Robust Kronecker-Decomposable Component Analysis for Low-Rank Modeling
March 22, 2017 ยท Declared Dead ยท ๐ IEEE International Conference on Computer Vision
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Authors
Mehdi Bahri, Yannis Panagakis, Stefanos Zafeiriou
arXiv ID
1703.07886
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.CV
Citations
14
Venue
IEEE International Conference on Computer Vision
Last Checked
4 months ago
Abstract
Dictionary learning and component analysis are part of one of the most well-studied and active research fields, at the intersection of signal and image processing, computer vision, and statistical machine learning. In dictionary learning, the current methods of choice are arguably K-SVD and its variants, which learn a dictionary (i.e., a decomposition) for sparse coding via Singular Value Decomposition. In robust component analysis, leading methods derive from Principal Component Pursuit (PCP), which recovers a low-rank matrix from sparse corruptions of unknown magnitude and support. However, K-SVD is sensitive to the presence of noise and outliers in the training set. Additionally, PCP does not provide a dictionary that respects the structure of the data (e.g., images), and requires expensive SVD computations when solved by convex relaxation. In this paper, we introduce a new robust decomposition of images by combining ideas from sparse dictionary learning and PCP. We propose a novel Kronecker-decomposable component analysis which is robust to gross corruption, can be used for low-rank modeling, and leverages separability to solve significantly smaller problems. We design an efficient learning algorithm by drawing links with a restricted form of tensor factorization. The effectiveness of the proposed approach is demonstrated on real-world applications, namely background subtraction and image denoising, by performing a thorough comparison with the current state of the art.
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