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The problem comes as follows. I have M images and extract N features for each image, and the dimensionality of each feature is L. Thus, I have M*N features (2,000,000 for my case) and each feature has L dimensionality (100 for my case). I need to cluster these M*N features into K clusters. How can I do it? Thanks.

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2 Answers 2

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Do you want 1000 clusters of images, or of features, or of (image, feature) pairs ?
In any case, it sounds as though you'll have to reduce the data and use simpler methods.

One possibility is two-pass K-cluster:
a) split the 2 million data points into 32 clusters,
b) split each of these into 32 more.
If this works, the resulting 32^2 = 1024 clusters might be good enough for your purpose.

Then, do you really need 100 coordinates ? Could you guess the 20 most important ones, or just try random subsets of 20 ?

There's a huge literature: Google +image "dimension reduction" gives ~ 70000 hits.

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thanks for your suggestion. I just did it as you suggested by two-pass K-cluster. The performance is very good. –  Jie Dec 17 '10 at 15:22
    
Good; about how long did it run ? (And how about clicking "accept" ?) –  denis Dec 18 '10 at 14:46
    
It took me about 8 hours. –  Jie Jan 24 '11 at 14:12

You've tagged the question "k-means". Why can't you use k-means? Is this a question of efficiency? (personally I've only used k-means in 2 dimensions) Or is it a question of how to encode the k-means algorithm?

Are your values discrete (eg. categories) or continuous (eg. a coordinate value)? If the latter, then k-means should be fine in my understanding. For the clustering of discrete values then a different algorithm will be required - perhaps hierarchical clustering?

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Thanks for winwaed. It is often out of memory if I used "k-means". It is even not possible for me to load the data to memory (the features in text file is about 1.5G). My PC is with 2G RAM. I used matlab for this task. When I load 37.5% feature data, matlab told me out of memory. –  Jie Nov 11 '10 at 16:09
    
So it is a size/efficiency issue. Is it possible to partition your data into three or four partitions which can processed in separate chunks? –  winwaed Nov 11 '10 at 16:19
    
Yes, it is a choice to partition the data into more partitions. I divided them into 20 partitions because the distance matrix would cost a lot of memory. Another problem is that how to combine the clusters of these 20 partitions effectively? It is also not clear how much this partition method would effect the performance of clustering. –  Jie Nov 11 '10 at 19:37

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