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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?

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  • 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, 2017 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, 2017 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, 2017 at 16:31
  • That exactly what I need. You can add an answer if you want.
    – Pierre
    Jan 14, 2017 at 8:59

1 Answer 1

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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'))
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  • And how do you set batch size? Jul 10, 2022 at 14:32
  • @NicolasGervais Using batch_size argument
    – Pierre
    Jul 11, 2022 at 17:00
  • How do you decide? Jul 12, 2022 at 13:47
  • @NicolasGervais This is discussed in this question: stats.stackexchange.com/questions/398757/… Apparently, there is no magic solution and you will have to iterate to find the best value.
    – Pierre
    Jul 19, 2022 at 13:26

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