow. – gingerlime Feb 1 '13 at 20:30

For newcomers: ruby-vips has wiki: with 'Examples' and 'Basic concepts' pages in it. They show the basics of ruby-vips usage.

Also, feel free to add your own use cases there, like @YoavAner did (Daltonize example).

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