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I am new to clustering. The problem I have at hand is this: I have a tiled surface of fixed size (pretty much like a chess board) where each tile can take a continuous value (called height) between 0 and 1. I have (let's say) 20 such surfaces. I need to create clusters of surfaces that have similar looking groups of height profiles or shapes.

What would be the best strategy to define a metric (similarity or distance matrix) that can be used to cluster these surfaces into similar looking groups.

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1 Answer 1

You can view distance between two matrices d(A,B) as a matrix norm ||A-B|| and then take any of many matrix norms.

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I also tried using the distance matrix where distance = ||A-B||. However, I still see that the clusters have some mix. I am not sure if norm of difference of two surfaces will capture the spatial nature of the heights. For example: two surfaces (say B and C) with similar looking height profiles but in different directions will probably have same distance value with respect to a third surface i.e. ||A-B|| == ||A-C||. Any suggestions? –  Aby May 31 '12 at 23:05
    
Maybe doing some rotation so that to somehow align those surfaces prior distance calculation would help? –  danas.zuokas Jun 6 '12 at 8:03
    
BTW, I used hc <- hclust(d,method="average") on the distance matrix. Is there any other recommended method to use? –  Aby Jun 6 '12 at 19:29

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