# Performing k means clustering with a sample of the data [closed]

I'm a Medical Physics Master student and i'm currently working on my Thesis. The work consists of extracting features from endoscopic images and perform classification with an SVM. I have images of 4 types. Type 1 are non cancer images, Type 2, 3 and 4 are pre-cancer images. I reduced the problem to a two class system. Class C1, type 1 images and class C2 all the others.

The method I'm using to do this is as follows: I extract features from each image using dense SIFT. So I obtain descriptors that are, say 128x1000 per image. So i have 1000 points in a 128-d space. The number of points for each image is different, but for simplicity lets assume 1000 per image. I divided my dataset using 50 images of class C1 and 50 of class C2 for training.

If I use 100 training images i will get data of 128x100000. If I perform k-means clustering on this data using for example 400 clusters this is a very long process. So I thought to sample this data choosing for example 10000 points uniformly spaced so that each image is represented equally. I actually get quite good results in the classification process but my doubt is if this can be done.

Will it make a big difference if I use the all data points to calculate the centers or can I sample this data for the calculations?? What value would be reasonable for the fraction of data to use??

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Try to format your question properly (use of paragraph, emphasis and code highlight) and explain it more for better understanding of the problem. Also add some relevant tags if possible. –  SysGen Jun 8 '13 at 17:50
Thanks for the advise. I'm new at this things. –  user2466766 Jun 8 '13 at 18:25
Could you enlighten us on why the long training time is a big problem? The K-Means clustering results in a certain decision boundary (eg; If you input a image, it will decide if it detects a "healthy" image or a "cancerous" image.) The training is done only once, so the large computational time should not prove to be that big of an issue. Working in a 128 dimensional space does incur the "curse of dimensionality". Other pattern recognition algorithms might provide better results. –  Nallath Jun 8 '13 at 21:38
Here's my idea. I extracted the descriptors using DSIFT at two scales for each image in the gray color space. I did a 3-fold CV to the data and calculated the histograms for each image. Then fed this histograms into a SVM. This procedure took me about 6 hours. My next step would be to add to this descriptor another three descriptors obtained applying DSIF independently to the R, G and B chanels. This made the computacional time go up to 18 hours. It is a concern because I'm going to add even more descriptors to previous ones. –  user2466766 Jun 9 '13 at 0:59
My thought is I could sample the data before I calculated the visual terms for the histograms. That's were the big computacional time is. Or maybe I'm concatenating the descriptors in a wrong way. –  user2466766 Jun 9 '13 at 1:02

## closed as off topic by Makoto, M42, Cairnarvon, hexblot, Jeremy J StarcherJun 10 '13 at 9:11

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