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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >A High-Efficiency and High-Accuracy Fully Automatic Collaborative Face Annotation System for Distributed Online Social Networks
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A High-Efficiency and High-Accuracy Fully Automatic Collaborative Face Annotation System for Distributed Online Social Networks

机译:分布式在线社交网络的高效,高精度全自动协同人脸标注系统

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摘要

The development of fully automatic face annotation techniques in online social networks is currently very important for effective management and organization of a large number of personal photos shared on social network platforms. In this paper, we first propose the personalized hierarchical database access architecture for each member by taking advantage of various social network context types to substantially reduce time consumption. Next, we construct the personalized and adaptive fused face recognition (FR) unit for each member, which uses the AdaBoost algorithm to fuse several different types of base classifiers to produce highly reliable face annotation results. Additionally, to efficiently select suitable personalized face recognizers and then effectively merge multiple personalized face recognizer results, we propose two collaborative FR strategies: the owner with a highest priority rule and using a weighted majority rule for query photos within our collaborative FR framework. The experiment results demonstrate that the evaluation methodologies produced (F) -measure and Similarity accuracy rates that were, respectively, 64.03% and 63.05% higher for the proposed method in comparison to other state-of-the-art face annotation methods, as well as demonstrating that our method can result in a reduction in overall processing time of 78.06%.
机译:当前,在线社交网络中全自动面部注释技术的发展对于有效管理和组织在社交网络平台上共享的大量个人照片非常重要。在本文中,我们首先通过利用各种社交网络上下文类型为每个成员提出个性化的分层数据库访问体系结构,以显着减少时间消耗。接下来,我们为每个成员构建个性化的自适应融合人脸识别(FR)单元,该单元使用AdaBoost算法融合几种不同类型的基础分类器以产生高度可靠的人脸注释结果。此外,为了有效地选择合适的个性化面部识别器,然后有效地合并多个个性化面部识别器结果,我们提出了两种协作FR策略:拥有最高优先级规则的所有者,以及在我们的协作FR框架内使用加权多数规则查询照片。实验结果表明,该评估方法产生的 (F) -度量和相似准确率分别为与其他最新的人脸标注方法相比,该方法要高出64.03%和63.05%。这表明我们的方法可以使整体处理时间减少78.06%。

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