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Proceedings ArticleDOI

Temporal Modeling of EEG Signals using Block Sparse Variational Bayes Framework

TLDR
Results show that the proposed temporal model is highly useful in processing SSVEP-EEG signals irrespective of the recognition algorithms used.
Abstract
Compressed Sensing (CS) has emerged as an alternate method to acquire high dimensional signals effectively by exploiting the sparsity assumption. However, owing to non-sparse and non-stationary nature, it is extremely difficult to process Electroencephalograph (EEG) signals using CS paradigm. The success of Bayesian algorithms in recovering non-sparse signals has triggered the research in CS based models for neurophysiological signal processing. In this paper, we address the problem of Temporal Modeling of EEG Signals using Block Sparse Variational Bayes (SVB) Framework. Temporal correlation of EEG signals is modeled blockwise using normal variance scale mixtures parameterized via some random and deterministic parameters. Variational inference is exploited to infer the random parameters and Expectation Maximization (EM) is used to obtain the estimate of deterministic parameters. To validate the framework, we present experimental results for benchmark State Visual Evoked Potential (SSVEP) dataset with 40-target Brain-Computer Interface (BCI) speller using two frequency recognition algorithms viz. Canonical Correlation Analysis (CCA) and L1-regularized Multiway CCA. Results show that the proposed temporal model is highly useful in processing SSVEP-EEG signals irrespective of the recognition algorithms used.

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Book ChapterDOI

Some Comments on Variational Bayes Block Sparse Modeling with Correlated Entries

TL;DR: The effect of the threshold to prune out variance parameters of algorithms corresponding to several choices of marginals, viz. multivariate Jeffery prior, multivariate Laplace distribution and multivariate Student’s t distribution is discussed.
References
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Journal ArticleDOI

Pushing the Limits of Sparse Support Recovery Using Correlation Information

TL;DR: It is shown that if existing algorithms can recover sparse support of size s, then using such correlation information, the guaranteed size of recoverable support can be increased to O(s2), although the sparse signal itself may not be recoverable.
Journal ArticleDOI

Bayesian Group-Sparse Modeling and Variational Inference

TL;DR: A general class of multivariate priors for group-sparse modeling within the Bayesian framework is presented, showing the flexibility of this modeling by considering several extensions such as multiple measurements, within-group correlations, and overlapping groups.
Journal ArticleDOI

Spatiotemporal Sparse Bayesian Learning With Applications to Compressed Sensing of Multichannel Physiological Signals

TL;DR: This work proposes a spatiotemporal sparse Bayesian learning algorithm to recover multichannel signals simultaneously that not only exploits temporal correlation within each channel signal, but also exploits inter-channel correlation among different channel signals.
Journal ArticleDOI

Compressive sensing scalp EEG signals: implementations and practical performance.

TL;DR: This article investigates in detail the practical performance of different implementations of the compressive sensing theory when applied to scalp EEG signals.
Proceedings ArticleDOI

Sparse Bayesian multi-task learning for predicting cognitive outcomes from neuroimaging measures in Alzheimer's disease

TL;DR: An efficient sparse Bayesian multi-task learning algorithm is proposed, which adaptively learns and exploits the dependence among multiple scores derived from a single cognitive test to achieve improved prediction performance in AD.
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