Active Clustering with Ensembles for Social structure extraction

Jeremiah R. Barr, Leonardo A. Cament, K. Bowyer, P. Flynn
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引用次数: 23

Abstract

We introduce a method for extracting the social network structure for the persons appearing in a set of video clips. Individuals are unknown, and are not matched against known enrollments. An identity cluster representing an individual is formed by grouping similar-appearing faces from different videos. Each identity cluster is represented by a node in the social network. Two nodes are linked if the faces from their clusters appeared together in one or more video frames. Our approach incorporates a novel active clustering technique to create more accurate identity clusters based on feedback from the user about ambiguously matched faces. The final output consists of one or more network structures that represent the social group(s), and a list of persons who potentially connect multiple social groups. Our results demonstrate the efficacy of the proposed clustering algorithm and network analysis techniques.
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基于集成的主动聚类社会结构提取
我们介绍了一种提取一组视频片段中出现的人物的社会网络结构的方法。个体是未知的,并且不能与已知的登记进行匹配。通过将来自不同视频的相似面孔分组,形成代表个人的身份集群。每个身份集群由社交网络中的一个节点表示。如果两个节点中的面孔在一个或多个视频帧中一起出现,则两个节点连接在一起。我们的方法结合了一种新颖的主动聚类技术,基于用户对模糊匹配面部的反馈来创建更准确的身份聚类。最终输出包括一个或多个代表社会群体的网络结构,以及可能连接多个社会群体的人员列表。我们的结果证明了所提出的聚类算法和网络分析技术的有效性。
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