Brainsourcing for Affective Attention Estimation
Description of the granted funding
The project aims for a scientific breakthrough by proposing the first-of-its-kind affective visual attention annotation via brainsourcing, i.e. crowdsourced BCI signal acquisition. First, our approach will allow accurate estimation of user preferences, attention allocation, and critically the affective component of attention, directly measured from the natural and implicit brain potentials evoked in response to users experiencing digital content. Then, we will utilize the resulting data in a crowdsourcing setting to reveal how multiple users react to different stimuli and how their attention and affective responses are distributed. These collective responses will produce unified, consistent measures as a result.
Show moreStarting year
2022
End year
2025
Granted funding
Funder
Research Council of Finland
Funding instrument
International joint call
Other information
Funding decision number
350323
Fields of science
Computer and information sciences
Research fields
Ohjelmistotekniikka, käyttöjärjestelmät, ihminen-kone -vuorovaikutus
Identified topics
artificial intelligence, machine learning