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Person-specific face recognition in unconstrained environments: a combination of offline and online learning

机译:在不受限制的环境中特定于人的面部识别:离线和在线学习的组合

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This paper studies face recognition and person-specific face image retrieval in unconstrained environments. The proposed method consists of two parts: offline and online learning. In offline stage, we take advantage of both global and local features in a Bayesian framework for generic face recognition. In online stage, the offline learned classifier is adapted according to the query images of a given person, from which a person-specific face image retriever can be obtained. Our method is applied to the “Labeled Faces in the Wild” dataset, which is more realistic than usual face recognition datasets. We show that the combination of offline and online learning can yield very promising results.
机译:本文研究了在不受约束的环境中的人脸识别和特定人脸图像检索。所提出的方法包括两部分:离线学习和在线学习。在离线阶段,我们利用贝叶斯框架中的全局和局部特征来进行通用人脸识别。在在线阶段,根据给定人的查询图像来适配离线学习分类器,从中可以获得人特定的面部图像检索器。我们的方法适用于“野外标记面部”数据集,该数据集比通常的面部识别数据集更为真实。我们表明,离线学习和在线学习相结合可以产生非常有希望的结果。

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