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Can you help me waith Image classification using SIFT feature?

I want to classify images based on SIFT features:

  • Given a training set of images, extract SIFT from them
  • Compute K-Means over the entire set of SIFTs extracted form the training set. the "K" parameter (the number of clusters) depends on the number of SIFTs that you have for training, but usually is around 500->8000 (the higher, the better).
  • Now you have obtained K cluster centers.
  • You can compute the descriptor of an image by assigning each SIFT of the image to one of the K clusters. In this way you obtain a histogram of length K.
  • I have 130 images in training set so my training set 130*K dimensional
  • I want to classify my test images ı have 1 images so my sample is 1*k dimensional. I wrote this code knnclassify(sample,training set,group).

I want to classify to 7 group. So, knnclassify(sample(1*10),trainingset(130*10),group(7*1))

The error is: The length of GROUP must equal the number of rows in TRAINING. What can I do?

1 Answer 1

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Straight from the docs:

CLASS = knnclassify(SAMPLE,TRAINING,GROUP) classifies each row of the data in SAMPLE into one of the groups in TRAINING using the nearest- neighbor method. SAMPLE and TRAINING must be matrices with the same number of columns. GROUP is a grouping variable for TRAINING. Its unique values define groups, and each element defines the group to which the corresponding row of TRAINING belongs. GROUP can be a numeric vector, a string array, or a cell array of strings. TRAINING and GROUP must have the same number of rows.

What this means, is that group should be 130x1, and should indicate which group each of the training samples belong to. unique(group) should return 7 values in your case - the seven categories represented in your training set. If you don't already have a group vector which specifies which categories which image falls into, you could use kmeans to split your training set into 7 groups:

group = kmeans(trainingset,7);
knnclassify(sample, trainingset, group);

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