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Incremental Learning of People Identities

机译:人们身份的增量学习

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Face recognition in unconstrained open-world settings is a challenging problem. Differently from the closed-set and open-set face recognition scenarios that assume that the face representations of known subjects have been manually enrolled in a gallery, the open-world scenario requires that the system learns identities incrementally from frame to frame, discriminate between known and unknown identities and automatically enrolls every new identity in the gallery, so to be able to recognize it every time it is observed again in the future. Performance scaling with large number of identities is likely to be needed in real situations. In this paper we discuss the problem and present a system that has been designed to perform effective open-world face recognition in real time at both small-moderate and large scale.
机译:在不受限制的开放环境中进行人脸识别是一个具有挑战性的问题。与假设已知对象的面部表示已手动注册到画廊的封闭式和开放式人脸识别方案不同,开放世界方案要求系统逐帧递增地学习身份,以区分已知对象和未知身份,并自动将所有新身份注册到图库中,以便将来每次再次被观察到时都可以识别它。在实际情况下,可能需要使用大量身份进行性能扩展。在本文中,我们讨论了该问题,并提出了一种系统,该系统旨在以小规模和大规模实时执行有效的开放世界人脸识别。

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