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Article Dans Une Revue IEEE Transactions on Image Processing Année : 2017

Face Hallucination Using Linear Models of Coupled Sparse Support

Résumé

Most face super-resolution methods assume that low-and high-resolution manifolds have similar local geometrical structure, hence learn local models on the low-resolution manifold (e.g. sparse or locally linear embedding models), which are then applied on the high-resolution manifold. However, the low-resolution manifold is distorted by the one-to-many relationship between low-and high-resolution patches. This paper presents the Linear Model of Coupled Sparse Support (LM-CSS) method which learns linear models based on the local geometrical structure on the high-resolution manifold rather than on the low-resolution manifold. For this, in a first step, the low-resolution patch is used to derive a globally optimal estimate of the high-resolution patch. The approximated solution is shown to be close in Euclidean space to the ground-truth but is generally smooth and lacks the texture details needed by state-of-the-art face recognizers. Unlike existing methods, the sparse support that best estimates the first approximated solution is found on the high-resolution manifold. The derived support is then used to extract the atoms from the coupled low-and high-resolution dictionaries that are most suitable to learn an up-scaling function for every facial region. The proposed solution was also extended to compute face super-resolution of non-frontal images. Extensive experimental results conducted on a total of 1830 facial images show that the proposed method outperforms seven face super-resolution and a state-of-the-art cross-resolution face recognition method in terms of both quality and recognition. The best recognition performance was achieved using LM-CSS followed by the Local Binary Pattern (LBP) face recognizer, where it was found to outperform the state-of-the-art Discriminant Face Descriptor (DFD) very-low resolution face recognition system, achieving rank-1 recognition gains between 34% and 60% at very low-resolutions. Moreover, subjective results show that the proposed solution is able to super-resolve more accurate facial images from the challenging IARPA Janus Benchmark A (IJB-A) dataset, which considers a wide range of poses and orientations at magnification factors as high as five.
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Dates et versions

hal-01591517 , version 1 (21-09-2017)

Identifiants

Citer

Reuben A Farrugia, Christine Guillemot. Face Hallucination Using Linear Models of Coupled Sparse Support. IEEE Transactions on Image Processing, 2017, 26 (9), pp.4562-4577. ⟨10.1109/TIP.2017.2717181⟩. ⟨hal-01591517⟩
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