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A novel dual attention-based BLSTM with hybrid features in speech emotion recognition

机译:一种基于新的双重关注的BLSTM,语音情感识别中的混合特征

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摘要

Though the emotional state does not alter the content of language, it is a major determinant in human communication, because it provides much more positive feedback. The purpose of the speech emotion recognition is to automatically identify emotional or physiological state of a human being from their voice. In this paper, we propose a novel dual-level architecture, called dual attention-based bidirectional long short-term memory networks (dual attention-BLSTM) to recognize speech emotion. We also confirm that the recognition performance is better with different features as input than with only identical features in the dual-layer structure. Experiments on the IEMOCAP databases show the advantage of our proposed approach. The average recognition accuracy of our method is 70.29% in unweighted accuracy (UA) and the corresponding performance improvements are 2.89 compared to the best baseline methods. The results show that the architecture of our designed can better learn to distinguish features of the emotional information.
机译:虽然情绪状态不会改变语言的内容,但它是人类交流中的主要决定因素,因为它提供了更积极的反馈。语音情感识别的目的是自动识别从其声音的人类的情绪或生理状态。在本文中,我们提出了一种新的双层架构,称为双重关注的双向短期内记忆网络(双重关注BLSTM)来识别语音情绪。我们还确认识别性能与输入的不同功能更好,而不是在双层结构中的相同功能。 IEMocap数据库的实验显示了我们提出的方法的优势。我们方法的平均识别准确性为未加权精度(UA)的70.29%,与最佳基线方法相比,相应的性能改进是2.89。结果表明,我们设计的架构可以更好地学会区分情绪信息的特征。

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