Physiological State Can Help Predict the Perceived Emotion of Music: Evidence from ECG and EDA Signals

Liang Xu, Jie Wang, Xin Wen, Zaoyi Sun, Rui Sun, Liuchang Xu, Xiuying Qian
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引用次数: 2

Abstract

As the soul of music, emotion information is widely used in music retrieval and recommendation systems because the pursuit of emotional experience is the main motivation for music listening. In the field of music emotion recognition, computer scientists investigated computation models to automatically detect the perceived emotion of music, but this method ignores the differences between listeners. To provide users with the most accurate music emotion information, this study investigated the effects of physiological features on personalized music emotion recognition (PMER) models, which can automatically identify an individual’s perceived emotion of music. Applying machine learning methods, we formed relations among audio features, physiological features, and music emotions. First, computational modeling analysis shows that physiological features extracted from electrocardiogram and electro-dermal activity signals can predict the perception of music emotion for some individuals. Second, we compared the performance of physiological feature-based perception and feeling models and observed substantial individual differences. In addition, we found that the performance of the perception model and the feeling model is related in predicting happy, relaxed, and sad emotions. Finally, by adding physiological features to the audio-based PMER model, the prediction effect of some individuals was improved. Our work investigated the relationship between physiological state and perceived emotion of music, constructed models with practical value, and provided a reference for the optimization of PMER systems.
生理状态可以帮助预测音乐的感知情绪:来自ECG和EDA信号的证据
情感信息作为音乐的灵魂,在音乐检索和推荐系统中得到了广泛的应用,因为情感体验的追求是人们听音乐的主要动机。在音乐情感识别领域,计算机科学家研究了自动检测音乐感知情感的计算模型,但这种方法忽略了听众之间的差异。为了给用户提供最准确的音乐情绪信息,本研究探讨了生理特征对个性化音乐情绪识别(PMER)模型的影响,该模型能够自动识别个人对音乐的感知情绪。我们运用机器学习的方法,形成了音频特征、生理特征和音乐情感之间的关系。首先,计算建模分析表明,从心电图和皮肤电活动信号中提取的生理特征可以预测某些个体对音乐情感的感知。其次,我们比较了基于生理特征的感知和感觉模型的表现,并观察到实质性的个体差异。此外,我们发现知觉模型和感觉模型的表现在预测快乐、放松和悲伤情绪方面是相关的。最后,通过在基于音频的PMER模型中加入生理特征,提高部分个体的预测效果。研究生理状态与音乐感知情绪的关系,构建具有实用价值的模型,为PMER系统的优化提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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