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Hey OpenCV/Emgu gurus,

I have an image that I am generating contour for, see below. I am trying to generate a color histogram based pruning of search space of images to look for. How can I get the mask around just the prominent object contour and block out the remaining. So I have a 2 part question:

  1. How do I "invert" the image outside the contour? Floodfill invert, not? I am confused with all the options in OpenCV.

  2. Second, how do I generate a 1-d color histogram from the contoured object in this case the red car to exclude the black background and only generate the color histogram that includes the car.

How would I do that in OpenCV (preferably in Emgu/C# code)?

Source Image Contoured Image

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up vote 1 down vote accepted

Perhaps something like this? Done using the Python bindings, but easy to translate the methods to other bindings...


import cv 
import colorsys

# get orginal image
orig = cv.LoadImage('car.jpg')

# show orginal 
cv.ShowImage("orig", orig)

# get mask image
maskimg = cv.LoadImage('carcontour.jpg')

# split original image into hue and value
hsv = cv.CreateImage(cv.GetSize(orig),8,3)
hue = cv.CreateImage(cv.GetSize(orig),8,1)
val = cv.CreateImage(cv.GetSize(orig),8,1)
cv.Split(hsv, hue, None, val, None)

# build mask from val image, select values NOT black
mask = cv.CreateImage(cv.GetSize(orig),8,1)

# show the mask
cv.ShowImage("mask", mask)

# calculate colour (hue) histgram of only masked area
hue_bins = 180 
hue_range = [0,180]
hist = cv.CreateHist([hue_bins], cv.CV_HIST_ARRAY, [hue_range], 1) 

# create the colour histogram 
(_, max_value, _, _) = cv.GetMinMaxHistValue(hist)
histimg = cv.CreateImage((hue_bins*2, 200), 8, 3) 
for h in range(hue_bins):
  bin_val = cv.QueryHistValue_1D(hist,h)
  norm_val = cv.Round((bin_val/max_value)*200)
  rgb_val = colorsys.hsv_to_rgb(float(h)/180.0,1.0,1.0) 
                ((h+1)*2-1, norm_val),

# wait for key press

This is a little bit clunky finding the mask - I wonder perhaps due to JPEG compression artefacts in the image... If you had the original contour it is easy enough to "render" this to a mask instead.


The example histogram rendering function is also a wee bit basic - but I think it shows the idea (and how the car is predominately red!). Note how OpenCV's interpretation of Hue ranges only from [0-180] degrees.


EDIT: if you want to use the mask to count colours in the original image - edit as so from line 15 downwards:

# split original image into hue
hsv = cv.CreateImage(cv.GetSize(orig),8,3)
hue = cv.CreateImage(cv.GetSize(orig),8,1)
cv.Split(hsv, hue, None, None, None)

# split mask image into val
val = cv.CreateImage(cv.GetSize(orig),8,1)
cv.Split(hsv, None, None, val, None)

(I think this is more what was intended, as the mask is then derived separately and applied to a completely different image. The histogram is roughly the same in both cases...)

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