Toward improving estimation accuracy of emotion dimensions in bilingual scenario based on three-layered model

Xingfeng Li, M. Akagi
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引用次数: 3

Abstract

This paper proposes a newly revised three-layered model to improve emotion dimensions (valence, activation) estimation for bilingual scenario, using knowledge of commonalities and differences of human perception among multiple languages. Most of previous systems on speech emotion recognition only worked in each mono-language. However, to construct a generalized emotion recognition system which be able to detect emotions for multiple languages, acoustic features selection and feature normalization among languages remained a topic. In this study, correlated features with emotion dimensions are selected to construct proposed model. To imitate emotion perception across languages, a novel normalization method is addressed by extracting direction and distance from neutral to other emotion in emotion dimensional space. Results show that the proposed system yields mean absolute error reduction rate of 46% and 34% for Japanese and German language respectively over previous system. The proposed system attains estimation performance more comparable to human evaluation on bilingual case.
基于三层模型的双语情景情感维度估计精度研究
本文提出了一种新的三层模型,利用多语言感知的共性和差异,改进了对双语情景情感维度(效价、激活)的估计。以往的语音情感识别系统大多只适用于单一语言。然而,为了构建一个能够检测多语言情感的广义情感识别系统,语言间的声学特征选择和特征归一化一直是一个研究课题。本研究选取与情绪维度相关的特征来构建模型。为了模拟跨语言的情感感知,提出了一种新的标准化方法,即在情感维度空间中提取中性情绪到其他情绪的方向和距离。结果表明,与之前的系统相比,该系统对日语和德语的平均绝对错误率分别为46%和34%。该系统在双语情况下的估计性能更接近人类评估。
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