EOG signals: a review of signal processing and applications
DOI:
https://doi.org/10.61799/2216-0388.1206Keywords:
data acquisition, disability, electrodes, electrooculography, signal processingAbstract
This paper presents a review on electrooculography signal processing and applications. First, the general framework on the use of the aforementioned signals is disclosed. State-of-the-art research on systems based on electrooculography signals is described later. The objective of this review is to detect the advances of systems based on these signals for future technological developments.
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