Dictionary Learning and Sparse Coding on Statistical Manifolds
Rudrasis Chakraborty, Monami Banerjee, Baba C. Vemuri

TL;DR
This paper introduces a new information-theoretic framework for dictionary learning and sparse coding on statistical manifolds, achieving sparsity without explicit regularization and demonstrating effectiveness in computer vision tasks.
Contribution
It presents a novel approach that uses KL-center for sparse coding on statistical manifolds, extending to symmetric positive definite matrices, without relying on traditional sparsity norms.
Findings
The method achieves sparse representations on statistical manifolds.
It outperforms state-of-the-art methods in reconstruction accuracy.
It demonstrates competitive classification performance in computer vision applications.
Abstract
In this paper, we propose a novel information theoretic framework for dictionary learning (DL) and sparse coding (SC) on a statistical manifold (the manifold of probability distributions). Unlike the traditional DL and SC framework, our new formulation does not explicitly incorporate any sparsity inducing norm in the cost function being optimized but yet yields sparse codes. Our algorithm approximates the data points on the statistical manifold (which are probability distributions) by the weighted Kullback-Leibeler center/mean (KL-center) of the dictionary atoms. The KL-center is defined as the minimizer of the maximum KL-divergence between itself and members of the set whose center is being sought. Further, we prove that the weighted KL-center is a sparse combination of the dictionary atoms. This result also holds for the case when the KL-divergence is replaced by the well known…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Face and Expression Recognition · Blind Source Separation Techniques
