价(化学)
脑电图
情感配价
计算机科学
人工智能
模式识别(心理学)
心理学
认知心理学
物理
认知
神经科学
量子力学
作者
Andrea Apicella,Pasquale Arpaïa,Giovanna Mastrati,Nicola Moccaldi
标识
DOI:10.1038/s41598-021-00812-7
摘要
Abstract A methodological contribution to a reproducible Measurement of Emotions for an EEG-based system is proposed. Emotional Valence detection is the suggested use case. Valence detection occurs along the interval scale theorized by the Circumplex Model of emotions. The binary choice, positive valence vs negative valence, represents a first step towards the adoption of a metric scale with a finer resolution. EEG signals were acquired through a 8-channel dry electrode cap. An implicit-more controlled EEG paradigm was employed to elicit emotional valence through the passive view of standardized visual stimuli (i.e., Oasis dataset) in 25 volunteers without depressive disorders. Results from the Self Assessment Manikin questionnaire confirmed the compatibility of the experimental sample with that of Oasis . Two different strategies for feature extraction were compared: (i) based on a-priory knowledge (i.e., Hemispheric Asymmetry Theories), and (ii) automated (i.e., a pipeline of a custom 12-band Filter Bank and Common Spatial Pattern). An average within-subject accuracy of 96.1 %, was obtained by a shallow Artificial Neural Network, while k -Nearest Neighbors allowed to obtain a cross-subject accuracy equal to 80.2%.
科研通智能强力驱动
Strongly Powered by AbleSci AI