Facing scalability: Naming faces in an online social network
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摘要
Automatically naming faces in online social networks enables us to search for photos and build user face models. We consider two common weakly supervised settings where: (1) users are linked to photos, not to faces and (2) photos are not labeled but part of a user's album. The focus is on algorithms that scale up to an entire online social network. We extensively evaluate different graph-based strategies to label faces in both settings and consider dependencies. We achieve results on a par with a recent multi-person approach, but with 60 times less computation time on a set of 300K weakly labeled faces and 1.4 M faces in user albums. A subset of the faces can be labeled with a speed-up of over three orders of magnitude.
论文关键词:Face naming,Online social network,Weak labeling,Scalability,Graph-based
论文评审过程:Received 18 August 2011, Revised 6 December 2011, Accepted 10 December 2011, Available online 26 December 2011.
论文官网地址:https://doi.org/10.1016/j.patcog.2011.12.018