Print Email Facebook Twitter An inexact splitting method for the subspace segmentation from incomplete and noisy observations Title An inexact splitting method for the subspace segmentation from incomplete and noisy observations Author Liang, R. (Shanghai University) Bai, Y. (Shanghai University) Lin, H.X. (TU Delft Mathematical Physics) Date 2018 Abstract Subspace segmentation is a fundamental issue in computer vision and machine learning, which segments a collection of high-dimensional data points into their respective low-dimensional subspaces. In this paper, we first propose a model for segmenting the data points from incomplete and noisy observations. Then, we develop an inexact splitting method for solving the resulted model. Moreover, we prove the global convergence of the proposed method. Finally, the inexact splitting method is implemented on the clustering problems in synthetic and benchmark data, respectively. Numerical results demonstrate that the proposed method is computationally efficient, robust as well as more accurate compared with the state-of-the-art algorithms. Subject Inexact augmented Lagrange multiplier methodLow rank representationSubspace segmentation To reference this document use: http://resolver.tudelft.nl/uuid:4d9dd287-0744-43ad-a7aa-ca31046194c0 DOI https://doi.org/10.1007/s10898-018-0684-4 Embargo date 2019-07-01 ISSN 0925-5001 Source Journal of Global Optimization, 73 (2019), 411–429 Bibliographical note Accepted author manuscript Part of collection Institutional Repository Document type journal article Rights © 2018 R. Liang, Y. Bai, H.X. Lin Files PDF JOGO_D_17_00410_final.pdf 394.01 KB Close viewer /islandora/object/uuid:4d9dd287-0744-43ad-a7aa-ca31046194c0/datastream/OBJ/view