<div><p>Sparse coding is a popular approach to model natural images but has faced two main challenges: modelling low-level image components (such as edge-like structures and their occlusions) and modelling varying pixel intensities. Traditionally, images are modelled as a sparse linear superposition of dictionary elements, where the probabilistic view of this problem is that the coefficients follow a Laplace or Cauchy prior distribution. We propose a novel model that instead uses a <i>spike-and-slab prior</i> and <i>nonlinear combination of components</i>. With the prior, our model can easily represent exact zeros for e.g. the absence of an image component, such as an edge, and a distribution over non-zero pixel intensities. With the nonlin...
Abstract. Images can be coded accurately using a sparse set of vectors from an overcomplete dictiona...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...
Sparse coding is a popular approach to model natural images but has faced two main challenges: model...
<p>1) Nonlinear occluding bars data</p> <p>This is ground truth data generated according to the nonl...
<p>Given an image patch with occlusions (<b>A</b>), assume both the linear and nonlinear sparse codi...
Sparse coding is a challenging and promising theme in image denoising. Its main goal is to learn a s...
Sparse coding is a proven principle for learning compact representations of images. However, sparse ...
<p>4) Natural image patches</p> <p>This file explains the natural image patches data used in the fin...
We present a new learning strategy based on an efficient blocked Gibbs sampler for sparse overcomple...
We consider the problem of using a factor model we call spike-and-slab sparse coding (S3C) to learn ...
Abstract — Recent studies have shown that sparse coding is an efficient method for feature quantizat...
<p><b>A</b> shows the original natural image data, bridge.jpg [<a href="http://www.plosone.org/artic...
We consider the problem of using a factor model we call spike-and-slab sparse coding (S3C) to learn ...
We introduce spike-and-slab sparse coding (S3C), an unsupervised feature dis-covery algorithm. S3C i...
Abstract. Images can be coded accurately using a sparse set of vectors from an overcomplete dictiona...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...
Sparse coding is a popular approach to model natural images but has faced two main challenges: model...
<p>1) Nonlinear occluding bars data</p> <p>This is ground truth data generated according to the nonl...
<p>Given an image patch with occlusions (<b>A</b>), assume both the linear and nonlinear sparse codi...
Sparse coding is a challenging and promising theme in image denoising. Its main goal is to learn a s...
Sparse coding is a proven principle for learning compact representations of images. However, sparse ...
<p>4) Natural image patches</p> <p>This file explains the natural image patches data used in the fin...
We present a new learning strategy based on an efficient blocked Gibbs sampler for sparse overcomple...
We consider the problem of using a factor model we call spike-and-slab sparse coding (S3C) to learn ...
Abstract — Recent studies have shown that sparse coding is an efficient method for feature quantizat...
<p><b>A</b> shows the original natural image data, bridge.jpg [<a href="http://www.plosone.org/artic...
We consider the problem of using a factor model we call spike-and-slab sparse coding (S3C) to learn ...
We introduce spike-and-slab sparse coding (S3C), an unsupervised feature dis-covery algorithm. S3C i...
Abstract. Images can be coded accurately using a sparse set of vectors from an overcomplete dictiona...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...