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Dive into the research topics where Marco Congedo is active.

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Featured researches published by Marco Congedo.


BAYESIAN INFERENCE AND MAXIMUM ENTROPY METHODS IN SCIENCE AND ENGINEERING (MAXENT 2014) | 2015

A special form of SPD covariance matrix for interpretation and visualization of data manipulated with Riemannian geometry

Marco Congedo; Alexandre Barachant

Currently the Riemannian geometry of symmetric positive definite (SPD) matrices is gaining momentum as a powerful tool in a wide range of engineering applications such as image, radar and biomedical data signal processing. If the data is not natively represented in the form of SPD matrices, typically we may summarize them in such form by estimating covariance matrices of the data. However once we manipulate such covariance matrices on the Riemannian manifold we lose the representation in the original data space. For instance, we can evaluate the geometric mean of a set of covariance matrices, but not the geometric mean of the data generating the covariance matrices, the space of interest in which the geometric mean can be interpreted. As a consequence, Riemannian information geometry is often perceived by non-experts as a “black-box” tool and this perception prevents a wider adoption in the scientific community. Hereby we show that we can overcome this limitation by constructing a special form of SPD matr...


intelligent data analysis | 2009

Iterative Subspace Decomposition for Ocular Artifact Removal from EEG Recordings

Cédric Gouy-Pailler; Reza Sameni; Marco Congedo; Christian Jutten


5th International Brain-Computer Interface Conference 2011 (BCI 2011) | 2011

A Brain-Switch using Riemannian Geometry

Alexandre Barachant; Stéphane Bonnet; Marco Congedo; Christian Jutten


Archive | 2015

Symmetric positive definite matrices, e.g. covariance matrices, are constrained by their symmetry, the strict positivity of the diagonal elements (variance) and the Cauchy-Schwarz inequalities bounding the absolute value of the off-diagonal elements: |Cov(x i x j )|≤[Var(x j )Var(x j )] 1/2 , for all i,j∈{1,…,N}.

Marco Congedo; Bijan Afsari; Alexandre Barachant; Maher Moakher


Archive | 2015

Approximate Joint Diagonalization and Geometric Mean of Symmetric Positive

Marco Congedo; Bijan Afsari; Alexandre Barachant; Maher Moakher


34th International Workshop on Bayesian Inference and Maximun Entropy Methods in Science and Engineering (MaxEnt'14) | 2014

A Special Form of SPD Covariance Matrix for Interpretation and Visualization of Data Manipulated with Riemannian Geometry

Marco Congedo; Alexandre Barachant


XXIVème colloque GRETSI (GRETSI 2013) | 2013

Classification de potentiels évoqués P300 par géométrie riemannienne pour les interfaces cerveau-machine EEG

Alexandre Barachant; Marco Congedo; Gijs Van Veen; Christian Jutten


Archive | 2013

of covariance matrices using a Riemannian-based kernel for BCI applications

Marco Congedo; Christian Jutten


Archive | 2012

Multiclass Brain-Computer Interface Classication

Marco Congedo; Christian Jutten


XXIIIème colloque GRETSI (GRETSI 2011) | 2011

Réalisation d'un Brain-Switch EEG par Géométrie Riemannienne

Alexandre Barachant; Stéphane Bonnet; Marco Congedo; Christian Jutten

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Alexandre Barachant

Centre national de la recherche scientifique

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Bijan Afsari

Johns Hopkins University

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Cédric Gouy-Pailler

Grenoble Institute of Technology

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Sophie Achard

Centre national de la recherche scientifique

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Cédric Gouy-Pailler

Grenoble Institute of Technology

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Emmanuel Maby

Grenoble Institute of Technology

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