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I am pretty new to EMGUCV . I want to make a face recognition system , I had implemented it but the results are not acceptable. Here is my code for the recognition :

public List<Person> RecognizeFaces(List<Image<Bgr, byte>> faces)
{
        List<Person> RecognizedPersons = new List<Person>();
        MCvTermCriteria termCrit = new MCvTermCriteria(TrainDB.Count, 0.001);

        EigenObjectRecognizer recognizer = new EigenObjectRecognizer(
         this.ToGrayList(this.TrainDB),
         labels.ToArray(),
         7000,  // I changed this argument many times but nothing has changed (1000, 2000, ...
         ref termCrit);

        string label = "";
        for (int i = 0; i < faces.Count; i++)
        {
            label = recognizer.Recognize(faces[i].Convert<Gray, byte>());
            RecognizedPersons.Add(new Person(faces[i],!label.Equals("") ? label : "unknown"));
        }

        return RecognizedPersons;
}

This function takes a list of previously detected faces from an input image and returns a list of Type Person where each person contains an image and a label to the recognized person . My Question is why the results are not good ? is there is something wrong with my code ? Or there is something wrong with the training set TrainDB , if so , what is the best guidelines to follow when creating the training set ?

I had collected the training set according to this : 1- Applying face detection (using EMGU) on an image that's contain a single person 2- Then I resize the detected face to 200 : W, 200 : H

Some images from my training set :

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Some Examples of test images :

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  • List item

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My last question .. do Emgu/OpenCv are powerful tools to be used in face recognition ? or there is something else that could be more accurate in results ?

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What is the size of the training set? How many subject are in the training set and how many images are there from each subject? Are the test images in the same pose/lightning conditions/facial expression as the training images? –  GilLevi Mar 11 at 15:35
    
@GilLevi The size of the training set is 15 .. I have 3 persons 5 images for each person .. Not all test images are in the same pose/lightning condition but the facial expressions are the same –  Ibrahim Amer Mar 11 at 16:13
    
Thanks for uploading the test images. For each test image, are you first detecting the face and them apply face recognition or are you running face recognition on the entire input image? –  GilLevi Mar 11 at 16:15
    
@GilLevi no sir, first I apply face detection on the input image, then applying face recognition on the returned result –  Ibrahim Amer Mar 11 at 16:21
    
5 per person are definitely not enough. 20, maybe. –  berak Mar 11 at 18:34

1 Answer 1

your training set should have the same size (dimensions) and gray images

List<Image<Gray, byte>>
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