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I have a number of objects (These happen to be images of faces). I have a metric for comparing one object to another (A facial recognition library). This returns a simple 0-1 value for similarity. Anything > 0.7 is a reasonable match.

I'm trying to figure out the best process to split a list of these objects into sub-arrays based on how similar one object is to another.

Obviously an easy one is to start at the first object and create a group of all objects that are similar. This loses the benefit of relationships between sub-objects and adds the problem of inheriting false positives.

The more I thought about it, the more I thought there has to be a standard solution to a situation like this!!

Any ideas?

An additional bonus would be manual weighting afterwards. So if a false positive is included, it would be possible to manually exclude that object and alter the grouping accordingly.

This is all C# by the way, not that it makes much difference.

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So you could put Image1 in Group1 and then compare Image2+ and include it in Group1 if it's greater than 0.7? And then for the next image, if Image2 doesn't belong to a group, put it in a new Group2 and compare it to Image3+ (no need to compare it to Image1). –  Adrian Thompson Phillips Nov 22 '12 at 17:31
    
That's how I did things initially. The problem comes because an image may be > 0.7 with the first image of a group. But that could be a false positive. The solution must treat all the images individually I think. –  Ben Ford Nov 22 '12 at 19:11

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