首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing;ICASSP 2009 >Speech emotion recognition via a max-margin framework incorporating a loss function based on the Watson and Tellegen's emotion model
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Speech emotion recognition via a max-margin framework incorporating a loss function based on the Watson and Tellegen's emotion model

机译:通过最大余量框架的语音情感识别,该框架结合了基于Watson和Tellegen情感模型的损失函数

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This paper considers a method for speech emotion recognition by a max-margin framework incorporating a loss function based on a well-known model called theWatson and Tellegen's emotion model. Each emotion is modeled by a single-state hidden Markov model (HMM) that is trained by maximizing the minimum separation margin between emotions, and the margin is scaled by a loss function. The framework is optimized by the semi-definite programming. Experiments were performed to evaluate the framework using the Berlin database of emotional speech. The framework performed better than other conventional training criteria for HMM such as maximum likelihood estimation and maximum mutual information estimation.
机译:本文考虑了一种基于损失函数的最大余量框架进行语音情感识别的方法,该框架基于著名的沃森和特勒根情感模型。每个情感都由单状态隐藏马尔可夫模型(HMM)建模,该模型通过最大化情感之间的最小分离余量来训练,并且该余量由损失函数定标。该框架通过半定编程进行了优化。使用柏林情感言论数据库进行了实验,以评估框架。该框架比HMM的其他常规训练标准(例如最大似然估计和最大互信息估计)表现更好。

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