Authors
Lior Wolf, Tal Hassner, Yaniv Taigman
Publication date
2009
Conference
The Asian Conference on Computer Vision (ACCV)
Pages
88-97
Publisher
Springer Berlin/Heidelberg
Description
Evaluating the similarity of images and their descriptors by employing discriminative learners has proven itself to be an effective face recognition paradigm. In this paper we show how “background samples”, that is, examples which do not belong to any of the classes being learned, may provide a significant performance boost to such face recognition systems. In particular, we make the following contributions. First, we define and evaluate the “Two-Shot Similarity” (TSS) score as an extension to the recently proposed “One-Shot Similarity” (OSS) measure. Both these measures utilize background samples to facilitate better recognition rates. Second, we examine the ranking of images most similar to a query image and employ these as a descriptor for that image. Finally, we provide results underscoring the importance of proper face alignment in automatic face recognition systems. These contributions in concert …
Total citations
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Scholar articles
L Wolf, T Hassner, Y Taigman - Computer Vision–ACCV 2009: 9th Asian Conference …, 2010
L Wolf, T Hassner, Y Taigman - 2009