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Hierarchical Tree Representation Based Face Clustering for Video Retrieval

机译:基于层次树表示的视频检索人脸聚类

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We present a video as a set of people, each person is a sequence of faces clustered by proposed hierarchical tree representation with the purpose of finding all the occurrences of a person in the video without any help of textual information. In the proposed method, faces in a video are detected and tracked to be face-tracks at first, and each face-track is associated with one person. By leveraging temporal constrains, face-tracks that depict the same person in a video are connected. Then we build undirected graphs for a video, and extend discriminative histogram intersection metric learning to generate semantic distances for cutting undirected graphs to be face clusters without predefining the number of clusters. When searching for videos containing the person of query, it is effective to compare faces of query video with sets of people summarized from videos in the dataset. Experimental results show that the proposed face clustering can improve the mean Average Precision of video retrieval and decrease the query time compared to several state-of-the-art approaches.
机译:我们将视频呈现为一组人,每个人都是一系列人脸,这些人脸是通过提议的层次树表示聚类的,目的是查找视频中某个人的所有出现而无需任何文本信息。在提出的方法中,首先检测视频中的面部并将其跟踪为面部轨迹,并且每个面部轨迹与一个人相关联。通过利用时间限制,可以在视频中连接描绘同一个人的面部轨迹。然后,我们为视频建立无向图,并扩展判别直方图相交度量学习以生成语义距离,以将无向图切割成人脸聚类,而无需预先定义聚类的数量。在搜索包含查询人物的视频时,将查询视频的面孔与从数据集中的视频中汇总的人物集进行比较是有效的。实验结果表明,与几种最新方法相比,所提出的人脸聚类可以提高视频检索的平均平均精度,并减少查询时间。

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