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.
Do you want 1000 clusters of images, or of features, or of (image, feature) pairs ?
One possibility is two-pass K-cluster:
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
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?