# Any tips on confidence score for face verification (as opposed to face recognition)?

I'm using eigenfaces (PCA) for face recognition in my code. I used the tutorials in OpenCV's website as a reference. While this works great for recognizing faces (ie it can tell you who is who correctly), the confidence-score based face verification (or imposter detection- verifying whether the face is enrolled in the training set) doesn't work well at all.

I compute a Euclidean distance and use it as a confidence threshold. Are there any other ways I could calculate a confidence threshold? I tried using Mahalanobis distance as mentioned in http://www.cognotics.com/opencv/servo_2007_series/part_5/page_5.html , but it was producing pretty weird values.

PS: Solutions like face.com won't probably work for me because I need to do everything locally.

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You can project the new input face onto the Eigenspace using `subspaceProject()` function and then generate the reconstructed face back from the Eigenspace using `subspaceReconstruct()` and then compare how similar the input_face and the reconstructed_face is. A known face (face in the training data set) will have the reconstructed image more similar to the input_face than an imposter's face. You can set a similarity threshold for verification. Here's the code:

``````// Project the input face onto the eigenspace.
Mat projection = subspaceProject(eigenvectors, FaceRow,input_face.reshape(1,1));

//Generate the reconstructed face
Mat reconstructionRow = subspaceReconstruct(eigenvectors,FaceRow, projection);

// Reshape the row mat to an image mat
Mat reconstructionMat = reconstructionRow.reshape(1,faceHeight);

// Convert the floating-point pixels to regular 8-bit uchar.
Mat reconstructed_face = Mat(reconstructionMat.size(), CV_8U);

reconstructionMat.convertTo(reconstructed_face, CV_8U, 1, 0);
``````

You can then compare the input face and the reconstructed face using `cv::norm()`. For example:

``````// Calculate the L2 relative error between the 2 images.
double err = norm(input_face,reconstructed_face, CV_L2);
// Convert to a reasonable scale
double similarity = error / (double)(input_face.rows * input_face.cols);
``````
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