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Basically I need to develop an object recognition system. I have already used with success matching with SIFT or ORB.

Now I would like to use in the same system something else to improve SIFT/ORB, for example shape matching after a canny edge extractor (or whatever)

Can you suggest me a way to proceed?

I was thinking to always start

  • with corner detection (like SIFT,ORB)
  • then compute ORB descriptors for the corners (like standard ORB)
  • now extract some more information around a patch centered in the corner (contour infroamtion?)

Any Hint?

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I'd also suggest trying HOG (Histogram of Oriented Gradients) too. –  Dai Jul 28 '12 at 10:43
    
@David: yea I am investgating that too, I could calculate HOG around a patch near the corner. BTW do you have any sample code to do the matching without svm? –  dynamic Jul 28 '12 at 11:23
    
I'm afraid not, my previous HOG worked all used the stock HOG implementation in OpenCV. –  Dai Jul 28 '12 at 11:28
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1 Answer

up vote 1 down vote accepted

There are many ways we can tackle this problem. Basically what we need to find is some key features in the object which are consistently detected across all the instances of that object. You can do unsupervised clustering of all the SIFT features against all the training data of the object to get this. Once you do that you can identify the cluster centers with all the members of the clusters. Then you can do a probabilistic model using graphs. You can look at Markov Random Fields or Belief Propagation. Once you do that there is both texture and shape embedded in the model.

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