On Robust Face Recognition via Sparse Encoding: the Good, the Bad, and the Ugly
Yongkang Wong, Mehrtash T. Harandi, Conrad Sanderson

TL;DR
This paper introduces a local sparse encoding approach for face recognition that improves robustness to misalignment and deformations, outperforming previous holistic methods in verification and identification tasks.
Contribution
It proposes a novel local patch-based sparse encoding framework for face recognition, addressing limitations of holistic SR methods in verification scenarios.
Findings
Local SR encoding improves robustness to misalignment.
L1-minimisation yields higher accuracy but is computationally intensive.
The method outperforms state-of-the-art holistic SR techniques on multiple datasets.
Abstract
In the field of face recognition, Sparse Representation (SR) has received considerable attention during the past few years. Most of the relevant literature focuses on holistic descriptors in closed-set identification applications. The underlying assumption in SR-based methods is that each class in the gallery has sufficient samples and the query lies on the subspace spanned by the gallery of the same class. Unfortunately, such assumption is easily violated in the more challenging face verification scenario, where an algorithm is required to determine if two faces (where one or both have not been seen before) belong to the same person. In this paper, we first discuss why previous attempts with SR might not be applicable to verification problems. We then propose an alternative approach to face verification via SR. Specifically, we propose to use explicit SR encoding on local image patches…
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