OBJECTIVE:Using traditional approaches, a brain-computer interface (BCI) requires the collection of calibration data for new subjects prior to online use. Calibration time can be reduced or eliminated e.g., by subject-to-subject transfer of a pre-trained classifier or unsupervised adaptive classification methods which learn from scratch and adapt over time. While such heuristics work well in practice, none of them can provide theoretical guarantees. Our objective is to modify an event-related potential (ERP) paradigm to work in unison with the machine learning decoder, and thus to achieve a reliable unsupervised calibrationless decoding with a guarantee to recover the true class means. METHOD:We introduce learning from label proportions (LL...
© 2001-2011 IEEE. Brain-computer interfaces (BCIs) are desirable for people to express their thought...
This contribution reviews how usability in Brain- Computer Interfaces (BCI) can be enhanced. As an e...
This paper proposes a novel adaptive online-feedback methodology for Brain Computer Interfaces (BCI)...
Objective Using traditional approaches, a brain-computer interface (BCI) requires the collection of...
Despite several approaches to realize subject-to-subject transfer of pre-trained classifiers, the fu...
Data about two experiments is contained in this repository. An EEG experiment utilizing visual event...
Despite several approaches to realize subject-to-subject transfer of pre-trained classifiers, the fu...
The online usage of brain-computer interfaces (BCI) generates unlabeled data. This data in combinati...
Despite several approaches to realize subject-to-subject transfer of pre-trained classifiers, the fu...
When you use the data of this repository please cite the following article: Hübner, David, et al. "...
If you prefer to use the preprocessed and epoched data, please refer to: https://zenodo.org/record/1...
Brain-Computer Interfaces (BCIs) allow users to control a computer application by brain activity as ...
Objective. Typically, a brain computer interface (BCI) is calibrated using user- and session-specifi...
Objective. Typically, a brain computer interface (BCI) is calibrated using user- and session-specifi...
In this work we use the classic P300 speller where the user is presented a grid of characters. Group...
© 2001-2011 IEEE. Brain-computer interfaces (BCIs) are desirable for people to express their thought...
This contribution reviews how usability in Brain- Computer Interfaces (BCI) can be enhanced. As an e...
This paper proposes a novel adaptive online-feedback methodology for Brain Computer Interfaces (BCI)...
Objective Using traditional approaches, a brain-computer interface (BCI) requires the collection of...
Despite several approaches to realize subject-to-subject transfer of pre-trained classifiers, the fu...
Data about two experiments is contained in this repository. An EEG experiment utilizing visual event...
Despite several approaches to realize subject-to-subject transfer of pre-trained classifiers, the fu...
The online usage of brain-computer interfaces (BCI) generates unlabeled data. This data in combinati...
Despite several approaches to realize subject-to-subject transfer of pre-trained classifiers, the fu...
When you use the data of this repository please cite the following article: Hübner, David, et al. "...
If you prefer to use the preprocessed and epoched data, please refer to: https://zenodo.org/record/1...
Brain-Computer Interfaces (BCIs) allow users to control a computer application by brain activity as ...
Objective. Typically, a brain computer interface (BCI) is calibrated using user- and session-specifi...
Objective. Typically, a brain computer interface (BCI) is calibrated using user- and session-specifi...
In this work we use the classic P300 speller where the user is presented a grid of characters. Group...
© 2001-2011 IEEE. Brain-computer interfaces (BCIs) are desirable for people to express their thought...
This contribution reviews how usability in Brain- Computer Interfaces (BCI) can be enhanced. As an e...
This paper proposes a novel adaptive online-feedback methodology for Brain Computer Interfaces (BCI)...