FaceNet
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FaceNet is a facial recognition system developed by Florian Schroff, Dmitry Kalenichenko and James Philbina, a group of researchers affiliated to Google. The system was first presented in the IEEE Conference on Computer Vision and Pattern Recognition held in 2015.[1] The system uses a deep convolutional neural network to learn a mapping (also called an embedding) from a set of face images to the 128-dimensional Euclidean space and the similarity between two face images is assessed based on the square of the Euclidean distance between the corresponding normalized vectors in the 128-dimensional Euclidean space. The system used the triplet loss function as the cost function and introduced a new online triplet mining method. The system achieved an accuracy of 99.63% which is the highest score on Labeled Faces in the Wild dataset in the unrestricted with labeled outside data protocol.[2]