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I am testing some object detection with SURF and SIFT.

SURF claims to be faster and more robust than SIFT but I found in my test that this is not true. SIFT with medium images (600*400) is the same speed of SURF and it recognitizes objects pretty well (maybe even better than SURF).

I am doing something wrong?

Edit

Please note there is an article explaining how SURF could be much more fast with a little change to opencv code: http://computer-vision-talks.com/2011/06/a-few-thoughts-about-cvround/

If you know some active opencv developer please let him see it

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600*400 image for modern computer is nothing. Try to test video or huge (in 100 times bigger than yours) images. –  ArtemStorozhuk Jun 23 '12 at 19:39
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3 Answers 3

up vote 10 down vote accepted

When it was designed it was intended to be faster, but actually the differences are not relevant for real time applications with standard cameras. By the way, FAST detector is faster and actually quite robust.

I am programming for real-time augmented reality on phones and we use a combination of SIFT (initialization) and FAST (pyramidal FAST for real-time feature detection) during the application execution. FAST is actually faster and it is implemented in OpenCV, so if you don't want to stick to SURF give it a try. I haven't seen recent papers that use SURF for real-time but I have seen modified versions of SIFT, with less pixels for descriptors and other kind of modifications, so it seems like SURF was kind of a great idea that didn't get as far as it was thought to. That is just my opinion, anyway.

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Thanks for your contribution, anyway regarding SURF there is a little optimization that could led to greater performance. It is described here: computer-vision-talks.com/2011/06/a-few-thoughts-about-cvround I tried to contact an opencv developer with no luck :( –  dynamic Jul 2 '12 at 21:51
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Anyway which Extractor are you using? Because FastDescriptorExtractor doens't exists. Maybe you are using OrbDescriptorExtractor() ? I am using ORB too –  dynamic Jul 2 '12 at 22:00
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mm, we use a modified SIFT descriptor to be able to compare features from FAST (real-time) with feaures from SIFT (offline initialization). It is similar to the one described in this paper: ieeexplore.ieee.org/xpl/… –  Jav_Rock Jul 3 '12 at 10:44
    
This doesn't answer the question at all. –  B... Jun 23 '13 at 13:42
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OpenCV does not have the best implementation of SURF for speed or stability. SURF is fundamentally faster, by a larger amount, than SIFT if you were to count FLOPS of two well written implementations. SIFT computes an image pyramid by convolving the image several times with large Gaussian kernels, while SURF accomplishes an approximation of that using integral images.

To see a comparison of several implementations of SURF, take a look at my page here:

http://boofcv.org/index.php?title=Performance:SURF

It's unfortunate that OpenCV rejected the patch related to rounding due to cross platform issues. Maybe the patch will be tweaked and resubmitted. In my own work I noticed that general purpose round() was very slow and replaced it with a custom function.

As for the FAST detector, mentioned by Jav_Rock, I only use that as a last resort. It is much less stable of a detector than anything else out there, but it really is fast.

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SURF should be faster, while SIFT more robust. Astor is correct in saying 600*400 is a small image by today's standards; though.

That said, SURF should be many orders of magnitude faster than SIFT.

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I will try with bigger images –  dynamic Jun 23 '12 at 22:39
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