面向语音情感识别的情感表达时间过程分层建模

Chung-Hsien Wu, Wei-Bin Liang, Kuan-Chun Cheng, Jen-Chun Lin
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引用次数: 8

摘要

提出了一种面向语音情感识别的情感表达时间过程分层建模方法。在该方法中,采用一种分割算法将输入话语分层划分为三个层次的时间单元,包括基于低级描述符(low-level descriptor, LLDs)的子话语水平、基于情感轮廓(emotion profile, EP)的子话语水平和话语水平。基于三个层次单元,构建了一个面向情感的层次结构来描述话语中的时间情感表达。提出了一种层次关联模型,融合相应情绪识别器的三层输出,并进一步建立它们之间的关联模型,以确定话语的情绪状态。利用EMO-DB语料库对语音情感识别性能进行评价。实验结果表明,该方法考虑了情绪表达的时间过程,为提高语音情绪识别性能提供了潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical modeling of temporal course in emotional expression for speech emotion recognition
This paper presents an approach to hierarchical modeling of temporal course in emotional expression for speech emotion recognition. In the proposed approach, a segmentation algorithm is employed to hierarchically chunk an input utterance into three-level temporal units, including low-level descriptors (LLDs)-based sub-utterance level, emotion profile (EP)-based sub-utterance level and utterance level. An emotion-oriented hierarchical structure is constructed based on the three-level units to describe the temporal emotion expression in an utterance. A hierarchical correlation model is also proposed to fuse the three-level outputs from the corresponding emotion recognizers and further model the correlation among them to determine the emotional state of the utterance. The EMO-DB corpus was used to evaluate the performance on speech emotion recognition. Experimental results show that the proposed method considering the temporal course in emotional expression provides the potential to improve the speech emotion recognition performance.
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