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Is there any difference between following kmeans clustering?

a) Convert image to grayscale and perform kmeans on 1D feature vectors

b) Keep 3 channels RGB, and perform kmeans on 3D feature vectors

c) Get image histogram and perform kmeans on the distribution

The first solution is definitely faster, but is there will be a difference? Maybe some pixels has different RGB, but has the same intensity?

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1 Answer 1

1) Conversion to Gray from RGB is not usually done by simply averaging the values (See Grayscale). If it is done using that unusual way, even then the euclidean distance used in K-means will give different distances for your cases (a) and (b) - resulting in different clustering- as you mentioned [edit]. However, since the gray value is a weighted sum (with weights different from 1/3), taking euclidean distance between RGBs is different from taking the difference on the gray values - so they are different.

2) I am not entirely clear on your (c) but perform k-means on the distribution is weird. May be you meant using K-means as a model to fit the distribution, in order to identify the peaks and valleys in the histogram? If that is the case, it is a slight variation of case (a) itself. They could be very similar (not sure if they are identical, may be!) if you think of case (c) as a rewrite of case (a) by grouping all the identical terms in the sum-of-squared error and rewriting it as a multiplier times the difference. [as in: x1 + x2 + x1 + x3 being written as 2x1 + x2 + x3]

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