PCA REDUCED GAUSSIAN MIXTURE MODELS WITH APPLICATIONS IN SUPERRESOLUTION

Despite the rapid development of computational hardware, the treatment of large and high dimensional data sets is still a challenging prob-lem. The contribution of this paper to the topic is twofold. First, we propose a Gaussian mixture model in conjunction with a reduction of the dimensionality of...

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Bibliographic Details
Main Authors: Aujol, J.-F (Author), Bernard, D. (Author), Berthoumieu, Y. (Author), Hertrich, J. (Author), Nguyen, D.-P.-L (Author), Saadaldin, A. (Author), Steidl, G. (Author)
Format: Article
Language:English
Published: American Institute of Mathematical Sciences 2022
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Online Access:View Fulltext in Publisher
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Summary:Despite the rapid development of computational hardware, the treatment of large and high dimensional data sets is still a challenging prob-lem. The contribution of this paper to the topic is twofold. First, we propose a Gaussian mixture model in conjunction with a reduction of the dimensionality of the data in each component of the model by principal component analy-sis, which we call PCA-GMM. To learn the (low dimensional) parameters of the mixture model we propose an EM algorithm whose M-step requires the solution of constrained optimization problems. Fortunately, these constrained problems do not depend on the usually large number of samples and can be solved efficiently by an (inertial) proximal alternating linearized minimization algorithm. Second, we apply our PCA-GMM for the superresolution of 2D and 3D material images based on the approach of Sandeep and Jacob. Numerical results confirm the moderate influence of the dimensionality reduction on the overall superresolution result. © 2022, American Institute of Mathematical Sciences. All rights reserved.
ISBN:19308337 (ISSN)
DOI:10.3934/ipi.2021053