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Weighted Block-Sparse Low Rank Representation for Face Clustering in Videos

机译:视频中脸部聚类的加权块稀疏低等级表示

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In this paper, we study the problem of face clustering in videos. Specifically, given automatically extracted faces from videos and two kinds of prior knowledge (the face track that each face belongs to, and the pairs of faces that appear in the same frame), the task is to partition the faces into a given number of disjoint groups, such that each group is associated with one subject. To deal with this problem, we propose a new method called weighted block-sparse low rank representation (WBSLRR) which considers the available prior knowledge while learning a low rank data representation, and also develop a simple but effective approach to obtain the clustering result of faces. Moreover, after using several acceleration techniques, our proposed method is suitable for solving large-scale problems. The experimental results on two benchmark datasets demonstrate the effectiveness of our approach.
机译:在本文中,我们研究了视频中脸部聚类问题。 具体地,给定自动提取来自视频的面部和两种先前知识(每个面部所属的面部轨道以及出现在同一帧中的对的面部的面部),任务是将面部分区为给定数量的不相交 组,使得每个组与一个主题相关联。 要解决这个问题,我们提出了一种新的方法,称为加权块 - 稀疏低秩表示(WBSLRR),其在学习低等级数据表示时考虑可用的先前知识,并且还开发了一种简单但有效的方法来获得群集结果 面孔。 此外,在使用几种加速技术之后,我们所提出的方法适用于解决大规模问题。 两个基准数据集的实验结果证明了我们方法的有效性。

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