Conference Proceedings
Robust Principal Component Analysis Using Alpha Divergence
AM Rekavandi, AK Seghouane
Proceedings International Conference on Image Processing Icip | IEEE | Published : 2020
Abstract
In this paper, a new robust principal component analysis (RPCA) method which enables us to exploit the main components of a given corrupted data with non Gaussian outliers is proposed. This method is based on the \alpha-divergence which is a parametric measure from information geometry. The proposed method is adjustable using a hyperparameter \alpha and reduces to the classical PCA as a particular case. In order to derive the main components, the \alpha-divergence between the empirical data distribution and the assumed model for the distribution is minimized with respect to the unknown parameters. The singular value decomposition (SVD) of the estimated covariance matrix is then used to explo..
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Awarded by Australian Research Council
Funding Acknowledgements
This work was funded by the Australian Research Council; grant FT130101394.