In this paper, we present an effective computational approach for learning patterns of brain activity from the fMRI data. The procedure involved correcting motion artifacts, spatial smoothing, removing low frequency drifts and applying multivariate linear and non-linear kernel methods. Two novel techniques are applied: one utilizes the Cosine Transform to remove low-frequency drifts over time and the other involves using prior knowledge about the spatial contribution of different brain regions for the various tasks. Our experiment results on the PBAIC2007 competition data set show a great improvement for brain activity prediction, especially on some sensory experience such as hearing and vision
Statistical analysis method is utilitarian in neuroimaging. For instance, SPM12, FSL and BrainVoyage...
We use Kernel Canonical Correlation Analysis (KCCA) for detecting brain activity in function MRI by ...
Contains fulltext : 131512.pdf (publisher's version ) (Open Access)Encoding and de...
AbstractThis paper introduces two kernel-based regression schemes to decode or predict brain states ...
In the last years, there has been an exponential increase in the use of multivariate analysis in ne...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
Machine learning and Pattern recognition techniques are being increasingly employed in Functional ma...
One of the major goals in neuroscience is to understand the relationship between the brain function ...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
Human fMRI signals exhibit a spatial patterning that contains detailed information about a person’s ...
International audienceWhile medical imaging typically provides massive amounts of data, the extracti...
Pattern recognition methods have shown that fMRI data can reveal signicant information about brain a...
Brain imaging data are increasingly analyzed via a range of machine-learning methods. In this thesis...
In several biomedical fields, researchers are faced with regression problems that can be stated as S...
Mitchell et al. [9] demonstrated that support vector machines (SVM) are effective to classify the co...
Statistical analysis method is utilitarian in neuroimaging. For instance, SPM12, FSL and BrainVoyage...
We use Kernel Canonical Correlation Analysis (KCCA) for detecting brain activity in function MRI by ...
Contains fulltext : 131512.pdf (publisher's version ) (Open Access)Encoding and de...
AbstractThis paper introduces two kernel-based regression schemes to decode or predict brain states ...
In the last years, there has been an exponential increase in the use of multivariate analysis in ne...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
Machine learning and Pattern recognition techniques are being increasingly employed in Functional ma...
One of the major goals in neuroscience is to understand the relationship between the brain function ...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
Human fMRI signals exhibit a spatial patterning that contains detailed information about a person’s ...
International audienceWhile medical imaging typically provides massive amounts of data, the extracti...
Pattern recognition methods have shown that fMRI data can reveal signicant information about brain a...
Brain imaging data are increasingly analyzed via a range of machine-learning methods. In this thesis...
In several biomedical fields, researchers are faced with regression problems that can be stated as S...
Mitchell et al. [9] demonstrated that support vector machines (SVM) are effective to classify the co...
Statistical analysis method is utilitarian in neuroimaging. For instance, SPM12, FSL and BrainVoyage...
We use Kernel Canonical Correlation Analysis (KCCA) for detecting brain activity in function MRI by ...
Contains fulltext : 131512.pdf (publisher's version ) (Open Access)Encoding and de...