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I'm working on face recognition system where I'm facing issue in detecting unknown faces. The issue is system always returns nearest matching face from the database for the unknown face.

I have used a combination of three algorithms(EIGEN, FISHER & LBPH) to get better accuracy in face recognition. It gives 80-90% accuracy for the faces which are already present in the database, but for the unknown face which not present in the database, it always returns the best match face from the database.

eigenFaceRecognizer = new EigenFaceRecognizer(4,5000);
FisheigenFaceRecognizer = new FisherFaceRecognizer(4, 5000);  
LBPeigenFaceRecognizer = new LBPHFaceRecognizer(4, 8, 8, 8, 5000)                   
var result = eigenFaceRecognizer.Predict(_grayFrame);
var resultFish = FisheigenFaceRecognizer.Predict(_grayFrame);
var LBPresult = LBPeigenFaceRecognizer.Predict(_grayFrame);

if (result.Label != -1 && resultFish.Label != -1 && LBPresult.Label != -1)
{
    if ( result.Label == resultFish.Label == LBPresult.Label)
    {
     return Label;
    }
}
else
{
return "Unknown"
}
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  • 2
    Please post relevant code – Frontear May 8 '19 at 13:33
  • You say that even unknown people return a match from the database, this is because the facial recognition software just gives you the closest resemblance, it leaves drawing the line of known and unknown up to you, you should pick a % confidence below which your code will treat the face as unknown. – x13 May 8 '19 at 13:42
  • @Frontear Im not getting confidence value in c# ...i only get Label & Distance value in predict method. – Mayur Patil May 8 '19 at 13:46
  • @Frontear can you tell me how can i use these 2 parameter(Label & Distance) for detecting unknown people? – Mayur Patil May 9 '19 at 5:18
0

I use bellowing code. It's quite useful for me. By the way I'm using EMGU.CV library. "Image Input_image" this format is Emgu.CV format. When I check your code I think these threshold values is so high. With changing these threshold values, you can find most suitable values for your data. Actually there is no ideal threshold values such as system. It's always depend your data whatever training or test sets images.

And I read some article and I develop it. I recomend you this article.

https://www.codeproject.com/Articles/261550/EMGU-Multiple-Face-Recognition-using-PCA-and-Paral

Good luck and success.

public string Recognise(Image<Gray, byte> Input_image, int Eigen_Thresh = -1)
    {
        if (_IsTrained)
        {

            FaceRecognizer.PredictionResult ER = recognizer.Predict(Input_image);

            if (ER.Label == -1)
            {
                Eigen_label = "Unknown";
                Eigen_Distance = 0;
                return Eigen_label;
            }
            else
            {
                Eigen_label = Names_List[ER.Label];
                Eigen_Distance = (float)ER.Distance;
                if (Eigen_Thresh > -1) Eigen_threshold = Eigen_Thresh;
                Console.WriteLine("-Recognise Distance-" + Eigen_Distance + "--" + "Possible Label- " + "--" + Eigen_label);
                //Only use the post threshold rule if we are using an Eigen Recognizer 
                //since Fisher and LBHP threshold set during the constructor will work correctly 
                switch (Recognizer_Type)
                {
                    case ("EMGU.CV.EigenFaceRecognizer"):
                        Console.WriteLine("I'm in");
                        if (Eigen_Distance >= Eigen_threshold)
                        {
                            return Eigen_label; //işareti değiştiridim.z
                        }
                        else return "";
                    case ("EMGU.CV.LBPHFaceRecognizer"):
                        if (Eigen_Distance < 100)
                        {
                            return Eigen_label;
                        }
                        else return "Noise";
                    case ("EMGU.CV.FisherFaceRecognizer"):
                    default:
                        return Eigen_label; //the threshold set in training controls unknowns
                }
            }
        }
        else return "";

    }
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EigenFaces and its improvments FisherFaces and LBPH are not very good to recognize people from different images because they are really valnurable on diffrent image qualities lightning and so on. Also the distance it returns doesn't really tell you that much as far as I know.

There are a lot of different projects that try to do this with deep neural networks. You could get a starting point on how to do this with C# here https://arsexquisitus.000webhostapp.com/2019/09/facial-detection-and-recognition-with-ai-and-dnn

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