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Hierarchical Component-attention Based Speaker Turn Embedding for Emotion Recognition

机译:基于分层组件注意的说话人转身嵌入用于情感识别

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Traditional discrete-time Speech Emotion Recognition (SER) modelling techniques typically assume that an entire speaker chunk or turn is indicative of its corresponding label. An alternative approach is to assume emotional saliency varies over the course of a speaker turn and use modelling techniques capable of identifying and utilising the most emotionally salient segments, such as those with higher emotional intensity. This strategy has the potential to improve the accuracy of SER systems. Towards this goal, we developed a novel hierarchical recurrent neural network model that produces turn level embeddings for SER. Specifically, we apply two levels of attention to learn to identify salient emotional words in a turn as well as the more informative frames within these words. In a set of experiments on the Interactive Emotional Dyadic Motion Capture (IEMOCAP) database, we demonstrate that component-attention is more effective within our hierarchical framework than both standard soft-attention and conventional local-attention. Our best network, a hierarchical component-attention network with an attention scope of seven, achieved an Unweighted Average Recall (UAR) of 65.0 % and a Weighted Average Recall (WAR) of 66.1 %, outperforming other baseline attention approaches on the IEMOCAP database.
机译:传统的离散时间语音情感识别(SER)建模技术通常假定整个扬声器块或转弯指示其相应的标签。另一种方法是假设情绪显着性在说话者转身过程中发生变化,并使用能够识别和利用情绪上最显着的部分(例如具有较高情绪强度的部分)的建模技术。该策略具有提高SER系统精度的潜力。为了实现这一目标,我们开发了一种新颖的分层递归神经网络模型,该模型为SER生成转弯水平嵌入。具体而言,我们将注意力集中在两个层次上,以学习识别轮流使用的重要情感单词以及这些单词中的信息量更大的框架。在交互式情感和弦运动捕捉(IEMOCAP)数据库上进行的一组实验中,我们证明了在我们的层次结构框架中,组件注意比标准的软注意和常规的局部注意更有效。我们最好的网络是关注范围为7的层次化组件注意网络,实现了65.0%的未加权平均召回率(UAR)和66.1%的加权平均召回率(WAR),优于IEMOCAP数据库上的其他基线注意事项方法。

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