Robust Kronecker Component Analysis
Mehdi Bahri, Yannis Panagakis, Stefanos Zafeiriou

TL;DR
Robust Kronecker Component Analysis (RKCA) introduces a scalable, robust method for learning structured representations that effectively handle noise and outliers in high-dimensional visual data.
Contribution
The paper proposes RKCA, a novel Kronecker-decomposable model combining sparse dictionary learning and robust analysis, with an efficient algorithm for high-dimensional data.
Findings
RKCA outperforms existing methods in background subtraction.
RKCA effectively denoises and completes images with robustness to corruption.
The approach scales well to high-dimensional visual data.
Abstract
Dictionary learning and component analysis models are fundamental for learning compact representations that are relevant to a given task (feature extraction, dimensionality reduction, denoising, etc.). The model complexity is encoded by means of specific structure, such as sparsity, low-rankness, or nonnegativity. Unfortunately, approaches like K-SVD - that learn dictionaries for sparse coding via Singular Value Decomposition (SVD) - are hard to scale to high-volume and high-dimensional visual data, and fragile in the presence of outliers. Conversely, robust component analysis methods such as the Robust Principal Component Analysis (RPCA) are able to recover low-complexity (e.g., low-rank) representations from data corrupted with noise of unknown magnitude and support, but do not provide a dictionary that respects the structure of the data (e.g., images), and also involve expensive…
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