In LATCH_match.cpp in opencv_3.1.0 the homography matrix is defined and used as:

Mat homography;
FileStorage fs("../data/H1to3p.xml", FileStorage::READ);
fs.getFirstTopLevelNode() >> homography;
Mat col = Mat::ones(3, 1, CV_64F);<double>(0) = matched1[i].pt.x;<double>(1) = matched1[i].pt.y;
col = homography * col;

Why H1to3p.xml is:

<opencv_storage><H13 type_id="opencv-matrix"><rows>3</rows><cols>3</cols><dt>d</dt><data>
    7.6285898e-01  -2.9922929e-01   2.2567123e+02
    3.3443473e-01   1.0143901e+00  -7.6999973e+01
    3.4663091e-04  -1.4364524e-05   1.0000000e+00 </data></H13></opencv_storage>

With which criteria these numbers were chosen? They can be used for any other homography test for filtering keypoints (as in LATCH_match.cpp)?

up vote 4 down vote accepted

I assume that your "LATCH_match.cpp in opencv_3.1.0" is

In that file, you find:

// If you find this code useful, please add a reference to the following paper in your work:
// Gil Levi and Tal Hassner, "LATCH: Learned Arrangements of Three Patch Codes", arXiv preprint arXiv:1501.03719, 15 Jan. 2015

And so, looking at you will find

For each set, we compare the first image against each of the remaining five and check for correspondences. Performance is measured using the code from [16, 17]1 , which computes recall and 1-precision using known ground truth homographies between the images.

I think that the image ../data/graf1.png is that I show here:

enter image description here

According to the comment Homography matrix in Opencv? by Catree the original dataset is at where it is said that

Homographies between image pairs included.

So I think that the homography stored in file ../data/H1to3p.xml is the homography between image 1 and image 3.

  • So you're saying that this is an ad-hoc matrix. So how can I obtain such a matrix for a generic image? – justHelloWorld Jun 1 '16 at 12:30
  • 1
    This image comes from a well known computer vision dataset. The paper that firstly describes the methodology and introduces the dataset is from my knowledge: A Performance Evaluation of Local Descriptors. The homography relates the geometric transformation between two views for a planar surface and from a perspective projection. Thus you cannot use this homography for other images but you can estimate the homography with a robust scheme (RANSAC). – Catree Jun 1 '16 at 12:32
  • You can use cv::findHomography with RANSAC. The planar assumption is very important, the points must lie on a plane in the 3D world (like a wall, a book, etc.). The RANSAC is used to eliminate the outliers. Basically, you pick 4 points randomly (the minimal number of points to estimate an homography) and you check if sufficient nb of points agrees with the model, otherwise you pick another 4 points. At the end, you get the homography and the inliers/outliers. The inliers must be in majority also. – Catree Jun 1 '16 at 15:08

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