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A Bayesian Approach for Joint Discriminative Dictionary and Classifier Learning

Wei Zhou, Yue Wu, Junlin Li, Maolin Wang, Hai-Tao Zhang

2022IEEE Transactions on Systems Man and Cybernetics Systems14 citationsDOI

Abstract

Sparse representation has been widely applied to image classification, where the key issue is to extract a suitable discriminative dictionary. To this end, we propose a joint dictionary and classifier learning algorithm based on a parameterized Bayesian model. Therein, the Gaussian priors of a dictionary endow it with the capability of discrimination and representation. Moreover, we introduce a multivariate Gaussian prior for the sparse codes to achieve group sparsity, thereby substantially improving the classification performance. Furthermore, the sparse codes are estimated by a group-sparse Bayesian learning (GSBL) method, and the dictionary atoms are updated sequentially by maximizing a posterior. Moreover, to avoid manual parameter adjustment, the hyperparameters are optimized by an evidence maximization method. Accordingly, we develop a classification scheme via GSBL. Finally, extensive experiments are conducted on six benchmark datasets of face classification, object recognition, handwritten recognition, and scene categorization to substantiate the effectiveness and superiority of the proposed method.

Topics & Concepts

Artificial intelligencePattern recognition (psychology)Computer scienceDiscriminative modelHyperparameterSparse approximationClassifier (UML)Bayesian probabilityMachine learningPrior probabilityContextual image classificationImage (mathematics)Face and Expression RecognitionSparse and Compressive Sensing TechniquesDomain Adaptation and Few-Shot Learning