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Dive into the research topics where Gabriel Curio is active.

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Featured researches published by Gabriel Curio.


NeuroImage | 2007

The non-invasive Berlin Brain–Computer Interface: Fast acquisition of effective performance in untrained subjects

Benjamin Blankertz; Guido Dornhege; Matthias Krauledat; Klaus-Robert Müller; Gabriel Curio

Brain-Computer Interface (BCI) systems establish a direct communication channel from the brain to an output device. These systems use brain signals recorded from the scalp, the surface of the cortex, or from inside the brain to enable users to control a variety of applications. BCI systems that bypass conventional motor output pathways of nerves and muscles can provide novel control options for paralyzed patients. One classical approach to establish EEG-based control is to set up a system that is controlled by a specific EEG feature which is known to be susceptible to conditioning and to let the subjects learn the voluntary control of that feature. In contrast, the Berlin Brain-Computer Interface (BBCI) uses well established motor competencies of its users and a machine learning approach to extract subject-specific patterns from high-dimensional features optimized for detecting the users intent. Thus the long subject training is replaced by a short calibration measurement (20 min) and machine learning (1 min). We report results from a study in which 10 subjects, who had no or little experience with BCI feedback, controlled computer applications by voluntary imagination of limb movements: these intentions led to modulations of spontaneous brain activity specifically, somatotopically matched sensorimotor 7-30 Hz rhythms were diminished over pericentral cortices. The peak information transfer rate was above 35 bits per minute (bpm) for 3 subjects, above 23 bpm for two, and above 12 bpm for 3 subjects, while one subject could achieve no BCI control. Compared to other BCI systems which need longer subject training to achieve comparable results, we propose that the key to quick efficiency in the BBCI system is its flexibility due to complex but physiologically meaningful features and its adaptivity which respects the enormous inter-subject variability.


IEEE Transactions on Biomedical Engineering | 2004

The BCI competition 2003: progress and perspectives in detection and discrimination of EEG single trials

Benjamin Blankertz; Klaus-Robert Müller; Gabriel Curio; Theresa M. Vaughan; Jonathan R. Wolpaw; Alois Schlögl; Christa Neuper; Gert Pfurtscheller; Thilo Hinterberger; Michael Schröder; Niels Birbaumer

Interest in developing a new method of man-to-machine communication-a brain-computer interface (BCI)-has grown steadily over the past few decades. BCIs create a new communication channel between the brain and an output device by bypassing conventional motor output pathways of nerves and muscles. These systems use signals recorded from the scalp, the surface of the cortex, or from inside the brain to enable users to control a variety of applications including simple word-processing software and orthotics. BCI technology could therefore provide a new communication and control option for individuals who cannot otherwise express their wishes to the outside world. Signal processing and classification methods are essential tools in the development of improved BCI technology. We organized the BCI Competition 2003 to evaluate the current state of the art of these tools. Four laboratories well versed in EEG-based BCI research provided six data sets in a documented format. We made these data sets (i.e., labeled training sets and unlabeled test sets) and their descriptions available on the Internet. The goal in the competition was to maximize the performance measure for the test labels. Researchers worldwide tested their algorithms and competed for the best classification results. This paper describes the six data sets and the results and function of the most successful algorithms.


IEEE Transactions on Biomedical Engineering | 2004

Boosting bit rates in noninvasive EEG single-trial classifications by feature combination and multiclass paradigms

Guido Dornhege; Benjamin Blankertz; Gabriel Curio; Klaus-Robert Müller

Noninvasive electroencephalogram (EEG) recordings provide for easy and safe access to human neocortical processes which can be exploited for a brain-computer interface (BCI). At present, however, the use of BCIs is severely limited by low bit-transfer rates. We systematically analyze and develop two recent concepts, both capable of enhancing the information gain from multichannel scalp EEG recordings: 1) the combination of classifiers, each specifically tailored for different physiological phenomena, e.g., slow cortical potential shifts, such as the premovement Bereitschaftspotential or differences in spatio-spectral distributions of brain activity (i.e., focal event-related desynchronizations) and 2) behavioral paradigms inducing the subjects to generate one out of several brain states (multiclass approach) which all bare a distinctive spatio-temporal signature well discriminable in the standard scalp EEG. We derive information-theoretic predictions and demonstrate their relevance in experimental data. We will show that a suitably arranged interaction between these concepts can significantly boost BCI performances.


IEEE Transactions on Biomedical Engineering | 2005

Spatio-spectral filters for improving the classification of single trial EEG

Steven Lemm; Benjamin Blankertz; Gabriel Curio; Klaus-Robert Müller

Data recorded in electroencephalogram (EEG)-based brain-computer interface experiments is generally very noisy, nonstationary, and contaminated with artifacts that can deteriorate discrimination/classification methods. In this paper, we extend the common spatial pattern (CSP) algorithm with the aim to alleviate these adverse effects. In particular, we suggest an extension of CSP to the state space, which utilizes the method of time delay embedding. As we will show, this allows for individually tuned frequency filters at each electrode position and, thus, yields an improved and more robust machine learning procedure. The advantages of the proposed method over the original CSP method are verified in terms of an improved information transfer rate (bits per trial) on a set of EEG-recordings from experiments of imagined limb movements.


Journal of Neuroscience Methods | 2008

Machine learning for real-time single-trial EEG-analysis: from brain-computer interfacing to mental state monitoring.

Klaus-Robert Müller; Michael Tangermann; Guido Dornhege; Matthias Krauledat; Gabriel Curio; Benjamin Blankertz

Machine learning methods are an excellent choice for compensating the high variability in EEG when analyzing single-trial data in real-time. This paper briefly reviews preprocessing and classification techniques for efficient EEG-based brain-computer interfacing (BCI) and mental state monitoring applications. More specifically, this paper gives an outline of the Berlin brain-computer interface (BBCI), which can be operated with minimal subject training. Also, spelling with the novel BBCI-based Hex-o-Spell text entry system, which gains communication speeds of 6-8 letters per minute, is discussed. Finally the results of a real-time arousal monitoring experiment are presented.


Clinical Neurophysiology | 2008

Recommendations for the clinical use of somatosensory-evoked potentials.

G. Cruccu; Michael J. Aminoff; Gabriel Curio; J.M. Guerit; Ryusuke Kakigi; François Mauguière; Paolo Maria Rossini; Rolf-Detlef Treede; Luis Garcia-Larrea

The International Federation of Clinical Neurophysiology (IFCN) is in the process of updating its Recommendations for clinical practice published in 1999. These new recommendations dedicated to somatosensory-evoked potentials (SEPs) update the methodological aspects and general clinical applications of standard SEPs, and introduce new sections dedicated to the anatomical-functional organization of the somatosensory system and to special clinical applications, such as intraoperative monitoring, recordings in the intensive care unit, pain-related evoked potentials, and trigeminal and pudendal SEPs. Standard SEPs have gained an established role in the health system, and the special clinical applications we describe here are drawing increasing interest. However, to prove clinically useful each of them requires a dedicated knowledge, both technical and pathophysiological. In this article we give technical advice, report normative values, and discuss clinical applications.


NeuroImage | 2012

Enhanced performance by a hybrid NIRS-EEG brain computer interface

Siamac Fazli; Jan Mehnert; Jens Steinbrink; Gabriel Curio; Arno Villringer; Klaus-Robert Müller; Benjamin Blankertz

Noninvasive Brain Computer Interfaces (BCI) have been promoted to be used for neuroprosthetics. However, reports on applications with electroencephalography (EEG) show a demand for a better accuracy and stability. Here we investigate whether near-infrared spectroscopy (NIRS) can be used to enhance the EEG approach. In our study both methods were applied simultaneously in a real-time Sensory Motor Rhythm (SMR)-based BCI paradigm, involving executed movements as well as motor imagery. We tested how the classification of NIRS data can complement ongoing real-time EEG classification. Our results show that simultaneous measurements of NIRS and EEG can significantly improve the classification accuracy of motor imagery in over 90% of considered subjects and increases performance by 5% on average (p<0:01). However, the long time delay of the hemodynamic response may hinder an overall increase of bit-rates. Furthermore we find that EEG and NIRS complement each other in terms of information content and are thus a viable multimodal imaging technique, suitable for BCI.


IEEE Transactions on Neural Systems and Rehabilitation Engineering | 2006

The Berlin brain-computer interface: EEG-based communication without subject training

Benjamin Blankertz; Guido Dornhege; Matthias Krauledat; Klaus-Robert Müller; Volker Kunzmann; Florian Losch; Gabriel Curio

The Berlin Brain-Computer Interface (BBCI) project develops a noninvasive BCI system whose key features are 1) the use of well-established motor competences as control paradigms, 2) high-dimensional features from 128-channel electroencephalogram (EEG), and 3) advanced machine learning techniques. As reported earlier, our experiments demonstrate that very high information transfer rates can be achieved using the readiness potential (RP) when predicting the laterality of upcoming left- versus right-hand movements in healthy subjects. A more recent study showed that the RP similarly accompanies phantom movements in arm amputees, but the signal strength decreases with longer loss of the limb. In a complementary approach, oscillatory features are used to discriminate imagined movements (left hand versus right hand versus foot). In a recent feedback study with six healthy subjects with no or very little experience with BCI control, three subjects achieved an information transfer rate above 35 bits per minute (bpm), and further two subjects above 24 and 15 bpm, while one subject could not achieve any BCI control. These results are encouraging for an EEG-based BCI system in untrained subjects that is independent of peripheral nervous system activity and does not rely on evoked potentials even when compared to results with very well-trained subjects operating other BCI systems.


Human Brain Mapping | 2000

Speaking modifies voice-evoked activity in the human auditory cortex.

Gabriel Curio; Georg Neuloh; Jussi Numminen; Veikko Jousmäki; Riitta Hari

The voice we most often hear is our own, and proper interaction between speaking and hearing is essential for both acquisition and performance of spoken language. Disturbed audiovocal interactions have been implicated in aphasia, stuttering, and schizophrenic voice hallucinations, but paradigms for a noninvasive assessment of auditory self‐monitoring of speaking and its possible dysfunctions are rare. Using magnetoencephalograpy we show here that self‐uttered syllables transiently activate the speakers auditory cortex around 100 ms after voice onset. These phasic responses were delayed by 11 ms in the speech‐dominant left hemisphere relative to the right, whereas during listening to a replay of the same utterances the response latencies were symmetric. Moreover, the auditory cortices did not react to rare vowel changes interspersed randomly within a series of repetitively spoken vowels, in contrast to regular change‐related responses evoked 100–200 ms after replayed rare vowels. Thus, speaking primes the human auditory cortex at a millisecond time scale, dampening and delaying reactions to self‐produced “expected” sounds, more prominently in the speech‐dominant hemisphere. Such motor‐to‐sensory priming of early auditory cortex responses during voicing constitutes one element of speech self‐monitoring that could be compromised in central speech disorders. Hum. Brain Mapping 9:183–191, 2000.


IEEE Transactions on Biomedical Engineering | 2006

Combined Optimization of Spatial and Temporal Filters for Improving Brain-Computer Interfacing

Guido Dornhege; Benjamin Blankertz; Matthias Krauledat; Florian Losch; Gabriel Curio; Klaus-Robert Müller

Brain-computer interface (BCI) systems create a novel communication channel from the brain to an output device by bypassing conventional motor output pathways of nerves and muscles. Therefore they could provide a new communication and control option for paralyzed patients. Modern BCI technology is essentially based on techniques for the classification of single-trial brain signals. Here we present a novel technique that allows the simultaneous optimization of a spatial and a spectral filter enhancing discriminability rates of multichannel EEG single-trials. The evaluation of 60 experiments involving 22 different subjects demonstrates the significant superiority of the proposed algorithm over to its classical counterpart: the median classification error rate was decreased by 11%. Apart from the enhanced classification, the spatial and/or the spectral filter that are determined by the algorithm can also be used for further analysis of the data, e.g., for source localization of the respective brain rhythms

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Benjamin Blankertz

Technical University of Berlin

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Klaus-Robert Müller

Braunschweig University of Technology

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Guido Dornhege

Technical University of Berlin

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