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I tried 2 cluster algorithms in scikit learn (python): affinity propagation and DBSCAN like here:

http://scikit-learn.org/stable/auto_examples/cluster/plot_dbscan.html#example-cluster-plot-dbscan-py

http://scikit-learn.org/0.12/auto_examples/cluster/plot_affinity_propagation.html

The unique difference is X, that is not:

centers = [[1, 1], [-1, -1], [1, -1]]
X, labels_true = make_blobs(n_samples=300, centers=centers, cluster_std=0.5,
    random_state=0)

but my 2 image features (solidity and first humoment) for every 75 images:

>>>>X.shape  
(75,2)

my features:

[[  5.54680144e-01   3.79948392e-01]
[  8.70443729e-01   1.77502207e-01]
[  4.37622956e-01   2.83559236e-05]
[  6.72172924e-01   3.00142568e-04]
[  5.18932433e-01   1.39958013e-03]
[  7.23982700e-01   5.24452603e-04]
[  4.95001469e-01   2.95420975e-03]
[  1.64133952e-01   7.88177340e-04]
[  2.52497558e-01   4.91686002e-01]
[  6.86538731e-01   4.55305317e-01]
[  7.22193099e-01   4.80662983e-01]
[  4.67890677e-01   7.09454979e-03]
[  6.18924155e-01   1.07420039e-04]
[  3.53696287e-01   3.93981592e-03]
[  6.07385501e-01   1.06825487e-02]
[  2.84123395e-01   6.52089407e-01]
[  2.36429649e-01   3.27600328e-03]
[  2.30763588e-01   4.83091787e-03]
[  1.59765027e-01   2.78884462e-02]
[  1.86748975e-01   9.09235560e-05]
[  5.34793573e-01   3.76842998e-04]
[  5.05045881e-01   4.88897253e-01]
[  2.10951780e-01   3.02640539e-04]
[  1.23797482e+00   1.32727245e-01]
[  5.58317299e-01   4.41987578e-01]
[  4.35031459e-01   3.83944154e-03]
[  9.40625702e-01   9.31836183e-05]
[  8.40339071e-01   1.33191263e-04]
[  2.01581656e-01   4.10607399e-01]
[  2.70476981e-01   1.40600316e-01]
[  3.99294959e-01   1.62107396e-03]
[  3.46751951e-01   2.02122284e-03]
[  1.66176385e-01   1.71828687e-04]
[  3.28497515e-01   7.21117062e-02]
[  3.40640083e-01   5.52515091e-01]
[  8.38141960e-01   2.64894985e-01]
[  4.68464960e-01   3.36463731e-01]
...

I have 2 opposite responds:

75 clusters found for affinity

1 cluster found for dbscan.

Maybe I to rescale values or there is something else to do?

share|improve this question
    
Try visualizing your data. There is nothing wrong with e.g. DBSCAN finding a single cluster only if your parameters are set inappropriately. Then e.g. all data may be one big cluster, or every point may be singular. It's because you set the parameters this way. –  Anony-Mousse Feb 9 '13 at 9:19
    
Affinity propagation tends to find many clusters. You have to adjust the preference setting. Looking at your data should be the first step, though. In particular as your data is only 2d. –  Andreas Mueller Feb 9 '13 at 10:48
    
Yes, definitely use visualization. If your data is 2D and you only see one big blob, this is also what DBSCAN will find. Humans visual intuition of "clusters" and density based clustering align quite well - if you can't see clusters, density-based will likely not find any either. –  Anony-Mousse Feb 10 '13 at 10:26
    
this is my chart docs.google.com/file/d/0ByS6Z5WRz-h2NGhsMzduU1dvQjA/…. waht you mean for 2d data? i have got a matrix where every element is a list of image features, in this case only 2 features (but i'd would like add other features) –  postgres Feb 10 '13 at 13:39

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