Recent years have seen an increasing interest in sparse representations for image classification and object recognition, probably motivated by evidence from the analysis of the primate visual cortex. It is still unclear, however, whether or not sparsity helps classification. In this paper we evaluate its impact on the recognition rate using a shallow modular architecture, adopting both standard filter banks and filter banks learned in an unsupervised way. In our experiments on the CIFAR-10 and on the Caltech-101 datasets, enforcing sparsity constraints actually does not improve recognition performance. This has an important practical impact in image descriptor design, as enforcing these constraints can have a heavy computational cost
Much of the progress made in image processing in the past decades can be attributed to better modeli...
Bax I, Heidemann G, Ritter H. Using Non-negative Sparse Profiles in a Hierarchical Feature Extractio...
Redundant dictionaries, also known as frames, offera non–orthogonal representation of signals, which...
Recent years have seen an increasing interest in sparseness constraints for image classification and ...
This technical report combines two commonly-themed submissions to ICCV 2007. The two papers reconsid...
In this paper we empirically analyze the importance of sparsifying represen-tations for classificati...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Sparse representation with learning-based overcomplete dictionaries has recently achieved impressive...
Sparse representation plays a critical role in vision problems, including generation and understandi...
Growing evidence indicates that only a sparse subset from a pool of sensory neurons is active for th...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
Arguably one of the most notable forms of the principle of parsimony was formulated by the philosoph...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
Much of the progress made in image processing in the past decades can be attributed to better modeli...
Bax I, Heidemann G, Ritter H. Using Non-negative Sparse Profiles in a Hierarchical Feature Extractio...
Redundant dictionaries, also known as frames, offera non–orthogonal representation of signals, which...
Recent years have seen an increasing interest in sparseness constraints for image classification and ...
This technical report combines two commonly-themed submissions to ICCV 2007. The two papers reconsid...
In this paper we empirically analyze the importance of sparsifying represen-tations for classificati...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Sparse representation with learning-based overcomplete dictionaries has recently achieved impressive...
Sparse representation plays a critical role in vision problems, including generation and understandi...
Growing evidence indicates that only a sparse subset from a pool of sensory neurons is active for th...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
Arguably one of the most notable forms of the principle of parsimony was formulated by the philosoph...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
Much of the progress made in image processing in the past decades can be attributed to better modeli...
Bax I, Heidemann G, Ritter H. Using Non-negative Sparse Profiles in a Hierarchical Feature Extractio...
Redundant dictionaries, also known as frames, offera non–orthogonal representation of signals, which...