Fast Label Propagation On Facial Images Using A Pruned Similarity Matrix

2016 DIGITAL MEDIA INDUSTRY AND ACADEMIC FORUM (DMIAF)(2016)

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摘要
The label propagation process, which is often used to semantically annotate (tag) large amounts of multimedia data assets must be fast, in order to be efficient. In this paper, a novel facial images fast labeling method that is essentially a semi-supervised face recognition approach, is presented. The proposed method is based on the acceleration of a state of the art facial identity label propagation technique. The new method is called pruned label propagation due to the fact that the facial label inference is conducted using a similarity matrix containing fewer entries, namely the pairwise similarities that reside in the main and the off-diagonals of this matrix. Experiments conducted on facial image labeling in three stereoscopic movies, confirm the increased labeling accuracy and the reduced computational complexity of the proposed method.
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关键词
fast label propagation process,semantic annotation,multimedia data assets,facial image fast labeling method,semsupervised face recognition approach,facial identity label propagation technique,facial label inference,similarity matrix,pairwise similarities,matrix off-diagonals,stereoscopic movies,computational complexity
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