Fusing Face-Verification Algorithms and Humans

@article{OToole2007FusingFA,
  title={Fusing Face-Verification Algorithms and Humans},
  author={Alice J. O'Toole and Herv{\'e} Abdi and Fang Jiang and P. Jonathon Phillips},
  journal={IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics)},
  year={2007},
  volume={37},
  pages={1149-1155}
}
It has been demonstrated that state-of-the-art face-recognition algorithms can surpass human accuracy at matching faces over changes in illumination. The ranking of algorithms and humans by accuracy, however, does not provide information about whether algorithms and humans perform the task comparably or whether algorithms and humans can be fused to improve performance. In this paper, we fused humans and algorithms using partial least square regression (PLSR). In the first experiment, we applied… CONTINUE READING
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