首页> 外文会议>Bioinformatics and Biomedical Engineering , 2009. ICBBE 2009 >Emotion Recognition in Speech of Parents of Depressed Adolescents
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Emotion Recognition in Speech of Parents of Depressed Adolescents

机译:抑郁少年父母言语中的情感识别

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This paper investigates automatic affect classification in spontaneous speech within normal and clinical family environments. The data base used in this study comprised speech recordings of parents of depressed adolescents (19 fathers and 20 mothers) and parents of non-depressed adolescents (25 fathers and 7 mothers). The speech data were recorded during natural parent-child conversations. Five emotional classes were considered: neutral, angry, anxious, dysphoric, and happy. Four different combinations of features (set A, B, C, and D) derived from the Teager energy operator (TEO) and two different classifiers: probabilistic neural network (PNN) and Gaussian mixture model (GMM) were tested and compared. The feature extraction process was combined with an optimal feature selection algorithm based on the mutual information criteria. The GMM classifier provided consistently higher correct classification rates (49.6% to 62.0%) compared with the PNN classifier (31.6% to 42.7%). Set C/GMM was found to be the best performing feature/classifier combination. In all cases, the classification rates for parents of depressed adolescents were higher than for parents of non-depressed adolescents. Similarly, the classification rates for mothers were higher than for fathers. The results appear to suggest that parents of depressed adolescents express their emotions with higher degree of discrimination between different types of affect than parents of non-depressed adolescents. Similarly, mothers appear to express their affect with higher degree of discrimination between different types of affect than fathers.
机译:本文研究正常和临床家庭环境中自发性言语的自动情感分类。本研究使用的数据库包括抑郁青少年的父母(19位父亲和20位母亲)和非抑郁青少年的父母(25位父亲和7位母亲)的语音记录。语音数据是在自然的亲子对话中记录的。考虑了五个情感类别:中立,愤怒,焦虑,烦躁不安和快乐。测试并比较了从Teager能量算子(TEO)和两个不同的分类器得出的特征的四种不同组合(集合A,B,C和D):概率神经网络(PNN)和高斯混合模型(GMM)。特征提取过程与基于互信息标准的最佳特征选择算法结合在一起。与PNN分类器(31.6%至42.7%)相比,GMM分类器始终提供更高的正确分类率(49.6%至62.0%)。发现Set C / GMM是性能最佳的分类器/分类器组合。在所有情况下,抑郁青少年的父母的分类率均高于非抑郁青少年的父母。同样,母亲的分类率高于父亲。结果似乎表明,与未抑郁的青少年父母相比,抑郁的青少年父母在情感表达上对不同类型的情感有较高的区分度。同样,母亲似乎在表达自己的情感时,会比父亲更能区分不同类型的情感。

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