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Using Generative Art from Brain Signals for Enabling Self Expression in the Differently Abled

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Listed:
  • Sharma, Anjali

    (LIME Lab Low Proft LLC)

  • Singh, Param Vir

Abstract

The ability to express one’s emotions is a fundamental human need. However, people with disabilities may be unable to partake in even this most fundamental of human needs. This can lead to bottling up of emotions and adverse mental health effects. Recent developments in neuroscience and brain-computer-interfaces are now making it possible to detect emotional states from brain signals. In this study, we use these advances in emotion detection techniques to design and develop a system for enabling emotional expression by the disabled using abstract art generated from EEG brain signals.

Suggested Citation

  • Sharma, Anjali & Singh, Param Vir, 2022. "Using Generative Art from Brain Signals for Enabling Self Expression in the Differently Abled," OSF Preprints 72k9j, Center for Open Science.
  • Handle: RePEc:osf:osfxxx:72k9j
    DOI: 10.31219/osf.io/72k9j
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