International audienceDictionary Learning has proven to be a powerful tool for many image processing tasks, where atoms are typically defined on small image patches. As a drawback, the dictionary only encodes basic structures. In addition, this approach treats patches of different locations in one single set, which means a loss of informa-tion when features are well-aligned across signals. This is the case, for instance, in multi-trial magneto-or electroencephalography (M/EEG). Learning the dictio-nary on the entire signals could make use of the alignment and reveal higher-level features. In this case, however, small misalignments or phase variations of fea-tures would not be compensated for. In this paper, we propose an extension to the co...
In this thesis, we study approximation and learning methods which provide sparse representations. Th...
International audienceThis paper presents a methodology for extracting meaningful synchronous struct...
The goal of this thesis is to develop a data-driven, label consistent, and dictionary learning based...
International audienceDictionary Learning has proven to be a powerful tool for many image processing...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
International audienceSignals obtained from magneto- or electroencephalography (M/EEG) are very nois...
International audienceElectroencephalography(EEG) and magnetoencephalography (MEG) measure the elect...
International audienceThis article addresses the issue of representing electroencephalographic (EEG)...
International audienceThis work aims at establishing a relationship between neurophysiological and h...
The paper treats jitter estimation for alignment of a set of signals which contains several unknown ...
International audienceWe propose a multivariate online dictionary-learning method for obtaining de-c...
International audienceNeural time-series data contain a wide variety of prototypical signal waveform...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
The increasing access to brain signal data using electroencephalography creates new opportunities to...
In this thesis, we study approximation and learning methods which provide sparse representations. Th...
International audienceThis paper presents a methodology for extracting meaningful synchronous struct...
The goal of this thesis is to develop a data-driven, label consistent, and dictionary learning based...
International audienceDictionary Learning has proven to be a powerful tool for many image processing...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
International audienceSignals obtained from magneto- or electroencephalography (M/EEG) are very nois...
International audienceElectroencephalography(EEG) and magnetoencephalography (MEG) measure the elect...
International audienceThis article addresses the issue of representing electroencephalographic (EEG)...
International audienceThis work aims at establishing a relationship between neurophysiological and h...
The paper treats jitter estimation for alignment of a set of signals which contains several unknown ...
International audienceWe propose a multivariate online dictionary-learning method for obtaining de-c...
International audienceNeural time-series data contain a wide variety of prototypical signal waveform...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
The increasing access to brain signal data using electroencephalography creates new opportunities to...
In this thesis, we study approximation and learning methods which provide sparse representations. Th...
International audienceThis paper presents a methodology for extracting meaningful synchronous struct...
The goal of this thesis is to develop a data-driven, label consistent, and dictionary learning based...