Sparse coding is a promising theme in computer vision. Most of the existing sparse coding methods are based on either l(0) or l(1) penalty, which often leads to unstable solution or biased estimation. This is because of the nonconvexity and discontinuity of the l(0) penalty and the over-penalization on the true large coefficients of the l(1) penalty. In this paper, sparse coding is interpreted from a novel Bayesian perspective, which results in a new objective function through maximum a posteriori estimation. The obtained solution of the objective function can generate more stable results than the l(0) penalty and smaller reconstruction errors than the l(1) penalty. In addition, the convergence property of the proposed algorithm for sparse ...
The "folk theorem" that sparsity inducing priors should be supergaussian can be rigorously...
Sparse coding is a proven principle for learning compact representations of images. However, sparse ...
Abstract. Images can be coded accurately using a sparse set of vec-tors from an overcomplete diction...
We propose a convolutional sparse coding (CSC) for super resolution (CSC-SR) algorithm with a joint ...
We propose a convolutional sparse coding (CSC) for super resolution (CSC-SR) algorithm with a joint ...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
Sparse coding provides a class of algorithms for finding succinct representations of stimuli; given ...
Sparse coding is a challenging and promising theme in image denoising. Its main goal is to learn a s...
Abstract In image processing, sparse coding has been known to be relevant to both variational and Ba...
Abstract. Images can be coded accurately using a sparse set of vectors from an overcomplete dictiona...
Abstract—Nonparametric Bayesian methods are considered for recovery of imagery based upon compressiv...
Abstract. Images can be coded accurately using a sparse set of vectors from a learned overcomplete d...
Finding the sparsest or minimum L0-norm representation of a signal given a (possibly) overcomplete d...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
For our project, we apply the method of the alternating direction of multipliers and sequential conv...
The "folk theorem" that sparsity inducing priors should be supergaussian can be rigorously...
Sparse coding is a proven principle for learning compact representations of images. However, sparse ...
Abstract. Images can be coded accurately using a sparse set of vec-tors from an overcomplete diction...
We propose a convolutional sparse coding (CSC) for super resolution (CSC-SR) algorithm with a joint ...
We propose a convolutional sparse coding (CSC) for super resolution (CSC-SR) algorithm with a joint ...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
Sparse coding provides a class of algorithms for finding succinct representations of stimuli; given ...
Sparse coding is a challenging and promising theme in image denoising. Its main goal is to learn a s...
Abstract In image processing, sparse coding has been known to be relevant to both variational and Ba...
Abstract. Images can be coded accurately using a sparse set of vectors from an overcomplete dictiona...
Abstract—Nonparametric Bayesian methods are considered for recovery of imagery based upon compressiv...
Abstract. Images can be coded accurately using a sparse set of vectors from a learned overcomplete d...
Finding the sparsest or minimum L0-norm representation of a signal given a (possibly) overcomplete d...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
For our project, we apply the method of the alternating direction of multipliers and sequential conv...
The "folk theorem" that sparsity inducing priors should be supergaussian can be rigorously...
Sparse coding is a proven principle for learning compact representations of images. However, sparse ...
Abstract. Images can be coded accurately using a sparse set of vec-tors from an overcomplete diction...