Structured sparse priors for image classification

IEEE Transactions on Image Processing(2015)

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摘要
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.
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关键词
spike-and-slab prior,signal recovery,abundant training image samples,sparse signals,image representation,sparse coefficients,face recognition,l1-norm minimization,compressive sensing,discriminative class,spike-and-slab,model-based compressive sensing,bayesian regression,class-specific dictionaries,compressed sensing,image classification,object categorization,class-specific priors,bayes methods,structured sparsity,bayesian sparse regression,classification,specific dictionary,minimisation,discriminative class-specific priors,structured sparse priors,sparse representations,algorithm design and analysis,optimization,dictionaries
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