With the increasing demands of emotion comprehension and regulation in our daily life, a customized music-based emotion regulation system is introduced by employing current EEG information and song features, which predicts users' emotion variation in the valence-arousal model before recommending music. The work shows that: (1) a novel music-based emotion regulation system with a commercial EEG device is designed without employing deterministic emotion recognition models for daily usage; (2) the system considers users' variant emotions towards the same song, and by which calculate user's emotion instability and it is in accordance with Big Five Personality Test; (3) the system supports different emotion regulation styles with users' designation of desired emotion variation, and achieves an accuracy of over $0.85$ with 2-seconds EEG data; (4) people feel easier to report their emotion variation comparing with absolute emotional states, and would accept a more delicate music recommendation system for emotion regulation according to the questionnaire.
翻译:随着日常生活对情感理解和调控的需求不断增加,通过使用当前的 EEG 信息和歌曲功能引入了定制的基于音乐的情感调控系统,在推荐音乐之前预测用户在价值-振奋模型中的情感变化。工作表明:(1) 设计了新型的基于音乐的情感调控系统,并配有商业的 EEG 设备,而没有在日常使用中使用确定情感识别模型;(2) 该系统考虑用户对同一首歌的变异情感,计算用户情感不稳定性,并符合五大个个性测试;(3) 该系统支持不同情感调控风格,用户指定了所需的情感变异,实现了精确度超过0.85亿美元,提供了2秒 EEG数据;(4) 与绝对情绪状态相比,人们更容易报告他们的情感变化,并将接受一个更微妙的音乐建议系统,以便根据问卷进行情感调控。