TL;DR
This paper reviews and compares various low-rank plus additive matrix decomposition methods for background/foreground separation, evaluating 32 algorithms on a large-scale dataset to identify the most effective approaches.
Contribution
It provides a comprehensive review and unified framework of robust subspace learning methods, along with experimental comparison on a large dataset.
Findings
32 algorithms evaluated on BMC 2012 dataset
Incremental and real-time methods analyzed for background separation
Robust subspace methods show varying effectiveness in large-scale tests
Abstract
Recent research on problem formulations based on decomposition into low-rank plus sparse matrices shows a suitable framework to separate moving objects from the background. The most representative problem formulation is the Robust Principal Component Analysis (RPCA) solved via Principal Component Pursuit (PCP) which decomposes a data matrix in a low-rank matrix and a sparse matrix. However, similar robust implicit or explicit decompositions can be made in the following problem formulations: Robust Non-negative Matrix Factorization (RNMF), Robust Matrix Completion (RMC), Robust Subspace Recovery (RSR), Robust Subspace Tracking (RST) and Robust Low-Rank Minimization (RLRM). The main goal of these similar problem formulations is to obtain explicitly or implicitly a decomposition into low-rank matrix plus additive matrices. In this context, this work aims to initiate a rigorous and…
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