首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >A GAUSSIAN MIXTURE REGRESSION APPROACH TOWARD MODELING THE AFFECTIVE DYNAMICS BETWEEN ACOUSTICALLY-DERIVED VOCAL AROUSAL SCORE (VC-AS) AND INTERNAL BRAIN fMRI BOLD SIGNAL RESPONSE
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A GAUSSIAN MIXTURE REGRESSION APPROACH TOWARD MODELING THE AFFECTIVE DYNAMICS BETWEEN ACOUSTICALLY-DERIVED VOCAL AROUSAL SCORE (VC-AS) AND INTERNAL BRAIN fMRI BOLD SIGNAL RESPONSE

机译:一种高斯混合回归方法,朝着声学衍生的声学唤起分数(VC-AS)和内部大脑FMRI粗体信号响应之间的情感动态模拟情感动态

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Understanding the underlying neuro-perceptual mechanism of humans' ability to decode emotional content in vocal signal is an important research direction. In this paper, we describe our initial research effort into quantitatively modeling the joint dynamics between measures of vocal arousal and blood oxygen level-dependent (BOLD) signals. We utilize Gaussian mixture regression approach to predict the invoked BOLD signal response as the subject is exposed to various levels of continuous vocal arousal stimuli. The proposed framework is built upon measures of vocal arousal from acoustically-derived features, and we obtain a reasonable predictive correlation to the true BOLD signal for the seven emotionally-related brain regions. Further experiment also demonstrates that there exists a more explanatory power of using signal-derived arousal measure to the internal BOLD signal responses compared to using human annotated arousal in the construction of Gaussian mixture regression modeling.
机译:了解人类解码声音信号中情绪内容能力的潜在神经感知机制是重要的研究方向。在本文中,我们将我们的初步研究努力定量地建模了声带唤醒和血氧水平依赖性(粗体)信号的措施之间的联合动态。我们利用高斯混合回归方法来预测调用的粗体信号响应,因为受试者暴露于各种级别的连续声毒唤起刺激。所提出的框架是根据声学衍生特征的声音唤醒的测量构建的,并且我们获得了与七个情绪相关的大脑区域的真正粗体信号的合理预测相关性。进一步的实验还证明,与在高斯混合回归建模建造中使用人类注释的唤醒相比,使用人体注释唤醒相比,使用信号衍生的唤醒度量来存在更易于解释的力。

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