Umamahesh SrinivasYuanming SuoMinh N. DaoVishal MongaTrac D. Tran
Model-based compressive sensing (CS) exploits the structure inherent in sparse signals for the design of better signal recovery algorithms. This information about structure is often captured in the form of a prior on the sparse coefficients, with the Laplacian being the most common such choice (leading to l1 -norm minimization). Recent work has exploited the discriminative capability of sparse representations for image classification by employing class-specific dictionaries in the CS framework. Our contribution is a logical extension of these ideas into structured sparsity for classification. We introduce the notion of discriminative class-specific priors in conjunction with class specific dictionaries, specifically the spike-and-slab prior widely applied in Bayesian sparse regression. Significantly, the proposed framework takes the burden off the demand for abundant training image samples necessary for the success of sparsity-based classification schemes. We demonstrate this practical benefit of our approach in important applications, such as face recognition and object categorization.
Umamahesh SrinivasYuanming SuoMinh N. DaoVishal MongaTrac D. Tran
Xiaoxia SunQing QuNasser M. NasrabadiTrac D. Tran
Michael TingRaviv RaichAlfred O. Hero
Peng LuYi LiuYuying MaoWeiguo ShengJiusun ZengChenxi YuYifen Shang
Xiaoxia SunNasser M. NasrabadiTrac D. Tran