Sparse data models, where data is assumed to be well represented as a linear combination of a few elements from a learned dictionary, have gained considerable attention in recent years, and their use has led to state-of-the-art results in many applications. The success of these models is largely attributed to two critical features: the use of sparsity as a robust mechanism for regularizing the linear coefficients that represent the data, and the flexibility provided by overcomplete dictionaries that are learned from the data. These features are controlled by two critical hyper-parameters: the desired sparsity of the coefficients, and the size of the dictionaries to be learned. However, lacking theoretical guidelines for selecting these crit...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
abstract: Image understanding has been playing an increasingly crucial role in vision applications. ...
Sparse data models, where data is assumed to be well represented as a linear combination of a few el...
Much of the progress made in image processing in the past decades can be attributed to better modeli...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
Significant recent advances in many areas of data collection and processing have introduced many cha...
Arguably one of the most notable forms of the principle of parsimony was formulated by the philosoph...
University of Minnesota Ph.D. dissertation. October 2012. Major:Electrical Engineering. Advisor: Pro...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
Progress in Machine Learning is being driven by continued growth in model size, training data and al...
Grant no. D000246/1.The sparse coding is approximation/representation of signals with the minimum nu...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
Sparse representation with learning-based overcomplete dictionaries has recently achieved impressive...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
abstract: Image understanding has been playing an increasingly crucial role in vision applications. ...
Sparse data models, where data is assumed to be well represented as a linear combination of a few el...
Much of the progress made in image processing in the past decades can be attributed to better modeli...
International audienceIn recent years, a large amount of multi-disciplinary research has been conduc...
Significant recent advances in many areas of data collection and processing have introduced many cha...
Arguably one of the most notable forms of the principle of parsimony was formulated by the philosoph...
University of Minnesota Ph.D. dissertation. October 2012. Major:Electrical Engineering. Advisor: Pro...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
Progress in Machine Learning is being driven by continued growth in model size, training data and al...
Grant no. D000246/1.The sparse coding is approximation/representation of signals with the minimum nu...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
Sparse representation with learning-based overcomplete dictionaries has recently achieved impressive...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
abstract: Image understanding has been playing an increasingly crucial role in vision applications. ...