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Uncertainty Modeling of Contextual-Connections Between Tracklets for Unconstrained Video-Based Face Recognition

机译:用于基于视频的无约束人脸识别的小径之间的上下文连接的不确定性建模

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Unconstrained video-based face recognition is a challenging problem due to significant within-video variations caused by pose, occlusion and blur. To tackle this problem, an effective idea is to propagate the identity from high-quality faces to low-quality ones through contextual connections, which are constructed based on context such as body appearance. However, previous methods have often propagated erroneous information due to lack of uncertainty modeling of the noisy contextual connections. In this paper, we propose the Uncertainty-Gated Graph (UGG), which conducts graph-based identity propagation between tracklets, which are represented by nodes in a graph. UGG explicitly models the uncertainty of the contextual connections by adaptively updating the weights of the edge gates according to the identity distributions of the nodes during inference. UGG is a generic graphical model that can be applied at only inference time or with end-to-end training. We demonstrate the effectiveness of UGG with state-of-the-art results in the recently released challenging Cast Search in Movies and IARPA Janus Surveillance Video Benchmark dataset.
机译:由于姿势,遮挡和模糊造成的视频内显着变化,基于视频的无限制人脸识别是一个具有挑战性的问题。为了解决这个问题,一个有效的想法是通过上下文连接将身份从高质量的面孔传播到低质量的面孔,这些联系是基于诸如身体外观之类的上下文构造的。但是,由于缺少嘈杂的上下文连接的不确定性建模,以前的方法经常传播错误的信息。在本文中,我们提出了不确定门控图(UGG),它在小轨迹之间进行基于图的身份传播,小轨迹由图中的节点表示。 UGG通过根据推理过程中节点的身份分布来自适应更新边缘门的权重来显式地建模上下文连接的不确定性。 UGG是通用的图形模型,只能在推理时间或端到端训练中应用。我们在最新发布的具有挑战性的电影演员搜索和IARPA Janus Surveillance Video Benchmark数据集中,以最新结果证明了UGG的有效性。

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