Title :
Distributed Low-Rank Subspace Segmentation
Author :
Talwalkar, Ameet ; Mackey, Lester ; Yadong Mu ; Shih-Fu Chang ; Jordan, Michael I.
Author_Institution :
Univ. of California, Berkeley, Berkeley, CA, USA
Abstract :
Vision problems ranging from image clustering to motion segmentation to semi-supervised learning can naturally be framed as subspace segmentation problems, in which one aims to recover multiple low-dimensional subspaces from noisy and corrupted input data. Low-Rank Representation (LRR), a convex formulation of the subspace segmentation problem, is provably and empirically accurate on small problems but does not scale to the massive sizes of modern vision datasets. Moreover, past work aimed at scaling up low-rank matrix factorization is not applicable to LRR given its non-decomposable constraints. In this work, we propose a novel divide-and-conquer algorithm for large-scale subspace segmentation that can cope with LRR´s non-decomposable constraints and maintains LRR´s strong recovery guarantees. This has immediate implications for the scalability of subspace segmentation, which we demonstrate on a benchmark face recognition dataset and in simulations. We then introduce novel applications of LRR-based subspace segmentation to large-scale semi-supervised learning for multimedia event detection, concept detection, and image tagging. In each case, we obtain state-of-the-art results and order-of-magnitude speed ups.
Keywords :
computer vision; convex programming; divide and conquer methods; face recognition; image motion analysis; image segmentation; learning (artificial intelligence); matrix decomposition; LRR nondecomposable constraints; LRR-based subspace segmentation; benchmark face recognition dataset; concept detection; convex formulation; corrupted input data; distributed low-rank subspace segmentation; divide-and-conquer algorithm; image clustering; image tagging; large-scale subspace segmentation; low-rank matrix factorization; low-rank representation; motion segmentation; multimedia event detection; multiple low-dimensional subspaces; noisy input data; order-of-magnitude speed ups; semisupervised learning; subspace segmentation problems; vision datasets; vision problems; Accuracy; Algorithm design and analysis; Face; Image segmentation; Matrix decomposition; Semisupervised learning; Timing; Distributed; Divide-and-conquer; Low-rank methods; Scalable; Subspace Segmentation;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCV.2013.440