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A fast approach for dimensionality reduction with image data
Authors:Mnica  Daniel
Affiliation:

aDepartment of Statistics, Universidad Carlos III de Madrid, Spain

bDepartment of Statistics, Universidad Carlos III de Madrid, Spain

Abstract:An important objective in image analysis is dimensionality reduction. The most often used data-exploratory technique with this objective is principal component analysis, which performs a singular value decomposition on a data matrix of vectorized images. When considering an array data or tensor instead of a matrix, the high-order generalization of PCA for computing principal components offers multiple ways to decompose tensors orthogonally. As an alternative, we propose a new method based on the projection of the images as matrices and show that it leads to a better reconstruction of images than previous approaches.
Keywords:Eigenfaces  Multivariate linear regression  N-mode PCA  Principal component analysis  Singular value decomposition  Tensors
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