To reduce the dimension of large datasets, it is common to express each vector of this dataset using few atoms of a redundant dictionary. In order to select these atoms, many models and algorithms have been proposed, leading to state-of-the-art performances in many machine learning, signal and image processing applications. The classical sparsifying algorithms compute at each iteration matrix-vector multiplications where the matrix contains the atoms of the dictionary. As a consequence, the numerical complexity of the sparsifying algorithm is always proportional to the numerical complexity of the matrix-vector multiplication. In some applications, the matrix-vector multiplications can be computed using handcrafted fast transforms (such as t...
Abstract—Sparse signals whose nonzeros obey a tree-like structure occur in a range of applications s...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
To reduce the dimension of large datasets, it is common to express each vector of this dataset using...
Abstract—Dictionary learning is a powerful approach for sparse representation. However, the numerica...
International audienceThis paper introduces a new dictionary learning strategy based on atoms obtain...
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
Given a dataset, the task of learning a transform that allows sparse representations of the data bea...
Dictionary learning is a branch of signal processing and machine learning that aims at finding a fra...
Given an arbitrary matrix A is an element of R-mxn, we consider the fundamental problem of computing...
Abstract Many interesting and fundamentally practical optimization prob-lems, ranging from optics, t...
In this paper we propose a dictionary learning method that builds an over complete dictionary that i...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
International audienceSeveral algorithms are reviewed for computing various types of wavelet transfo...
Le domaine de l'apprentissage de dictionnaire est le sujet d'attentions croissantes durant cette der...
Abstract—Sparse signals whose nonzeros obey a tree-like structure occur in a range of applications s...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
To reduce the dimension of large datasets, it is common to express each vector of this dataset using...
Abstract—Dictionary learning is a powerful approach for sparse representation. However, the numerica...
International audienceThis paper introduces a new dictionary learning strategy based on atoms obtain...
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
Given a dataset, the task of learning a transform that allows sparse representations of the data bea...
Dictionary learning is a branch of signal processing and machine learning that aims at finding a fra...
Given an arbitrary matrix A is an element of R-mxn, we consider the fundamental problem of computing...
Abstract Many interesting and fundamentally practical optimization prob-lems, ranging from optics, t...
In this paper we propose a dictionary learning method that builds an over complete dictionary that i...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
International audienceSeveral algorithms are reviewed for computing various types of wavelet transfo...
Le domaine de l'apprentissage de dictionnaire est le sujet d'attentions croissantes durant cette der...
Abstract—Sparse signals whose nonzeros obey a tree-like structure occur in a range of applications s...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...