Sparsifying transform learning for face image classification

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Inst Engineering Technology-Iet

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info:eu-repo/semantics/closedAccess

Abstract

Sparse signal representation showed promising results in the field of face recognition in the past few years. An algorithm based on a sparsifying transform is considered. It mainly learns a dictionary that can transform the image into sparse vectors. In the transformation domain, the images of the same class should have similar non-zero coefficients pattern that can be used for identification. The classification process of this method only requires to transform the image and make norm comparisons to determine the class of the image. The proposed method shows a comparable performance with the other known methods in the literature by means of accuracy. A novel method in sparsity-based image identification that uses analysis dictionaries is proposed, unlike the conventional sparsity-based methods. One advantage of the proposed algorithm is the low computational cost of the classification process.

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Keywords

image classification, signal reconstruction, learning (artificial intelligence), transforms, face recognition, image representation, signal representation, nonzero coefficients pattern, classification process, norm comparisons, comparable performance, known methods, sparsity-based image identification, analysis dictionaries, conventional sparsity-based methods, sparsifying, face image classification, sparse signal representation, face recognition, dictionary, sparse vectors, transformation domain

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Electronics Letters

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Volume

54

Issue

17

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