Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Karthik Seetharaman is active.

Publication


Featured researches published by Karthik Seetharaman.


biomedical engineering | 2012

A P300-based Quantitative Comparison between the Emotiv Epoc Headset and a Medical EEG Device

Matthieu Duvinage; Thierry Castermans; Thierry Dutoit; Mathieu Petieau; Thomas Hoellinger; Caty De Saedeleer; Karthik Seetharaman; Guy Cheron

EEG-based systems have been the most widely used in the field of Brain-Computer Interfaces (BCI) for two decades. Plenty of applications have been proposed from games to rehabilitation systems. Until recently, EEG recording devices were too expensive for an end-user. Today, several low-cost alternatives have appeared on the market. The most sophisticated of these low-cost devices is the Emotiv Epoc headset. Some studies reported that this device is suitable for customers in terms of performance. However, none of the previous studies reported to what extent the Emotiv headset is working well compared to a medical system. The aim of this paper is thus to scientifically compare a medical system and the Emotiv Epoc headset by determining their respective performances in the context of a P300 BCI paradigm. In this study, seven healthy subjects performed P300 experiments and two different conditions were studied: sitting on a chair and walking on a treadmill at constant speed. Results show that the Emotiv headset, although able to record EEG data and not only artifacts, is sometimes significantly worse than a medical system. Those results suggest that the design of a specific low-cost EEG recording systems for rehabilitation purposes at a low price is still required.


Neural Plasticity | 2012

From Spinal Central Pattern Generators to Cortical Network: Integrated BCI for Walking Rehabilitation

Guy Cheron; Matthieu Duvinage; C. De Saedeleer; Thierry Castermans; Ana Bengoetxea; Mathieu Petieau; Karthik Seetharaman; Thomas Hoellinger; Bernard Dan; Thierry Dutoit; F. Sylos Labini; Francesco Lacquaniti; Yuri P. Ivanenko

Success in locomotor rehabilitation programs can be improved with the use of brain-computer interfaces (BCIs). Although a wealth of research has demonstrated that locomotion is largely controlled by spinal mechanisms, the brain is of utmost importance in monitoring locomotor patterns and therefore contains information regarding central pattern generation functioning. In addition, there is also a tight coordination between the upper and lower limbs, which can also be useful in controlling locomotion. The current paper critically investigates different approaches that are applicable to this field: the use of electroencephalogram (EEG), upper limb electromyogram (EMG), or a hybrid of the two neurophysiological signals to control assistive exoskeletons used in locomotion based on programmable central pattern generators (PCPGs) or dynamic recurrent neural networks (DRNNs). Plantar surface tactile stimulation devices combined with virtual reality may provide the sensation of walking while in a supine position for use of training brain signals generated during locomotion. These methods may exploit mechanisms of brain plasticity and assist in the neurorehabilitation of gait in a variety of clinical conditions, including stroke, spinal trauma, multiple sclerosis, and cerebral palsy.


IEEE Journal on Emerging and Selected Topics in Circuits and Systems | 2011

Optimizing the Performances of a P300-Based Brain–Computer Interface in Ambulatory Conditions

Thierry Castermans; Matthieu Duvinage; Mathieu Petieau; Thomas Hoellinger; Caty De Saedeleer; Karthik Seetharaman; Ana Bengoetxea; Guy Cheron; Thierry Dutoit

Brain-computer interfaces (BCIs) enable their users to interact with their surrounding environment using the activity of their brain only, without activating any muscle. This technology provides severely disabled people with an alternative mean to communicate or control any electric device. On the other hand, BCI applications are more and more dedicated to healthier people, with the aim of giving them access to augmented reality or new rehabilitation tools. As it is noninvasive, light and relatively cheap, electroencephalography (EEG) is the most used acquisition technique to record cerebral activity of the BCI users. However, when using such type of BCI, user movements are likely to provoke motions of the measuring electrodes which can severely damage the EEG quality. Thus, current BCI technology requires that the user sits and performs as little movements as possible. This is of course a strong limitation of BCI for use in ordinary life. Very recently, preliminary studies have been published in the literature and suggest that BCI applications can be realized even in the physically moving context. In this paper, we thoroughly investigate the possibility to develop a P300-based BCI system in ambulatory condition. The study is based on experimental data recorded with seven subjects executing a visual P300 speller-like discrimination task while simultaneously walking at different speeds on a treadmill. It is demonstrated that a P300-based BCI is definitely feasible in such conditions. Different artifact correction methods are described and discussed in detail. To conclude, a recommended approach is given for the development of a real-time application.


issnip biosignals and biorobotics conference biosignals and robotics for better and safer living | 2012

A five-state P300-based foot lifter orthosis: Proof of concept

Matthieu Duvinage; Thierry Castermans; René Jiménez-Fabián; Thomas Hoellinger; Caty De Saedeleer; Mathieu Petieau; Karthik Seetharaman; Guy Cheron; Olivier Verlinden; Thierry Dutoit

Current lower limb prostheses do not integrate recent developments in robotics and in Brain-Computer Interfaces (BCIs). In fact, active lower limb prostheses seldom consider the users intent, they often determine the correct movement from those of healthy parts of the body or from the residual limb. Recently, an emerging idea for non-invasive BCIs was proposed to allow such low bitrate systems to control a lower limb prosthesis thanks to a Central Pattern Generator (CPG) widely used in robotics. This CPG allows to automatically generate a periodic gait pattern. Furthermore, the CPG pattern frequency and magnitude can be adapted according to the specific gait behavior of the patient and his desired speed. This paper proves the concept of combining a human gait model based on a CPG and a classic but non-natural P300 BCI in order to consider the users intent. The details of how the entire chain can be practically implemented are given. Finally, preliminary results on four healthy subjects for a four-speed P300-based lower limb orthosis with a non-control state are presented. Globally, results are satisfying and prove the feasibility of such systems.


Computers in Biology and Medicine | 2012

Phase lagging model of brain response to external stimuli-modeling of single action potential

Karthik Seetharaman; Hamidreza Namazi; Vladimir V.V. Kulsih

In this paper we detail a phase lagging model of brain response to external stimuli. The model is derived using the basic laws of physics like conservation of energy law. This model eliminates the paradox of instantaneous propagation of the action potential in the brain. The solution of this model is then presented. The model is further applied in the case of a single neuron and is verified by simulating a single action potential. The results of this modeling are useful not only for the fundamental understanding of single action potential generation, but also they can be applied in case of neuronal interactions, where the results can be verified against the real EEG signal.


international conference of the ieee engineering in medicine and biology society | 2012

A subjective assessment of a P300 BCI system for lower-limb rehabilitation purposes

Matthieu Duvinage; Thierry Castermans; Mathieu Petieau; Karthik Seetharaman; Thomas Hoellinger; Guy Cheron; Thierry Dutoit

Recent research has shown that a P300 system can be used while walking without requiring any specific gait-related artifact removal techniques. Also, standard EEG-based Brain-Computer Interfaces (BCI) have not been really assessed for lower limb rehabilitation/prosthesis. Therefore, this paper gives a first baseline estimation (for future BCI comparisons) of the subjective and objective performances of a four-state P300 BCI plus a non-control state for lower-limb rehabilitation purposes. To assess usability and workload, the System Usability Scale and the NASA Task Load Index questionnaires were administered to five healthy subjects after performing a real-time treadmill speed control. Results show that the P300 BCI approach could suit fitness and rehabilitation applications, whereas prosthesis control, which suffers from a low reactivity, appears too sensitive for risky and crowded areas.


Frontiers in Computational Neuroscience | 2013

Biological oscillations for learning walking coordination: dynamic recurrent neural network functionally models physiological central pattern generator

Thomas Hoellinger; Mathieu Petieau; Matthieu Duvinage; Thierry Castermans; Karthik Seetharaman; Ana Maria Cebolla; Ana Bengoetxea; Yuri P. Ivanenko; Bernard Dan; Guy Cheron

The existence of dedicated neuronal modules such as those organized in the cerebral cortex, thalamus, basal ganglia, cerebellum, or spinal cord raises the question of how these functional modules are coordinated for appropriate motor behavior. Study of human locomotion offers an interesting field for addressing this central question. The coordination of the elevation of the 3 leg segments under a planar covariation rule (Borghese et al., 1996) was recently modeled (Barliya et al., 2009) by phase-adjusted simple oscillators shedding new light on the understanding of the central pattern generator (CPG) processing relevant oscillation signals. We describe the use of a dynamic recurrent neural network (DRNN) mimicking the natural oscillatory behavior of human locomotion for reproducing the planar covariation rule in both legs at different walking speeds. Neural network learning was based on sinusoid signals integrating frequency and amplitude features of the first three harmonics of the sagittal elevation angles of the thigh, shank, and foot of each lower limb. We verified the biological plausibility of the neural networks. Best results were obtained with oscillations extracted from the first three harmonics in comparison to oscillations outside the harmonic frequency peaks. Physiological replication steadily increased with the number of neuronal units from 1 to 80, where similarity index reached 0.99. Analysis of synaptic weighting showed that the proportion of inhibitory connections consistently increased with the number of neuronal units in the DRNN. This emerging property in the artificial neural networks resonates with recent advances in neurophysiology of inhibitory neurons that are involved in central nervous system oscillatory activities. The main message of this study is that this type of DRNN may offer a useful model of physiological central pattern generator for gaining insights in basic research and developing clinical applications.


Archive | 2011

Toward an Integrative Dynamic Recurrent Neural Network for Sensorimotor Coordination Dynamics

Guy Cheron; Matthieu Duvinage; Castermans; Ana Maria Cebolla; Ana Bengoetxea; C. De Saedeleer; Mathieu Petieau; Thomas Hoellinger; Karthik Seetharaman; J P Draye; Bernard Dan

Cheron G.1,2, Duvinage M.3, Castermans3, T. Leurs F.1, Cebolla A.1, Bengoetxea A.1, De Saedeleer C.2, Petieau M.2, Hoellinger T.1, Seetharaman K.1, Draye JP 1. and Dan B 4. 1Laboratory of Neurophysiology and Movement Biomechanics, Universite Libre de Bruxelles, CP 168, 50 Av F Roosevelt, Brussels, 2Laboratory of Electrophysiology, University of Mons, 3TCTS lab, University of Mons, 4Department of Neurology, Hopital Universitaire des Enfants reine Fabiola, Universite Libre de Bruxelles, Belgium


ieee international conference on biomedical robotics and biomechatronics | 2012

MINDWALKER: Going one step further with assistive lower limbs exoskeleton for SCI condition subjects

Jeremi Gancet; Michel Ilzkovitz; Elvina Motard; Yashodhan Nevatia; Pierre Letier; David de Weerdt; Guy Cheron; Thomas Hoellinger; Karthik Seetharaman; Mathieu Petieau; Yuri P. Ivanenko; Marco Molinari; Iolanda Pisotta; Federica Tamburella; Francesca Sylos Labini; Andrea d'Avella; Herman van der Kooij; Letian Wang; Frans C. T. van der Helm; Shiqian Wang; Frank Zanow; Ralf Hauffe; Freygardur Thorsteinsson


Computers in Biology and Medicine | 2013

Erratum to Phase lagging model of brain response to external stimuli-modeling of single action potential [Computers in Biology and Medicine 42 (2012) 857-862]

Karthik Seetharaman; Hamidreza Namazi; Vladimir V. Kulish

Collaboration


Dive into the Karthik Seetharaman's collaboration.

Top Co-Authors

Avatar

Guy Cheron

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar

Mathieu Petieau

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar

Thomas Hoellinger

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Ana Bengoetxea

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar

Bernard Dan

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar

Caty De Saedeleer

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar

Yuri P. Ivanenko

University of Rome Tor Vergata

View shared research outputs
Researchain Logo
Decentralizing Knowledge