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Autotagging Facebook: Social Network Context Improves Photo Annotation

机译:AutoCaging Facebook:社交网络上下文改善了照片注释

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Most personal photos that are shared online are embedded in some form of social network, and these social networks are a potent source of contextual information that can be leveraged for automatic image understanding. In this paper, we investigate the utility of social network context for the task of automatic face recognition in personal photographs. We combine face recognition scores with social context in a conditional random field (CRF) model and apply this model to label faces in photos from the popular online social network Facebook, which is now the top photo-sharing site on the Web with billions of photos in total. We demonstrate that our simple method of enhancing face recognition with social network context substantially increases recognition performance beyond that of a base-line face recognition system.
机译:在线共享的大多数个人照片都嵌入了某种形式的社交网络,这些社交网络是可以利用自动图像理解的有效性的上下文信息来源。在本文中,我们调查社交网络背景的效用,以便在个人照片中自动面部识别的任务。我们将面部识别分数与社会上下文相结合,在条件随机字段(CRF)模型中,并将此模型应用于来自流行的在线社交网络Facebook的照片中的标签面,这是现在Web上的顶级照片共享网站,其中包含数十亿的照片总共。我们证明,我们通过社交网络上下文增强面部识别的简单方法基本上提高了超出基线面部识别系统的识别性能。

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