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Published September 12, 2015 | Version Published
Conference paper Open

Approximated RPCA for fast and efficient recovery of corrupted and linearly correlated images and video frames

  • 1. Queen Mary University of London

Description

This paper presents an approximated Robust Principal Component Analysis (ARPCA) framework for recovery of a set of linearly correlated images. Our algorithm seeks an optimal solution for decomposing a batch of realistic unaligned and corrupted images as the sum of a low-rank and a sparse corruption matrix, while simultaneously aligning the images according to the optimal image transformations. This extremely challenging optimization problem has been reduced to solving a number of convex programs, that minimize the sum of Frobenius norm and the l1-norm of the mentioned matrices, with guaranteed faster convergence than the state-of-the-art algorithms. The efficacy of the proposed method is verified with extensive experiments with real and synthetic data.

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Additional details

Funding

LASIE – LArge Scale Information Exploitation of Forensic Data 607480
European Commission