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I want to verify if one person is similar to another person. Therefore I want to get the similarity between two faces.

These are the input faces

Mindy Face

Madonna Face

Now I want to push them through the DNN and after that I want to get the Euklidian distance between the two resulting matrices.

I've used the following OpenFace model: https://storage.cmusatyalab.org/openface-models/nn4.small2.v1.t7

This is my code for calculating the distances:

    cv::Mat madonna = cv::imread("/home/der/Madonna_Face.jpg");
    cv::Mat mindy = cv::imread("/home/der/Mindy_Face.jpg");

    cv::resize(madonna, madonna, cv::Size(96, 96));
    cv::resize(mindy, mindy, cv::Size(96, 96));

    cv::Mat madonnaBlob = cv::dnn::blobFromImage(madonna, 1.0 / 255, cv::Size(96, 96), cv::Scalar{0,0,0}, true, false);
    cv::Mat mindyBlob = cv::dnn::blobFromImage(mindy, 1.0 / 255, cv::Size{96, 96}, cv::Scalar{0,0,0}, true, false);

    cv::dnn::Net _net = cv::dnn::readNetFromTorch("/home/der/nn4.small2.v1.t7");

    _net.setInput(madonnaBlob);
    cv::Mat madonnaMat = _net.forward();

    _net.setInput(mindyBlob);
    cv::Mat mindyMat = _net.forward();
    
    std::cout << cv::norm(madonnaMat, mindyMat);

And if I'm doing so the result from cv::norm is 0. The representations are exactly the same:

    std::vector<double> master = madonnaMat;
    std::vector<double> slave = mindyMat;
    for(int i; i < 128; i++) {
        std::cout << master[i] << " # " << slave[i] << std::endl;
    }


Output:
    > -0.0865457 # -0.0865457
    > 0.133816 # 0.133816
    > -0.105774 # -0.105774
    > 0.05389 # 0.05389
    > -0.00391233 # -0.00391233
    > ...

Results:

Madonna Representation: [-0.060358506, 0.14156586, -0.10181303, 0.060315549, 0.0016125928, 0.066964693, -0.044892643, -0.043857966, 0.088271223, 0.047121659, 0.078663647, 0.025775915, 0.062051967, 0.034234334, -0.049976062, 0.045926169, 0.084343202, 0.046965379, -0.092582494, 0.13601208, -0.003582818, -0.15382886, 0.075037867, 0.19894752, -0.041007876, -0.12050319, -0.056161541, -0.018724455, 0.024790274, 0.0092850979, 0.095108159, 0.067354925, 0.06044127, 0.041365273, -0.12024247, 0.18279234, 0.027767293, 0.09874554, -0.16951905, 0.062370241, -0.014530737, 0.015518869, -0.0056175897, -0.066358574, -0.02390888, -0.07608442, 0.13011196, 0.031423025, -0.010443882, 0.12755248, -0.010195011, 0.0051672528, -0.10453289, -0.013270194, 0.096139617, 0.10375636, -0.047089621, 0.050923191, 0.066422582, -0.046726897, -0.1845296, 0.031028474, 0.086226918, -0.27064508, 0.055891197, -0.0053421594, 0.035870265, -0.026942547, -0.17279817, 0.13772435, 0.0071162563, 0.075375959, -0.046405111, 0.12658595, 0.11093359, 0.0030428318, 0.070016958, 0.1725318, -0.056130294, -0.14420295, -0.12438529, 0.056423288, -0.080888703, -0.052004829, -0.06481386, 0.14163122, -0.059617694, -0.026075639, 0.052098148, -0.0055074869, -0.014869845, -0.11943244, 0.068051606, -0.096071519, 0.19727865, -0.016027609, -0.05776047, 0.069935486, -0.020494614, 0.013407955, -0.06065508, -0.056143567, -0.04608072, 0.072748154, -0.035580911, 0.15261506, -0.074352823, -0.081481896, 0.020475708, -0.021581693, -0.16350025, 0.12794609, 0.082243897, 0.015881324, 0.011330541, -0.026391003, 0.086644463, -0.10490314, 0.088207267, 0.17892174, 0.025871141, 0.012454472, 0.010682535, 0.1253885, -0.12909022, 0.082067415, -0.035789803, 0.032903988]
Madonna Size: 1 x 128
Madonna Dims: 2
Mindy Representation: [-0.082645342, 0.14463238, -0.10716592, 0.065654278, 0.0045089996, 0.064019054, -0.047334831, -0.056190431, 0.099919245, 0.048234992, 0.068906084, 0.028518379, 0.057044145, 0.046223734, -0.056203742, 0.033566523, 0.082230642, 0.055683684, -0.080982864, 0.12431844, -0.00075431512, -0.14511517, 0.045022864, 0.20965824, -0.030178605, -0.11852413, -0.066858761, -0.01461118, 0.032898057, 0.02857255, 0.1088237, 0.07066118, 0.044605579, 0.022743503, -0.10785796, 0.20373915, 0.010565795, 0.063950166, -0.18701579, 0.062780239, -0.0042907735, 0.031276166, -0.006556896, -0.038440779, -0.01419229, -0.072688736, 0.13676986, 0.040385362, 0.010314438, 0.095734902, -0.0080824783, 0.011763249, -0.098884396, -0.040797569, 0.10534941, 0.12088351, -0.07317061, 0.063644305, 0.0830286, -0.050620016, -0.18088549, 0.03330183, 0.090282671, -0.25393733, 0.056058947, -0.020288708, 0.049997903, -0.044997148, -0.15860014, 0.15251927, 0.015151619, 0.088731326, -0.028061632, 0.11127418, 0.090425298, 0.0052096732, 0.053858042, 0.18543676, -0.066999368, -0.15851147, -0.11389373, 0.088093147, -0.08713299, -0.048095752, -0.063261949, 0.12453313, -0.051213119, -0.023759408, 0.048403475, -0.012721839, -0.021282939, -0.098075315, 0.066707589, -0.11601795, 0.20438787, -0.015739718, -0.052848384, 0.057336167, -0.01592578, 0.014057826, -0.058749981, -0.043632519, -0.031006066, 0.046038814, -0.065755703, 0.15442967, -0.082077362, -0.099808514, 0.016168201, 0.0046916353, -0.14556217, 0.11152669, 0.062443323, -0.00032889194, 0.0020548289, -0.026999777, 0.096809812, -0.11947374, 0.085579365, 0.16317753, 0.028130196, 0.014577032, 0.0079531483, 0.11340163, -0.15006165, 0.094127603, -0.0440454, 0.033095147]
Mindy Size: 1 x 128
Mindy Dims: 2

Any ideas what I'm doing wrong? Thanks.

4
  • look at the values from net.forward(). show them. what do you see? Dec 13, 2021 at 15:39
  • I've added the results. Master and slave have the same face embeddings, but why?
    – Sven
    Dec 13, 2021 at 16:41
  • 1
    curious! assign _net.forward().clone() instead. I think it's merely returning a reference to the values internal to the network... which means madonnaMat and mindyMat could hold references to the same data (just a hypothesis) -- alternatively, print the output immediately after the first inference, and compare to what they are after the second inference. Dec 13, 2021 at 20:30
  • related: forum.opencv.org/t/… Dec 13, 2021 at 20:36

1 Answer 1

1

I've experienced this several times. I couldn't find this explicitly mentioned in the OpenCV documentation, but the cv::dnn::Net::forward function returns a cv::Mat blob with the data member pointing always to the same zone of memory. Therefore on the second forward pass, that zone of memory is overwritten and both madonnaBlob and mindyBlob point there.

As @Christoph Rackwitz pointed out, you need to clone the cv::Mat before running the second inference:

_net.setInput(madonnaBlob);
cv::Mat madonnaMat = _net.forward();
madonnaMat = madonnaMat.clone(); // Copy memory

_net.setInput(mindyBlob);
cv::Mat mindyMat = _net.forward();

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