Abstract
Sparse coding is currently an active topic in signal processing and pattern recognition. MetaFace Learning (MFL) is a typical sparse coding method and exhibits promising performance for classification. Unfortunately, due to using the l1-norm minimization, MFL is expensive to compute and is not robust enough. To address these issues, this paper proposes a faster and more robust version of MFL with the l2-norm regularization constraint on coding coefficients. The proposed method is used to learn a class-specific dictionary for facial expression recognition. Extensive experiments on two popular facial expression databases, i.e., the JAFFE database and the Cohn-Kanade database, demonstrate that our method shows promising computational efficiency and robustness on facial expression recognition tasks.
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Zhang, S., Zhang, G., Cui, Y., & Zhao, X. (2016). Learning a class-specific dictionary for facial expression recognition. Cybernetics and Information Technologies, 16(4), 55–62. https://doi.org/10.1515/cait-2016-0067
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