Fast L(1)-Minimization Algorithms For Robust Face Recognition

IEEE TRANSACTIONS ON IMAGE PROCESSING(2013)

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摘要
l(1)-minimization refers to finding the minimum l(1)-norm solution to an underdetermined linear system b = Ax. Under certain conditions as described in compressive sensing theory, the minimum l(1)-norm solution is also the sparsest solution. In this paper, we study the speed and scalability of its algorithms. In particular, we focus on the numerical implementation of a sparsity-based classification framework in robust face recognition, where sparse representation is sought to recover human identities from high-dimensional facial images that may be corrupted by illumination, facial disguise, and pose variation. Although the underlying numerical problem is a linear program, traditional algorithms are known to suffer poor scalability for large-scale applications. We investigate a new solution based on a classical convex optimization framework, known as augmented Lagrangian methods. We conduct extensive experiments to validate and compare its performance against several popular l(1)-minimization solvers, including interior-point method, Homotopy, FISTA, SESOP-PCD, approximate message passing, and TFOCS. To aid peer evaluation, the code for all the algorithms has been made publicly available.
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关键词
l(1)-minimization, augmented Lagrangian methods, face recognition
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