# How to match SURF interest points to a database of images

I am using the SURF algorithm in C# (OpenSurf) to get a list of interest points from an image. Each of these interest points contains a vector of descriptors , an x coordinate (int), an y coordinate (int), the scale (float) and the orientation (float).

Now, i want to compare the interest points from one image to a list of images in a database which also have a list of interest points, to find the most similar image. That is: [Image(I.P.)] COMPARETO [List of Images(I.P.)]. => Best match. Comparing the images on an individual basis yields unsatisfactory results.

When searching stackoverflow or other sites, the best solution i have found is to build an FLANN index while at the same time keeping track of where the interest points comes from. But before implementation, I have some questions which puzzle me:

1) When matching images based on their SURF interest points an algorithm I have found does the matching by comparing their distance (x1,y1->x2,y2) with each other and finding the image with the lowest total distance. Are the descriptors or orientation never used when comparing interest points?

2) If the descriptors are used, than how do i compare them? I can't figure out how to compare X vectors of 64 points (1 image) with Y vectors of 64 points (several images) using a indexed tree.

I would really appreciate some help. All the places I have searched or API I found, only support matching one picture to another, but not to match one picture effectively to a list of pictures.

-
Update from article: "In keypoint matching step, the nearest neighbor is defined as the keypoint with minimum Euclidean distance for the invariant descriptor vector". It seems as the best method for single image SURF comparison is for one image1 with X interest points to search for similar interest point in image2 comparing descriptors. That is: for (int i=0; i < 64; i++) { (Descriptor(image1[i])-Descriptor(image2[i]) += DIST } and then select the point with the lowest distance and sum it all up at the end. However, I still don't understand how i am going to create a tree for several images.. –  MortenGR Nov 24 '11 at 13:06
For people reading this, I will make another question which the knowledge I have obtained in the process. The issues is still: How do i match the descriptors from one image to a database of other images. –  MortenGR Nov 30 '11 at 10:03

This is also my question :-)). If my database has m images, for each of n queries, I have check all the images to find the best matching. So total times to check a pair (image, query) is m x n. Each time, we have to compare all SURF feature vectors of query to all SURF feature vectors of images. I used FLANN (C++) by this way, and results are VERY BAD, even worse than brute-force searching. However, in the paper below, the results are amazing. I am wondering how the author test on SIFT feature databases (100K, 1M, 30M). http://people.cs.ubc.ca/~mariusm/uploads/FLANN/flann_visapp09.pdf

I alread sent e-mail to Marius, if I receive his answer, I will let you know, Tom

tranductoan@gmail.com

-
Hi Tom. Thank you, that would be much appreaciated. Just to clarify: Do you construct a tree for every image and then use these tree's for comparison, or do you construct one big tree with the descriptors for all the images which you then use to match a single image against? –  MortenGR Dec 2 '11 at 11:12
After a little testing, I have used FLANN (in Emgu) with 4 randomized kd-tree's to search 5000 images in 25ms :) (each image have ~80 descriptors with a dimension of 64). I have not visually validated the results yet, but it seems as the minimum distance reported is correct. The trick, Tom, is to construct ONE flann index for all the images using 4 randomized kd-tree's and then match against this tree. –  MortenGR Dec 3 '11 at 8:48
Using the Lowe optimization, dists.Data[i, 0] < 0.6 * dists.Data[i, 1]) the results are verified visually and very good. What i do is basically to match one images to a flann index of all the other images' SURF descriptors, tracking descriptors identified. Then i take all the images with one or more matching descriptors and do an individual matching. The best image is the found match. –  MortenGR Dec 3 '11 at 11:39
Hi Morten, the problem is that when we construct only one big tree for all features of all images, we can find the (k-nearest) best matching feature(s) to the query feature. However, the technique of SURF feature matching is find the image that has largest number of matched features. HOW CAN WE ADAPT THIS ALGORITHM TO THE IDEA OF BUILING BIG TREE FOR ALL IMAGES? Thank you. –  Tom Dec 7 '11 at 15:11
Each SURF image have X features (descriptors) of 64 dimensions. So, match EACH feature for the image you want to compare to the flann tree of all images finding features with lowest euclidean distance. Then take all the features you found and identify the images in which they belong (means there is minimum 1 feature match in this image). Then do an individual SURF compare to all images with matching SURF features, and select the image with the best match. Also, to gain better matches, you can use the Lowe optimization, mentioned above. Email: mortengryning@gmail.com –  MortenGR Dec 8 '11 at 8:10
show 1 more comment