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Bayesian Face Revisited: A Joint Formulation

机译:再谈贝叶斯脸:联合制定

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In this paper, we revisit the classical Bayesian face recognition method by Baback Moghaddam et al. and propose a new joint formulation. The classical Bayesian method models the appearance difference between two faces. We observe that this "difference" formulation may reduce the separability between classes. Instead, we model two faces jointly with an appropriate prior on the face representation. Our joint formulation leads to an EM-like model learning at the training time and an efficient, closed-formed computation at the test time. On extensive experimental evaluations, our method is superior to the classical Bayesian face and many other supervised approaches. Our method achieved 92.4% test accuracy on the challenging Labeled Face in Wild (LFW) dataset. Comparing with current best commercial system, we reduced the error rate by 10%.
机译:在本文中,我们回顾了Baback Moghaddam等人的经典贝叶斯人脸识别方法。并提出新的联合表述。经典的贝叶斯方法对两个面之间的外观差异进行建模。我们观察到,这种“差异”表述可能会降低类之间的可分离性。取而代之的是,我们在人脸表示上使用适当的先验对两个人脸进行建模。我们的联合公式可以在训练时学习类似EM的模型,并在测试时进行高效,封闭式的计算。在广泛的实验评估中,我们的方法优于经典的贝叶斯脸和许多其他受监督的方法。我们的方法在具有挑战性的“野生标签脸”(LFW)数据集上实现了92.4%的测试准确性。与目前最好的商业系统相比,我们将错误率降低了10%。

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