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Deep Learning of Attitude in Children’s Emotional Speech

机译:深度学习儿童情感言语中的态度

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Attitude comprises a paralinguistic information associated to affective states without the explicit connection to either positive nor negative valence. As such, its automatic recognition plays an integral role in all speech-based systems. This work focuses on classifying attitude in children’s emotional speech into four classes, i.e. confident, uncertain, apathetic, and enthusiastic. We present a flexible classification scheme based on a directed acyclic graph able to easily incorporate heterogeneous feature sets and classifiers according to the necessities of each task. More precisely, this work employs features coming from both frequency and wavelet domains combined with convolutional and recurrent neural networks. The obtained results confirm the efficacy of such a classification graph outperforming traditional neural network schemes.
机译:态度包括与情感状态相关的副语言信息,而与正价或负价没有明确的联系。这样,它的自动识别在所有基于语音的系统中都扮演着不可或缺的角色。这项工作的重点是将儿童情感言语中的态度分为四个类别,即自信,不确定,冷漠和热情。我们提出了一种基于有向无环图的灵活分类方案,该方案能够根据每个任务的需要轻松地合并异构特征集和分类器。更准确地说,这项工作采用了来自频域和小波域的特征,并结合了卷积和递归神经网络。获得的结果证实了这种分类图优于传统神经网络方案的功效。

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