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I want to use SURF feature for Neural Network from Opencv.

I have successfully extracted features and created a nn.

But, the point where I am stocked is for every images I get varying length of feature vectors and each of 128 values.

So, my question is how should I feed these values into my 128 nodes of input layers for a single image. I know how to assign the output values for each set of input sets

Thank, you

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1 Answer 1

I think, you should look at Bag of words aproach. Here you can get some code:

And you can use NN instead of SVM.

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I am trying to do with this in python version of opencv. And I think there is no BOW features implemented with it, isn't it. But for now, I just want to know how to feed this n x 128 features into the neural network. Do I have to normalize it? Also, the 'n' varies from image to image. – user2410785 Aug 17 '13 at 4:27
You can select N features by Hessian strength, get N strongest and use them for classification. You also can tune number of features you get from image by changing feature detector threshold. I have mentioned BOW to show how you can use statistics for you problem. There rather simple idea behind BOW: you get all features form your training set. It will be a set of 128 dimentional points. Then clustering them (k-means), next step you make histograms each bin represent a cluster and it height is N features of this cluster. Ok, now you have features (histogram of 128-dim features) for any image. – Andrey Smorodov Aug 17 '13 at 7:44
So I have 128 input values for each point in an image, which lead to a various number of rows, depending on the amount of points it find. What should I do for those input values of an image before feed in to my ANN because I think for every single image there should be only one set of input values (feature vectors), isn't it – user2410785 Aug 18 '13 at 1:59
For get independent from number of features found you must use statistics. Namely histograms. First you must get all 128 dimentional features from all training images. Clusterize them. Get cluster centers (this is your vocabulary). When you evaluate descriptors from image you look for nearest cluster center, and add counter for this center. After you process all features such way you'll get a histogram with number of bins equal number of centroids. This histograms you can feed to neural network as input vectors. They will be always same length for any image, because equal number of histo bins. – Andrey Smorodov Aug 18 '13 at 9:46

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