Back to Search Start Over

ChallengeDetect: Investigating the Potential of Detecting In-Game Challenge Experience from Physiological Measures

Authors :
Peng, Xiaolan
Xie, Xurong
Huang, Jin
Jiang, Chutian
Wang, Haonian
Denisova, Alena
Chen, Hui
Tian, Feng
Wang, Hongan
Peng, Xiaolan
Xie, Xurong
Huang, Jin
Jiang, Chutian
Wang, Haonian
Denisova, Alena
Chen, Hui
Tian, Feng
Wang, Hongan
Publication Year :
2023

Abstract

Challenge is the core element of digital games. The wide spectrum of physical, cognitive, and emotional challenge experiences provided by modern digital games can be evaluated subjectively using a questionnaire, the CORGIS, which allows for a post hoc evaluation of the overall experience that occurred during game play. Measuring this experience dynamically and objectively, however, would allow for a more holistic view of the moment-to-moment experiences of players. This study, therefore, explored the potential of detecting perceived challenge from physiological signals. For this, we collected physiological responses from 32 players who engaged in three typical game scenarios. Using perceived challenge ratings from players and extracted physiological features, we applied multiple machine learning methods and metrics to detect challenge experiences. Results show that most methods achieved a detection accuracy of around 80%. We discuss in-game challenge perception, challenge-related physiological indicators and AI-supported challenge detection to inform future work on challenge evaluation.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1422561909
Document Type :
Electronic Resource