Method for Evaluating the Number of Signal Sources and Application to Non-invasive Brain-computer Interface
- URL: http://arxiv.org/abs/2410.11844v1
- Date: Thu, 26 Sep 2024 09:03:42 GMT
- Title: Method for Evaluating the Number of Signal Sources and Application to Non-invasive Brain-computer Interface
- Authors: Alexandra Bernadotte, Victor Buchstaber,
- Abstract summary: This paper provides a brief introduction of the mathematical theory behind the time series unfolding method.
The algorithms presented serve as a valuable mathematical and analytical tool for analyzing data collected from brain-computer interfaces.
- Score: 49.1574468325115
- License:
- Abstract: This paper provides a brief introduction of the mathematical theory behind the time series unfolding method. The algorithms presented serve as a valuable mathematical and analytical tool for analyzing data collected from brain-computer interfaces. In our study, we implement a mathematical model based on polyharmonic signals to interpret the data from brain-computer interface sensors. The analysis of data coming to the brain-computer interface sensors is based on a mathematical model of the signal in the form of a polyharmonic signal. Our main focus is on addressing the problem of evaluating the number of sources, or active brain oscillators. The efficiency of our approach is demonstrated through analysis of data recorded from a non-invasive brain-computer interface developed by the author.
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