Abstract.
There is a growing interest in the use of physiological signals for communication and operation of devices for the severely motor disabled as well as for healthy people. A few groups around the world have developed brain-computer interfaces (BCIs) that rely upon the recognition of motor-related tasks (i.e., imagination of movements) from on-line EEG signals. In this paper we seek to find and analyze the set of relevant EEG features that best differentiate spontaneous motor-related mental tasks from each other. This study empirically demonstrates the benefits of heuristic feature selection methods for EEG-based classification of mental tasks. In particular, it is shown that the classifier performance improves for all the considered subjects with only a small proportion of features. Thus, the use of just those relevant features increases the efficiency of the brain interfaces and, most importantly, enables a greater level of adaptation of the personal BCI to the individual user.
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Received: 15 January 2001 / Accepted in revised form: 19 July 2001
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Millán, J., Franzé, M., Mouriño, J. et al. Relevant EEG features for the classification of spontaneous motor-related tasks. Biol Cybern 86, 89–95 (2002). https://doi.org/10.1007/s004220100282
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DOI: https://doi.org/10.1007/s004220100282