In this paper we empirically analyze the importance of sparsifying represen-tations for classification purposes. We focus on those obtained by convolving images with linear filters, which can be either hand designed or learned, and perform extensive experiments on two important Computer Vision problems, image categorization and pixel classification. To this end, we adopt a simple modular architecture that encompasses many recently proposed models. The key outcome of our investigations is that enforcing sparsity con-straints on features extracted in a convolutional architecture does not im-prove classification performance, whereas it does so when redundancy is ar-tificially introduced. This is very relevant for practical purposes, since it i...
<p>(a) Independence was measured using reduction in multi-information (in bits per dimension, relati...
Observed signals and images are distorted by noise and blurring. In precise terms, blurring is a con...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
In this paper we empirically analyze the importance of sparsifying representations for classificatio...
Recent years have seen an increasing interest in sparse representations for image classification and ...
Recent years have seen an increasing interest in sparseness constraints for image classification and ...
In this thesis, we present new techniques based on the notions of sparsity and scale invariance to d...
This technical report combines two commonly-themed submissions to ICCV 2007. The two papers reconsid...
The real-world data nowadays is usually in high dimension. For example, one data image can be repres...
Numerous fields of applied sciences and industries have been witnessing a process of digitisation ov...
International audienceSemantic features represent images by the outputs of a set of visual concept c...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
This thesis deals with the difficulties in classification problems caused by three types of sparsity...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Sparse data models, where data is assumed to be well represented as a linear combination of a few el...
<p>(a) Independence was measured using reduction in multi-information (in bits per dimension, relati...
Observed signals and images are distorted by noise and blurring. In precise terms, blurring is a con...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
In this paper we empirically analyze the importance of sparsifying representations for classificatio...
Recent years have seen an increasing interest in sparse representations for image classification and ...
Recent years have seen an increasing interest in sparseness constraints for image classification and ...
In this thesis, we present new techniques based on the notions of sparsity and scale invariance to d...
This technical report combines two commonly-themed submissions to ICCV 2007. The two papers reconsid...
The real-world data nowadays is usually in high dimension. For example, one data image can be repres...
Numerous fields of applied sciences and industries have been witnessing a process of digitisation ov...
International audienceSemantic features represent images by the outputs of a set of visual concept c...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
This thesis deals with the difficulties in classification problems caused by three types of sparsity...
Image processing problems have always been challenging due to the complexity of the signal. These pr...
Sparse data models, where data is assumed to be well represented as a linear combination of a few el...
<p>(a) Independence was measured using reduction in multi-information (in bits per dimension, relati...
Observed signals and images are distorted by noise and blurring. In precise terms, blurring is a con...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...