%0 Conference Proceedings %F CVPR12:LateFusion %A Ye, Guangnan %A Liu, Dong %A Jhuo, I-Hong %A Chang, Shih-Fu %T Robust Late Fusion with Rank Minimization %B IEEE International Conference on Computer Vision and Pattern Recognition (CVPR) %X In this paper, we propose a rank minimization method to fuse the predicted confidence scores of multiple models, each of which is obtained based on a certain kind of feature. Specifically, we convert each confidence score vector obtained from one model into a pairwise relationship matrix, in which each entry characterizes the comparative relationship of scores of two test samples. Our hypothesis is that the relative score relations are consistent among component models up to certain sparse deviations, despite the large variations that may exist in the absolute values of the raw scores. Then we formulate the score fusion problem as seeking a shared rank-2 pairwise relationship matrix based on which each original score matrix from individual model can be decomposed into the common rank-2 matrix and sparse deviation errors. A robust score vector is then extracted to fit the recovered low rank score relation matrix. We formulate the problem as a nuclear norm and l1 norm optimization objective function and employ the Augmented Lagrange Multiplier (ALM) method for the optimization. Our method is isotonic (i.e., scale invariant) to the numeric scales of the scores originated from different models. We experimentally show that the proposed method achieves significant performance gains on various tasks including object categorization and video event detection %U http://www.ee.columbia.edu/ln/dvmm/publications/12/CVPR_LateFusion.pdf %D 2012