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Affective structure modeling of speech using probabilistic context free grammar for emotion recognition

机译:使用概率背景自由语法进行情感识别的情感结构建模

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A complete emotional expression typically contains a complex temporal course in a natural conversation. Related research on utterance-level and segment-level processing lacks understanding of the underlying structure of emotional speech. In this study, a hierarchical affective structure of an emotional utterance characterized by the probabilistic context free grammars (PCFGs) is proposed for emotion modeling. SVM-based emotion profiles are obtained and employed to segment the utterance into emotionally consistent segments. Vector quantization is applied to convert the emotion profile of each segment into codewords. A binary tree in which each node represents a codeword is constructed to characterize the affective structure of the utterance modeled by PCFG. Given an input utterance, the output emotion is determined according to the PCFG-based emotion model with the highest likelihood of the speech segments along with the score of the affective structure. For evaluation, the EMO-DB database and its expansion in utterance length were conducted. Experimental results show that the proposed method achieved emotion recognition accuracy of 87.22% for long utterances and outperformed the SVM-based method.
机译:完整的情绪表达通常包含自然对话中的复杂时间课程。对话语水平和分部水平处理的相关研究缺乏对情绪言论的潜在结构的理解。在这项研究中,提出了一种由概率性语境自由语法(PCFG)的情感话语的分层情感结构,用于情感建模。获得了基于SVM的情感概况,并用于将话语分段为情绪一致的段。矢量量化应用于将每个段的情绪配置文件转换为码字。构造每个节点表示码字的二进制树以表征由PCFG建模的话语的情感结构。给定输入话语,根据基于PCFG的情感模型确定输出情绪,具有语音段的最高可能性以及情感结构的得分。对于评估,进行EMO-DB数据库及其在话语长度中的扩展。实验结果表明,拟议的方法对于长的话语而实现了87.22%的情绪识别精度,并且优于基于SVM的方法。

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