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Robust Principal Component Completion

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Robust principal component analysis (RPCA) seeks a low-rank component and a sparse component from their summation. Yet, in many applications of interest, the sparse foreground actually replaces, or occludes, elements from the low-rank background. To address this mismatch, a new framework is proposed in which the sparse component is identified indirectly through determining its support. This approach, called robust principal component completion (RPCC), is solved via variational Bayesian inference applied to a fully probabilistic Bayesian sparse tensor factorization. Convergence to a hard classifier for the support is shown, thereby eliminating the post-hoc thresholding required of most prior RPCA-driven approaches. Experimental results reveal that the proposed approach delivers near-optimal estimates on synthetic data as well as robust foreground-extraction and anomaly-detection performance on real color video and hyperspectral datasets, respectively. Source implementation and Appendices are available at https://github.com/WongYinJ/BCP-RPCC.

Yinjian Wang, Wei Li, Yuanyuan Gui, James E. Fowler, Gemine Vivone• 2026

Related benchmarks

TaskDatasetResultRank
Foreground extractionCDnet Highway
AUC F172.47
18
Hyperspectral Anomaly DetectionSalinas--
10
Foreground extractionCrossroad (test)
AUC F1 Score64.48
9
Foreground extractionCDnet Turnpike
AUC F158.13
9
Foreground extractionCDnet Crossroad
AUC F1 Score70.77
9
Hyperspectral Anomaly DetectionUrban
AUCF146.86
9
Hyperspectral Anomaly DetectionBelcher
AUC_F153.08
9
Hyperspectral Anomaly DetectionBeach
AUC-F1 Score47.17
9
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