International audienceThe choice of an appropriate frame, or dictionary, is a crucial step in the sparse representation of a given class of signals. Traditional dictionary learning techniques generally lead to unstructured dictionaries which are costly to deploy and train, and do not scale well to higher dimensional signals. In order to overcome such limitation, we propose a learning algorithm that constrains the dictionary to be a sum of Kronecker products of smaller sub-dictionaries. This approach, named SuKro, is demonstrated experimentally on an image denoising application
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
International audienceDictionary learning is a branch of signal processing and machine learning that...
International audienceIn this paper, we propose a new algorithm for learning overcomplete dictionari...
International audienceThe choice of an appropriate frame, or dictionary, is a crucial step in the sp...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceDictionary learning, paired with sparse coding, aims at providing sparse data ...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
International audienceDictionary learning is a branch of signal processing and machine learning that...
International audienceIn this paper, we propose a new algorithm for learning overcomplete dictionari...
International audienceThe choice of an appropriate frame, or dictionary, is a crucial step in the sp...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceThe choice of an appropriate dictionary is a crucial step in the sparse repres...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceA new dictionary learning model is introduced where the dictionary matrix is c...
International audienceDictionary learning, paired with sparse coding, aims at providing sparse data ...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
International audienceDictionary learning is a branch of signal processing and machine learning that...
International audienceIn this paper, we propose a new algorithm for learning overcomplete dictionari...