I'm working on an image classification problem and I'm creating a bag of words model. To do that, I extracted the SIFT descriptors of all my images and I have to use the KMeans algorithm to find the centers to use as my bag of words.

Here is the data I have:

  • Number of images: 1584
  • Number of SIFT descriptors (vector of 32 elements): 571685
  • Number of center: 15840

So I ran a KMeans algorithm to compute my centers:

dico = pickle.load(open('./dico.bin', 'rb')) # np.shape(dico) = (571685, 32)
k = np.size(os.listdir(img_path)) * 10 # = 1584 * 10

kmeans = KMeans(n_clusters=k, n_init=1, verbose=1).fit(dico)

pickle.dump(kmeans, open('./kmeans.bin', 'wb'))
pickle.dump(kmeans.cluster_centers_, open('./dico_reduit.bin', 'wb'))

With this code, I got a Memory Error because I don't have enough memory on my laptop (only 2GB) so I decided to divide by 2 the number of center and to choose randomly half of my SIFT descriptors. This time, I got Value Error : array is too big.

What can I do to get a relevant result without memory problem?

  • Show the shape of dico. (as i'm a bit confused by the numbers in your post; but i don't have experiece with bag-of-word models)
    – sascha
    Jan 13 '17 at 15:38
  • I add the information in the code. It's useless to understand how works bag-of-word model, it's just for context.
    – Pierre
    Jan 13 '17 at 16:30
  • 1
    Okay. So the dominating dimension is the sample-dimension (and not feature-dimension). This means, you can use some online-kmeans, like MiniBatchKMeans. Instead of reading everything into memory, only n=batch_size will be within memory in each iteration.
    – sascha
    Jan 13 '17 at 16:31
  • That exactly what I need. You can add an answer if you want.
    – Pierre
    Jan 14 '17 at 8:59

As @sascha said in this comment, I just have to use MiniBatchKMeans class to avoid this problem:

dico = pickle.load(open('./dico.bin', 'rb'))

batch_size = np.size(os.listdir(img_path)) * 3
kmeans = MiniBatchKMeans(n_clusters=k, batch_size=batch_size, verbose=1).fit(dico)

pickle.dump(kmeans, open('./minibatchkmeans.bin', 'wb'))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.