首页> 外文期刊>Biomedical signal processing and control >Influence of music liking on EEG based emotion recognition
【24h】

Influence of music liking on EEG based emotion recognition

机译:音乐喜好对基于脑电情绪识别的影响

获取原文
获取原文并翻译 | 示例

摘要

In studies of emotions, music is usually used to induce the emotions that are measured on the arousal-valence/arousal-valence-dominance scales. However, the influence of music liking (that depends on individual preference and appraisal) on the induced emotions is often ignored. This work presents a novel study on the influence of liking on arousal, valence, and dominance using a signal processing and pattern recognition framework. Emotion recognition was performed using a feature-level fusion of three features together with feature selection method and a classifier. The features were derived from wavelet decomposition of EEG, pairwise functional connectivity, and graph-theoretic measures that reflect characteristics of an individual electrode, pair of electrodes, and topological properties of the brain networks, respectively. Here, classification is done between the high/low categories of each of the arousal, valence, and dominance scales under three different cases of music liking. The study shows that the classification performances of arousal, valence, and dominance were 22.50%, 14.87%, and 19.44% above the empirical chance-level, respectively. The fusion framework gave up to 5% relative improvement over individual features. The study indicates that liking influences classification performance and also the temporal dynamics of emotional experience across these scales. We observe an inverted U relationship between the level of liking and arousal and dominance classification performance. We also analyzed the feature and electrode usage and specific aspects of brain activity at different levels of liking. This reveals the importance of high-frequency bands and hemispheric features in emotion recognition.
机译:在对情绪的研究中,音乐通常用于诱导唤起唤起型/唤醒 - 价级尺度上测量的情绪。然而,音乐喜欢的影响(这取决于个人偏好和评估)往往忽略了诱导的情绪。这项工作提出了一种关于利用信号处理和模式识别框架对唤醒,价值和优势的影响的新颖研究。使用三个特征的特征级融合与特征选择方法和分类器一起进行情感识别。该特征源自EEG的小波分解,成对功能连接和图形 - 理论措施,以及分别反映脑网络的单个电极,电极对和拓扑特性的特性。在这里,在三个不同的音乐喜好案例下的每个唤醒,价值和优势尺度的高/低类别之间进行分类。该研究表明,唤醒,价值和优势的分类性能分别为22.50%,14.87%和19.44%,高于经验机会级。融合框架对个体特征相对改善了5%。该研究表明,喜欢影响分类性能以及这些尺度的情绪体验的时间动态。我们在喜欢和唤醒水平与占主导地位分类绩效之间观察倒立的U关系。我们还分析了不同级别的脑活动的特征和电极使用以及特定方面。这揭示了高频带和半球特征在情感上的重要性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号