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Affective Latent Representation of Acoustic and Lexical Features for Emotion Recognition

机译:情绪和词汇特征对情感识别的情感潜在表现

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摘要

In this paper, we propose a novel emotion recognition method based on the underlying emotional characteristics extracted from a conditional adversarial auto-encoder (CAAE), in which both acoustic and lexical features are used as inputs. The acoustic features are generated by calculating statistical functionals of low-level descriptors and by a deep neural network (DNN). These acoustic features are concatenated with three types of lexical features extracted from the text, which are a sparse representation, a distributed representation, and an affective lexicon-based dimensions. Two-dimensional latent representations similar to vectors in the valence-arousal space are obtained by a CAAE, which can be directly mapped into the emotional classes without the need for a sophisticated classifier. In contrast to the previous attempt to a CAAE using only acoustic features, the proposed approach could enhance the performance of the emotion recognition because combined acoustic and lexical features provide enough discriminant power. Experimental results on the Interactive Emotional Dyadic Motion Capture (IEMOCAP) corpus showed that our method outperformed the previously reported best results on the same corpus, achieving 76.72% in the unweighted average recall.
机译:在本文中,我们提出了一种新的情绪识别方法,该方法基于从条件对抗自动编码器(CAAE)中提取的潜在情绪特征,其中声学和词汇特征均用作输入。声学特征是通过计算低层描述符的统计函数和深度神经网络(DNN)生成的。这些声音特征与从文本中提取的三种类型的词汇特征连接在一起,它们是稀疏表示,分布式表示和基于情感词典的维度。通过CAAE获得类似于价-价空间中矢量的二维潜在表示,可以将其直接映射到情感类别中,而无需复杂的分类器。与以前仅使用声音特征进行CAAE的尝试相比,由于声音和词汇特征的组合提供了足够的判别能力,因此所提出的方法可以增强情感识别的性能。交互式情感和弦运动捕捉(IEMOCAP)语料库的实验结果表明,我们的方法优于以前报道的相同语料库的最佳结果,未加权平均召回率达到76.72%。

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