Mind reading or thought prediction is a promising application of functional neuroimaging studies. The emergence of functional magnetic resonance imaging (fMRI) has, in the last two decades given a boost to these studies. In order to improve the accuracy, predictability and repeatability of thought prediction, it is important to have a representation that can capture the nuances of fMRI activations with respect to a particular cognitive state. In this paper, the process of creating a geometrical representation of the activations using non-linear manifolds is described. Manifold learning brings out the geometry of the activated voxels in the fMRI image. It is shown that this kind of representation is able to give high accuracy in classificati...
The main goal of the present study is to launch the foundations of a pipeline for fMRI-based human b...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Abstract. In this paper we construct an atlas that captures functional characteristics of a cognitiv...
How neurons influence each other's firing depends on the strength of synaptic connections among them...
One of the key challenges in cognitive neuroscience is determining the mapping between neural activi...
The authors propose a statistical learning model for classifying cognitive processes based on distri...
Over the last few years, functional Magnetic Resonance Imaging (fMRI) has emerged as a new and power...
We propose a statistical learning model for classifying cognitive processes based on distributed pat...
Large-scale brain dynamics are believed to lie in a latent, low-dimensional space. Typically, the em...
In this study, an information theoretic approach is proposed to model brain connectivity during a co...
In this study, we propose an ensemble learning architecture called "Cognitive Learner", for classifi...
Abstract—We propose a statistical learning model for classify-ing cognitive processes based on distr...
Neuroimaging techniques, especially fMRI analysis provide images that are contained in a high dimens...
Abstract The Nash embedding theorem demonstrates that any compact manifold can be isometrically embe...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on singl...
The main goal of the present study is to launch the foundations of a pipeline for fMRI-based human b...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Abstract. In this paper we construct an atlas that captures functional characteristics of a cognitiv...
How neurons influence each other's firing depends on the strength of synaptic connections among them...
One of the key challenges in cognitive neuroscience is determining the mapping between neural activi...
The authors propose a statistical learning model for classifying cognitive processes based on distri...
Over the last few years, functional Magnetic Resonance Imaging (fMRI) has emerged as a new and power...
We propose a statistical learning model for classifying cognitive processes based on distributed pat...
Large-scale brain dynamics are believed to lie in a latent, low-dimensional space. Typically, the em...
In this study, an information theoretic approach is proposed to model brain connectivity during a co...
In this study, we propose an ensemble learning architecture called "Cognitive Learner", for classifi...
Abstract—We propose a statistical learning model for classify-ing cognitive processes based on distr...
Neuroimaging techniques, especially fMRI analysis provide images that are contained in a high dimens...
Abstract The Nash embedding theorem demonstrates that any compact manifold can be isometrically embe...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on singl...
The main goal of the present study is to launch the foundations of a pipeline for fMRI-based human b...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Abstract. In this paper we construct an atlas that captures functional characteristics of a cognitiv...