A Paired Sparse Representation Model for Robust Face Recognition from a Single Sample
Fania Mokhayeri, Eric Granger

TL;DR
This paper introduces a paired sparse representation model that enhances face recognition accuracy from a single sample by jointly utilizing variational information and synthetic images to handle non-linear pose variations.
Contribution
The proposed synthetic plus variational model effectively accounts for non-linear variations in face recognition by combining variational dictionaries with synthetic images in a joint sparse framework.
Findings
Outperforms state-of-the-art SRC methods on Chokepoint and COX-S2V datasets.
Effectively handles pose variations with synthetic face images.
Improves still-to-video face recognition accuracy from a single sample.
Abstract
Sparse representation-based classification (SRC) has been shown to achieve a high level of accuracy in face recognition (FR). However, matching faces captured in unconstrained video against a gallery with a single reference facial still per individual typically yields low accuracy. For improved robustness to intra-class variations, SRC techniques for FR have recently been extended to incorporate variational information from an external generic set into an auxiliary dictionary. Despite their success in handling linear variations, non-linear variations (e.g., pose and expressions) between probe and reference facial images cannot be accurately reconstructed with a linear combination of images in the gallery and auxiliary dictionaries because they do not share the same type of variations. In order to account for non-linear variations due to pose, a paired sparse representation model is…
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