Proceedings Article10.1109/IEMBS.2007.4352845
Adaptive Classification for Brain Computer Interfaces
Julie Blumberg,Jörn Rickert,Stephan Waldert,Andreas Schulze-Bonhage,Ad Aertsen,Carsten Mehring +5 more
- 22 Oct 2007
- Vol. 2007, pp 2536-2539
TL;DR: This paper evaluates the performance of a new adaptive classifier for the use within a brain computer-interface (BCI) and suggests an approach to strongly improve the precision and the time needed to gain accurate control in future BCI applications.
read more
Abstract: In this paper we evaluate the performance of a new adaptive classifier for the use within a brain computer-interface (BCI). The classifier can either be adaptive in a completely unsupervised manner or using unsupervised adaptation in conjunction with a neuronal evaluation signal to improve adaptation. The first variant, termed adaptive linear discriminant analysis (ALDA), updates mean values as well as covariances of the class distributions continuously in time. In simulated as well as experimental data ALDA substantially outperforms the non-adaptive LDA. The second variant, termed adaptive linear discriminant analysis with error correction (ALDEC), extends the unsupervised algorithm with an additional independent neuronal evaluation signal. Such a signal could be an error related potential which indicates when the decoder did not classify correctly. When the mean values of the class distributions circle around each other or even cross their way, ALDEC can yield a substantially better adaptation than ALDA depending on the reliability of the error signal. Given the non-stationarity of EEG signals during BCI control our approach might strongly improve the precision and the time needed to gain accurate control in future BCI applications.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
A Review of Classification Algorithms for EEG-based Brain-Computer Interfaces: A 10-year Update
Fabien Lotte,Laurent Bougrain,Andrzej Cichocki,Andrzej Cichocki,Maureen Clerc,Marco Congedo,Alain Rakotomamonjy,Florian Yger +7 more
TL;DR: A comprehensive overview of the modern classification algorithms used in EEG-based BCIs is provided, the principles of these methods and guidelines on when and how to use them are presented, and a number of challenges to further advance EEG classification in BCI are identified.
1.9K
Combining Brain-Computer Interfaces and Assistive Technologies: State-of-the-Art and Challenges.
José del R. Millán,Rüdiger Rupp,Gernot Müller-Putz,Rod Murray-Smith,Claudio Giugliemma,Michael Tangermann,Carmen Vidaurre,Febo Cincotti,Andrea Kübler,Robert Leeb,Christa Neuper,Klaus-Robert Müller,Donatella Mattia +12 more
TL;DR: This paper focuses on the prospect of improving the lives of countless disabled individuals through a combination of BCI technology with existing assistive technologies (AT) and identifies four application areas where disabled individuals could greatly benefit from advancements inBCI technology, namely, “Communication and Control”, ‘Motor Substitution’, ”Entertainment” and “Motor Recovery”.
919
Hand movement direction decoded from MEG and EEG.
Stephan Waldert,Hubert Preissl,Evariste Demandt,Christoph Braun,Niels Birbaumer,Ad Aertsen,Carsten Mehring +6 more
TL;DR: The results show that neuronal activity associated with different movements of the same effector can be distinguished by means of nonin invasive recordings and might, thus, be used to drive a noninvasive BMI.
The Berlin Brain–Computer Interface: Non-Medical Uses of BCI Technology
Benjamin Blankertz,Benjamin Blankertz,Michael Tangermann,Carmen Vidaurre,Siamac Fazli,Claudia Sannelli,Stefan Haufe,Cecilia Maeder,Lenny Ramsey,Lenny Ramsey,Irene Sturm,Gabriel Curio,Klaus-Robert Müller +12 more
TL;DR: Examples of novel BCI applications which provide evidence for the promising potential of BCI technology for non-medical uses are presented and distinct methodological improvements required to bring non- medical applications ofBCI technology to a diversity of layperson target groups are discussed.
Toward Unsupervised Adaptation of LDA for Brain–Computer Interfaces
TL;DR: A simple unsupervised adaptation method of the linear discriminant analysis (LDA) classifier is suggested that effectively solves this problem by counteracting the harmful effect of nonclass-related nonstationarities in electroencephalography (EEG) during BCI sessions performed with motor imagery tasks.
317
References
Learning to Control a Brain–Machine Interface for Reaching and Grasping by Primates
Jose M. Carmena,Mikhail A. Lebedev,Roy E. Crist,Joseph E. O'Doherty,David M. Santucci,Dragan F. Dimitrov,Parag G. Patil,Craig S. Henriquez,Miguel A. L. Nicolelis +8 more
TL;DR: It is demonstrated that primates can learn to reach and grasp virtual objects by controlling a robot arm through a closed-loop brain–machine interface (BMIc) that uses multiple mathematical models to extract several motor parameters from the electrical activity of frontoparietal neuronal ensembles.
1.9K
Direct cortical control of 3d neuroprosthetic devices
TL;DR: In this paper, a co-adaptive algorithm uses the firing rate of the sensed neurons or neuron groupings to help develop the control signals for an object is developed from the neuron-originating electrical impulses detected by electrode arrays implanted in a subject's cerebral cortex at the pre-motor locations known to have association with arm movements.
1.6K
The anterior cingulate as a conflict monitor: fMRI and ERP studies.
TL;DR: It is proposed that the anterior cingulate cortex (ACC) contributes to cognition by detecting the presence of conflict during information processing, and to alert systems involved in top-down control to resolve this conflict.
1.3K
The non-invasive Berlin Brain-Computer Interface: fast acquisition of effective performance in untrained subjects.
TL;DR: It is proposed 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.
1K
Reinforcement-related brain potentials from medial frontal cortex: origins and functional significance
TL;DR: This review is organized around a set of predictions derived from a recent theory, which holds that the ERN is associated with the arrival of a negative reward prediction error signal in anterior cingulate cortex.
566