%0 Journal Article %T Robust Principal Component Analysis Integrating Sparse and Low-Rank Priors %A Wei Zhai %A Fanlong Zhang %J Journal of Computer and Communications %P 1-13 %@ 2327-5227 %D 2024 %I Scientific Research Publishing %R 10.4236/jcc.2024.124001 %X Principal Component Analysis (PCA) is a widely used technique for data analysis and dimensionality reduction, but its sensitivity to feature scale and outliers limits its applicability. Robust Principal Component Analysis (RPCA) addresses these limitations by decomposing data into a low-rank matrix capturing the underlying structure and a sparse matrix identifying outliers, enhancing robustness against noise and outliers. This paper introduces a novel RPCA variant, Robust PCA Integrating Sparse and Low-rank Priors (RPCA-SL). Each prior targets a specific aspect of the data¡¯s underlying structure and their combination allows for a more nuanced and accurate separation of the main data components from outliers and noise. Then RPCA-SL is solved by employing a proximal gradient algorithm for improved anomaly detection and data decomposition. Experimental results on simulation and real data demonstrate significant advancements. %K Robust Principal Component Analysis %K Sparse Matrix %K Low-Rank Matrix %K Hyperspectral Image %U http://www.scirp.org/journal/PaperInformation.aspx?PaperID=132262