Facebook is working on artificial intelligence software called DeepFace that is capable of matching faces in images with nearly the same accuracy as humans.
The social network's DeepFace system uses a 3D modeling technique to detect faces, and crop and warp them so that they face front, a method known as frontalization.
The software, currently in testing, is a facial verification system and differs from facial recognition in that it matches faces in large data sets, as opposed to assigning identity to faces. In essence, DeepFace can scan millions of photos, virtually rotate and correct the images, and find all matching faces.
The sophisticated system was trained using a data set of more than 4 million facial images of 4,000 people. Facebook's method proved accurate 97.25 percent of the time, according to the company's recently published paper, "DeepFace: Closing the Gap to Human-Level Performance in Face Verification."
Though still in the research and development stages, Facebook's proposed system purports to reduce the error of the current state of facial matching technologies by more than 25 percent.
Facebook's AI Group will present its research at the Conference on Computer Vision and Pattern Recognition in June.