Multi-Pose Face Recognition Using Pairwise Supervised Dictionary Learning

A major challenge in face recognition is handling large pose variations. Here, we proposed to tackle this challenge by a three step sparse representation based method: estimating the pose of an unseen non-frontal face image, generating its virtual frontal view using learned view-dependent dictionari...

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Veröffentlicht in:Informatica (Vilnius, Lithuania) Lithuania), 2019-01, Vol.30 (4), p.647-670
Hauptverfasser: Farahani, Ali, Mohseni, Hadis
Format: Artikel
Sprache:eng
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Zusammenfassung:A major challenge in face recognition is handling large pose variations. Here, we proposed to tackle this challenge by a three step sparse representation based method: estimating the pose of an unseen non-frontal face image, generating its virtual frontal view using learned view-dependent dictionaries, and classifying the generated frontal view. It is assumed that for a specific identity, the representation coefficients based on the view dictionary are invariant to pose and view-dependent frontal view generation transformations are learned based on pair-wise supervised dictionary learning. Experiments conducted on FERET and CMU-PIE face databases depict the efficacy of the proposed method.
ISSN:0868-4952
1822-8844
DOI:10.15388/Informatica.2019.223