Title :
Visual Classification With Multitask Joint Sparse Representation
Author :
Yuan, Xiao-Tong ; Liu, Xiaobai ; Yan, Shuicheng
Author_Institution :
Dept. of Stat., Rutgers Univ., Newark, NJ, USA
Abstract :
We address the problem of visual classification with multiple features and/or multiple instances. Motivated by the recent success of multitask joint covariate selection, we formulate this problem as a multitask joint sparse representation model to combine the strength of multiple features and/or instances for recognition. A joint sparsity-inducing norm is utilized to enforce class-level joint sparsity patterns among the multiple representation vectors. The proposed model can be efficiently optimized by a proximal gradient method. Furthermore, we extend our method to the setup where features are described in kernel matrices. We then investigate into two applications of our method to visual classification: 1) fusing multiple kernel features for object categorization and 2) robust face recognition in video with an ensemble of query images. Extensive experiments on challenging real-world data sets demonstrate that the proposed method is competitive to the state-of-the-art methods in respective applications.
Keywords :
face recognition; gradient methods; image classification; image representation; matrix algebra; vectors; class-level joint sparsity pattern; joint sparsity-inducing norm; kernel matrix; multiple feature recognition; multiple instance recognition; multiple kernel feature fusion; multiple representation vector; multitask joint covariate selection; multitask joint sparse representation model; object categorization; proximal gradient method; query image ensemble; robust face video recognition; visual classification; Face recognition; Image reconstruction; Joints; Kernel; Training; Vectors; Visualization; Feature fusion; multitask learning; sparse representation; visual classification;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2012.2205006