Level Playing Field for Million Scale Face Recognition

Face recognition has the perception of a solved problem, however when tested at the million-scale exhibits dramatic variation in accuracies across the different algorithms [11]. Are the algorithms very different? Is access to good/big training data their secret weapon? Where should face recognition...

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Published in2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) pp. 3406 - 3415
Main Authors Nech, Aaron, Kemelmacher-Shlizerman, Ira
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.07.2017
Subjects
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ISSN1063-6919
1063-6919
DOI10.1109/CVPR.2017.363

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Abstract Face recognition has the perception of a solved problem, however when tested at the million-scale exhibits dramatic variation in accuracies across the different algorithms [11]. Are the algorithms very different? Is access to good/big training data their secret weapon? Where should face recognition improve? To address those questions, we created a benchmark, MF2, that requires all algorithms to be trained on same data, and tested at the million scale. MF2 is a public large-scale set with 672K identities and 4.7M photos created with the goal to level playing field for large scale face recognition. We contrast our results with findings from the other two large-scale benchmarks MegaFace Challenge and MS-Celebs-1M where groups were allowed to train on any private/public/big/small set. Some key discoveries: 1) algorithms, trained on MF2, were able to achieve state of the art and comparable results to algorithms trained on massive private sets, 2) some outperformed themselves once trained on MF2, 3) invariance to aging suffers from low accuracies as in MegaFace, identifying the need for larger age variations possibly within identities or adjustment of algorithms in future testing.
AbstractList Face recognition has the perception of a solved problem, however when tested at the million-scale exhibits dramatic variation in accuracies across the different algorithms [11]. Are the algorithms very different? Is access to good/big training data their secret weapon? Where should face recognition improve? To address those questions, we created a benchmark, MF2, that requires all algorithms to be trained on same data, and tested at the million scale. MF2 is a public large-scale set with 672K identities and 4.7M photos created with the goal to level playing field for large scale face recognition. We contrast our results with findings from the other two large-scale benchmarks MegaFace Challenge and MS-Celebs-1M where groups were allowed to train on any private/public/big/small set. Some key discoveries: 1) algorithms, trained on MF2, were able to achieve state of the art and comparable results to algorithms trained on massive private sets, 2) some outperformed themselves once trained on MF2, 3) invariance to aging suffers from low accuracies as in MegaFace, identifying the need for larger age variations possibly within identities or adjustment of algorithms in future testing.
Author Nech, Aaron
Kemelmacher-Shlizerman, Ira
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  givenname: Ira
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  fullname: Kemelmacher-Shlizerman, Ira
  email: kemelmi@cs.washington.edu
  organization: Paul G. Allen Sch. of Comput. Sci. & Eng., Univ. of Washington, Seattle, WA, USA
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Snippet Face recognition has the perception of a solved problem, however when tested at the million-scale exhibits dramatic variation in accuracies across the...
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StartPage 3406
SubjectTerms Benchmark testing
Clustering algorithms
Face
Face recognition
Flickr
Labeling
Training
Title Level Playing Field for Million Scale Face Recognition
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