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I took a look on Surf and SVMs samples in accord library samples.I wonder how can I save the features I get from "SURF" in the excel file, because the feature ( i.e. interest point ) is a record contains some fields and a array of float (Descriptor) and in the SVMs sample all the columns are just a value, no record contains a list, for example in the XOR classification the input (one feature) is

(x =0 , y=0 , G=1)

but here I have a record that contains the next fields :

( Laplacian  : int ,    Orientation  : float    , Response  : float     ,Scale : float ,    X  :  float , Y   : float  , Descriptor   : [] float   )

and I'm not sure but if I want to make like the XOR problem I should add a field of the object name . I found that the SVM takes a matrix, I can't figure out how can I make this compatibility between these two samples, I hope my question is clear.

Thanks in advance

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The question is a bit unclear, but I will propose a solution. As a disclaimer, and to avoid further complications, I should say I am the author of this library.

If all you want is to train a SVM using SURF features, then you could skip the Excel part. It should be more useful to create a bag-of-visual-words representation of your images, and then store this representation instead of the SURF features. It seems this question was asked before the image classification sample application was released, so please take a look on it if you are still interested in the answer.

In any case, the bag-of-visual-words model is able to transform your variable-length number of features into fixed length vectors, which should be easier manage, either if you would like to train SVMs or just store then in a file. Here is an example on how to use the BoW model to extract fixed-length features:

// Create bag-of-words (BoW) with the given number of words
BagOfVisualWords bow = new BagOfVisualWords(numberOfWords);

bow.Compute( ... ); // pass all images in the training set

// And then you can create a fixed-length 
// representation of an given image using
double[] featureVector = bow.GetFeatureVector(image);

I will refrain from posting any links here so it doesn't looks like I am promoting my own project even further, but the classification sample application is available both under your start menu, if you have installed using the executable installer; and in the project's website.

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