International audienceThe use of spatial covariance matrix as a feature is investigated for motor imagery EEG-based classification in Brain-Computer Interface applications. A new kernel is derived by establishing a connection with the Riemannian geometry of symmetric positive definite matrices. Different kernels are tested, in combination with support vector machines, on a past BCI competition dataset. We demonstrate that this new approach outperforms significantly state of the art results, effectively replacing the traditional spatial filtering approach
In motor imagery brain-computer interfaces (BCIs), the symmetric positive-definite (SPD) covariance ...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
Background Classification of electroencephalography (EEG) signals for motor imagery based brain com...
International audienceThe use of spatial covariance matrix as feature is investigated for motor imag...
International audienceThe use of spatial covariance matrix as feature is investigated for motor imag...
International audienceThe use of spatial covariance matrix as a feature is investigated for motor im...
Abstract. The use of spatial covariance matrix as feature is investigated for motor imagery EEG-base...
ISBN 978-3-642-15994-7, SoftcoverInternational audienceIn brain-computer interfaces based on motor i...
ISBN 978-3-642-15994-7, SoftcoverInternational audienceIn brain-computer interfaces based on motor i...
International audienceThis paper presents a new classification framework for brain-computer interfac...
International audienceThis paper presents a new classification framework for brain-computer interfac...
In this paper, we propose a kernel for nonlinear dimensionality reduction over the manifold of Symme...
ISBN 978-3-642-15994-7, SoftcoverInternational audienceIn brain-computer interfaces based on motor i...
International audienceThis paper presents a link between the well known Common Spatial Pattern (CSP)...
International audienceThis paper presents a link between the well known Common Spatial Pattern (CSP)...
In motor imagery brain-computer interfaces (BCIs), the symmetric positive-definite (SPD) covariance ...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
Background Classification of electroencephalography (EEG) signals for motor imagery based brain com...
International audienceThe use of spatial covariance matrix as feature is investigated for motor imag...
International audienceThe use of spatial covariance matrix as feature is investigated for motor imag...
International audienceThe use of spatial covariance matrix as a feature is investigated for motor im...
Abstract. The use of spatial covariance matrix as feature is investigated for motor imagery EEG-base...
ISBN 978-3-642-15994-7, SoftcoverInternational audienceIn brain-computer interfaces based on motor i...
ISBN 978-3-642-15994-7, SoftcoverInternational audienceIn brain-computer interfaces based on motor i...
International audienceThis paper presents a new classification framework for brain-computer interfac...
International audienceThis paper presents a new classification framework for brain-computer interfac...
In this paper, we propose a kernel for nonlinear dimensionality reduction over the manifold of Symme...
ISBN 978-3-642-15994-7, SoftcoverInternational audienceIn brain-computer interfaces based on motor i...
International audienceThis paper presents a link between the well known Common Spatial Pattern (CSP)...
International audienceThis paper presents a link between the well known Common Spatial Pattern (CSP)...
In motor imagery brain-computer interfaces (BCIs), the symmetric positive-definite (SPD) covariance ...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
Background Classification of electroencephalography (EEG) signals for motor imagery based brain com...