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Unifying Nuclear Norm and Bilinear Factorization Approaches for Low-Rank Matrix Decomposition
2013
2013 IEEE International Conference on Computer Vision
Low rank models have been widely used for the representation of shape, appearance or motion in computer vision problems. Traditional approaches to fit low rank models make use of an explicit bilinear factorization. These approaches benefit from fast numerical methods for optimization and easy kernelization. However, they suffer from serious local minima problems depending on the loss function and the amount/type of missing data. Recently, these lowrank models have alternatively been formulated
doi:10.1109/iccv.2013.309
dblp:conf/iccv/CabralTCB13
fatcat:hwiqxmud3rfgpo7odqoab6cx6a