EEG classification is a promising approach to facilitate the life of handicapped people and to generate future human-computer-interfaces. In this paper we want to compare the effectiveness of current state of the art deep learning techniques for EEG classification. Therefore, we applied different approaches on various datasets and did a crosscomparison of the results in order to get more knowledge on the generalization capabilities. Additionally, we created a new EEG dataset and made it available for further research.
| Titel | Evaluation of different deep learning approaches for EEG classification |
|---|---|
| Medien | 5th International Conference on Artificial Intelligence for Industries (AI4I). |
| Verlag | IEEE |
| Band | 2022 |
| Verfasser | Bastian Scharnagl, Prof. Dr. Christian Groth |
| Veröffentlichungsdatum | 19.08.2022 |
| Zitation | Scharnagl, Bastian; Groth, Christian (2022): Evaluation of different deep learning approaches for EEG classification . 5th International Conference on Artificial Intelligence for Industries (AI4I). 2022. |