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Collaborative Face Recognition for Improved Face Annotation in Personal Photo Collections Shared on Online Social Networks

机译:在线社交网络上共享的个人照片集中的协作人脸识别可改善人脸注释

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摘要

Using face annotation for effective management of personal photos in online social networks (OSNs) is currently of considerable practical interest. In this paper, we propose a novel collaborative face recognition (FR) framework, improving the accuracy of face annotation by effectively making use of multiple FR engines available in an OSN. Our collaborative FR framework consists of two major parts: selection of FR engines and merging (or fusion) of multiple FR results. The selection of FR engines aims at determining a set of personalized FR engines that are suitable for recognizing query face images belonging to a particular member of the OSN. For this purpose, we exploit both social network context in an OSN and social context in personal photo collections. In addition, to take advantage of the availability of multiple FR results retrieved from the selected FR engines, we devise two effective solutions for merging FR results, adopting traditional techniques for combining multiple classifier results. Experiments were conducted using 547 991 personal photos collected from an existing OSN. Our results demonstrate that the proposed collaborative FR method is able to significantly improve the accuracy of face annotation, compared to conventional FR approaches that only make use of a single FR engine. Further, we demonstrate that our collaborative FR framework has a low computational cost and comes with a design that is suited for deployment in a decentralized OSN.
机译:使用脸部注释来有效管理在线社交网络(OSN)中的个人照片目前具有相当大的实际意义。在本文中,我们提出了一种新颖的协作人脸识别(FR)框架,通过有效利用OSN中可用的多个FR引擎来提高人脸注释的准确性。我们的协作FR框架包括两个主要部分:FR引擎的选择和多个FR结果的合并(或融合)。 FR引擎的选择旨在确定一组个性化FR引擎,这些引擎适合于识别属于OSN特定成员的查询人脸图像。为此,我们利用OSN中的社交网络环境和个人照片集中的社交环境。另外,为了利用从选定的FR引擎中检索到的多个FR结果的可用性,我们设计了两种合并FR结果的有效解决方案,采用了传统技术来组合多个分类器结果。使用从现有OSN收集的547-991张个人照片进行实验。我们的结果表明,与仅使用单个FR引擎的常规FR方法相比,提出的协作FR方法能够显着提高面部注释的准确性。此外,我们证明了我们的协作FR框架具有较低的计算成本,并且具有适合在分散的OSN中进行部署的设计。

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