A brain computer interface control system based on cloud platform for Minitype UAVs

With the development of science and technology, unmanned aerial vehicles(UAVs) are widely used in various industries, and the research for the Minitype UAVs have been widely studied. This paper introduces a design scheme that the brain controls UAVs system based on cloud platform. Brainwaves of the subject's occipital lobe were collected by visual evoked, which transmits to the mobile phone via Bluetooth acquisition, data processing, and a fixed encoding format is used to control the flight of the aircraft, Environmental monitoring platform is loaded simultaneously, Users can remotely observe the flight status, environmental conditions and so on by the browser. The scheme has a good prospect of application.

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