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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A Coupled Hidden Markov Random Field model for simultaneous face clustering and tracking in videos
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A Coupled Hidden Markov Random Field model for simultaneous face clustering and tracking in videos

机译:用于同时脸部聚类和视频跟踪的耦合隐马尔可夫随机字段模型

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摘要

Face clustering and face tracking are two areas of active research in automatic facial video processing. They, however, have long been studied separately, despite the inherent link between them. In this paper, we propose to perform simultaneous face clustering and face tracking from real world videos. The motivation for the proposed research is that face clustering and face tracking can provide useful information and constraints to each other, thus can bootstrap and improve the performances of each other. To this end, we introduce a Coupled Hidden Markov Random Field (CHMRF) to simultaneously model face clustering, face tracking, and their interactions. We provide an effective algorithm based on constrained clustering and optimal tracking for the joint optimization of cluster labels and face tracking. We demonstrate significant improvements over state-ofthe-art results in face clustering and tracking on several videos.
机译:人脸聚类和人脸跟踪是人脸视频自动处理中两个活跃的研究领域。然而,尽管它们之间存在着固有的联系,但它们长期以来一直被单独研究。在本文中,我们提出从真实视频中同时进行人脸聚类和人脸跟踪。本研究的动机是人脸聚类和人脸跟踪可以相互提供有用的信息和约束,从而可以引导和提高彼此的性能。为此,我们引入一个耦合的隐马尔可夫随机场(CHMRF)来同时对人脸聚类、人脸跟踪及其相互作用进行建模。我们提出了一种基于约束聚类和最优跟踪的聚类标签和人脸跟踪联合优化算法。我们在几个视频中展示了人脸聚类和跟踪方面的显著改进。

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