This article focuses on model based sparse feature extraction of biomedical signals for classification problems, which stems from sparse representation in modern signal processing. In the presented work, a novel approach based on sparse principal component analysis (SPCA) is proposed to extract signal features. This method involves partitioning signals and utilizing SPCA to select only a limited number of signal segments in order to construct signal principal components during the training stage. For signal classification purposes, a set of regression models based on sparse principal components of the selected training signal segments is constructed. Within this approach, model residuals are estimated and used as signal features for classif...
This article was developed with the particular interest of characterize and study EEG signals as a p...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Classification of electroencephalography (EEG) is the most useful diagnostic and monitoring procedur...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
© 2013 IEEE. Background: EEG signals are extremely complex in comparison to other biomedical signals...
This paper introduces a signal classification framework that can be used for brain-computer interfac...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Epilepsy seizure detection in electroencephalogram (EEG) is a major issue in the diagnosis of epilep...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
In this paper, application of sparse representation (factorization) of signals over an overcomplete ...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Part 13: Feature Extraction - MinimizationInternational audienceThe electroencephalograph (EEG) sign...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
This article was developed with the particular interest of characterize and study EEG signals as a p...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Classification of electroencephalography (EEG) is the most useful diagnostic and monitoring procedur...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
© 2013 IEEE. Background: EEG signals are extremely complex in comparison to other biomedical signals...
This paper introduces a signal classification framework that can be used for brain-computer interfac...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Epilepsy seizure detection in electroencephalogram (EEG) is a major issue in the diagnosis of epilep...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
In this paper, application of sparse representation (factorization) of signals over an overcomplete ...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Part 13: Feature Extraction - MinimizationInternational audienceThe electroencephalograph (EEG) sign...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
This article was developed with the particular interest of characterize and study EEG signals as a p...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Classification of electroencephalography (EEG) is the most useful diagnostic and monitoring procedur...