Interface Cérebro-Computador Não-Invasiva: Desafios Sócio-Técnicos e Oportunidades para a Computação

Resumo


Este artigo descreve e discute desafios de hardware e software de sistemas de Interface Cérebro-Computador (ICC) numa perspectiva sócio-técnica, bem como, oportunidades de Pesquisa, Desenvolvimento & Inovação (PD&I) para a Computação relacionadas à ICC não-invasiva. Para isso, os desafios são organizados em diferentes níveis do sistema, permitindo identificar oportunidades de pesquisa e como diversas subáreas da Computação podem contribuir para o avanço dessas tecnologias e para a ampliação de suas aplicações em contextos clínicos, assistivos e interativos.

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Publicado
19/07/2026
VASILJEVIC, Gabriel Alves Mendes; MIRANDA, Leonardo Cunha de. Interface Cérebro-Computador Não-Invasiva: Desafios Sócio-Técnicos e Oportunidades para a Computação. In: SEMINÁRIO INTEGRADO DE SOFTWARE E HARDWARE (SEMISH), 53. , 2026, Gramado/RS. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2026 . p. 410-421. ISSN 2595-6205. DOI: https://doi.org/10.5753/semish.2026.23083.