Sparse representations classification (SRC) is a powerful technique for pixelwise classification of images and it is increasingly being used for a wide variety of image analysis tasks. The method uses sparse representation and learned redundant dictionaries to classify image pixels. In this empirical study we propose to further leverage the redundancy of the learned dictionaries to achieve a more accurate classifier. In conventional SRC, each image pixel is associated with a small patch surrounding it. Using these patches, a dictionary is trained for each class in a supervised fashion. Commonly, redundant/overcomplete dictionaries are trained and image patches are sparsely represented by a linear combination of only a few of the dictionary ...
Abstract. Traditional sparse representation algorithms usually operate in a single Euclidean space. ...
Sparse representation of signals has recently emerged as a major research area. It is well-known tha...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
textabstractSparse representations classification (SRC) is a powerful technique for pixelwise classi...
Sparse representations classification (SRC) is a powerful technique for pixelwise classifica-tion of...
Much of the progress made in image processing in the past decades can be attributed to better modeli...
International audienceThe manual delineation of Multiple Sclerosis (MS) lesions is a challenging tas...
abstract: Image understanding has been playing an increasingly crucial role in vision applications. ...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...
Signal and image processing have seen an explosion of interest in the last few years in a new form o...
Sparse coding-based single image super-resolution has attracted much interest. In this paper, a supe...
Sparse representation with learning-based overcomplete dictionaries has recently achieved impressive...
Many problems in machine learning (ML) and computer vision (CV) deal with large amounts of data with...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
Abstract. Traditional sparse representation algorithms usually operate in a single Euclidean space. ...
Sparse representation of signals has recently emerged as a major research area. It is well-known tha...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
Sparse representations classification (SRC) is a powerful technique for pixelwise classification of ...
textabstractSparse representations classification (SRC) is a powerful technique for pixelwise classi...
Sparse representations classification (SRC) is a powerful technique for pixelwise classifica-tion of...
Much of the progress made in image processing in the past decades can be attributed to better modeli...
International audienceThe manual delineation of Multiple Sclerosis (MS) lesions is a challenging tas...
abstract: Image understanding has been playing an increasingly crucial role in vision applications. ...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...
Signal and image processing have seen an explosion of interest in the last few years in a new form o...
Sparse coding-based single image super-resolution has attracted much interest. In this paper, a supe...
Sparse representation with learning-based overcomplete dictionaries has recently achieved impressive...
Many problems in machine learning (ML) and computer vision (CV) deal with large amounts of data with...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
Abstract. Traditional sparse representation algorithms usually operate in a single Euclidean space. ...
Sparse representation of signals has recently emerged as a major research area. It is well-known tha...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...