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Emotion Recognition in Speech with Latent Discriminative Representations Learning

机译:潜在歧视性陈述学习的情感认知

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摘要

Despite significant recent advances in the field of affective computing, learning meaningful representations for emotion recognition remains quite challenging. In this paper, we propose a novel feature learning approach named Latent Discriminative Representation (LDR) learning for speech emotion recognition. Unlike most existing hand-crafted features designed for specific applications or features learnt by a standard neural network, the proposed learning method incorporates an additional training objective in order to learn better representations of the task of interest. To this end, we group the training samples into sets of triplets, satisfying that the second member in each triplet comes from the same class as the first and that the third member comes from a different class than the first. In the training process, we maximise the distance of the samples from different classes in the latent representation space, while we minimise the distance for samples from the same class. To evaluate the effectiveness of LDR, we perform extensive experiments on the widely used database IEMOCAP, and find that the LDR improves performance over the standard neural network training procedure. (C) 2018 The Author(s). Published by S. Hirzel Verlag . EAA.
机译:尽管最近有近期的情感计算领域进展,但学习情感认可的有意义表示仍然非常具有挑战性。在本文中,我们提出了一种名为潜在歧视性表示(LDR)学习的新颖特征学习方法,用于语音情感识别。与专为标准神经网络学到的特定应用或特征设计的大多数现有的手工制作特征不同,所提出的学习方法包含额外的培训目标,以便学习更好的兴趣任务的代表性。为此,我们将训练样本分组成三联网集,满足每个三联网中的第二构件来自与第一构件的相同类,并且第三构件来自不同的类。在培训过程中,我们在潜在表示空间中最大化样本从不同类别的距离,而我们最小化来自同一类的样本的距离。为了评估LDR的有效性,我们对广泛使用的数据库IEMocap进行了广泛的实验,并发现LDR提高了对标准神经网络培训程序的性能。 (c)2018提交人。由S. Hirzel Verlag发布。 eaa。

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    Univ Augsburg ZDB Chair Embedded Intelligence Hlth Care &

    Wellb Augsburg Germany;

    Imperial Coll London Grp Language Audio &

    Mus London England;

    Univ Augsburg ZDB Chair Embedded Intelligence Hlth Care &

    Wellb Augsburg Germany;

    Univ Augsburg ZDB Chair Embedded Intelligence Hlth Care &

    Wellb Augsburg Germany;

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  • 正文语种 eng
  • 中图分类 声学;
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