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Unsupervised recognition of multi-view face sequences based on pairwise clustering with attraction and repulsion

机译:基于具有吸引力和排斥力的成对聚类的多视图人脸序列的无监督识别

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摘要

In this paper we propose and investigate the possibilities inherent in a new, unsupervised approach to multi-view face recognition, which can be formulated mathematically as a problem of partitioning of proximity data, obtained from multi-view face image sequences. The proposed approach is implemented in two novel pairwise clustering algorithms, CAR1 and CAR2, which partition the input data into identity clusters by performing combinatorial optimization guided by two types of interaction forces, attraction and repulsion, imposed on the original proximity matrices. Several experiments were conducted in order to test the performance of the proposed algorithms on real-world datasets including both frontal and side-view faces, which have been gathered over a period of several months. The obtained results can be considered encouraging for the general approach proposed here, and the new algorithms compared favorably to two other pairwise clustering algorithms, recently proposed in the image segmentation literature.
机译:在本文中,我们提出并研究了一种新的,无监督的多视图人脸识别方法的内在可能性,该方法可以用数学方法表述为从多视图人脸图像序列获得的邻近数据划分问题。所提出的方法是在两种新颖的成对聚类算法CAR1和CAR2中实现的,CAR1和CAR2将输入数据通过执行组合优化,并根据施加在原始邻近矩阵上的两种类型的相互作用力(引力和斥力)进行引导,将其划分为身份簇。为了测试提出的算法在包括前脸和侧面视图的真实世界数据集上的性能,进行了几次实验,这些数据集已经收集了几个月。所获得的结果对于此处提出的通用方法而言可以认为是令人鼓舞的,并且与最近在图像分割文献中提出的另外两种成对聚类算法相比,新算法具有优势。

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