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A Scenario-Centred Approach to Emotion Profiling Based on EEG Signal Processing

  • Angelica Reyes-MunozEmail author
  • Genaro Rebolledo
  • Victor Callaghan
Conference paper
Part of the Lecture Notes in Electrical Engineering book series (LNEE, volume 532)

Abstract

This paper considers how the use of physiological sensing to measure human emotions will change the world in areas such as education, human–robot interfaces, job applications, interaction with friends, finding love and ultimately, how to live. For example, a particularly interesting question relates to people’s emotions in relation to delivering a “good” job performance, through introducing automated systems which seek to balance the tasks to be undertaken by machines versus those managed by people, thereby improving overall performance. In such cases, we would need to consider if the emotional behaviour that people display have important keys to building more successful and productive systems and whether removing emotions be counterproductive. Also, we consider whether grounding human–computer interfaces in the rich and complex emotional lives of people can lead to more effective and productive systems? This paper will examine such issues through the use of a scenario-centred design approach called science fiction prototyping, aiming to cast a little more light on the design of such emotion-based systems.

Keywords

Emotions EEG Signal processing Science fiction Creative writing Prototyping Scenario-based design 

Notes

Acknowledgements

This work was partially supported by the project “Flight operations of multiple RPAS” TRA2016-77012-R and the grant for international mobility of the Obra Social La Caixa 2016.

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Angelica Reyes-Munoz
    • 1
    Email author
  • Genaro Rebolledo
    • 2
  • Victor Callaghan
    • 3
  1. 1.Polytechnic University of CataloniaBarcelonaSpain
  2. 2.University of VeracruzXalapaMexico
  3. 3.University of EssexColchesterUK

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