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Emotion Classification in Children's Speech Using Fusion of Acoustic and Linguistic Features

机译:使用声学和语言特征融合儿童言论的情感分类

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This paper describes a system to detect angry vs. non-angry utterances of children who are engaged in dialog with an Aibo robot dog. The system was submitted to the Interspeech2009 Emotion Challenge evaluation. The speech data consist of short utterances of the children's speech, and the proposed system is designed to detect anger in each given chunk. Frame-based cepstral features, prosodic and acoustic features as well as glottal excitation features are extracted automatically, reduced in dimensionality and classified by means of an artificial neural network and a support vector machine. An automatic speech recognizer transcribes the words in an utterance and yields a separate classification based on the degree of emotional salience of the words. Late fusion is applied to make a final decision on anger vs. non-anger of the utterance. Preliminary results show 75.9% unweighted average recall on the training data and 67.6% on the test set.
机译:本文介绍了一种检测愤怒与与AIBO机器人狗一起参与对话的儿童的非愤怒话语的系统。该系统已提交给Interspeech2009情感挑战评估。语音数据包括儿童语音的短语,并且所提出的系统旨在检测每个给定块的愤怒。基于帧的抗痉挛特征,韵律和声学特征以及引物激励特征自动提取,减少维度,并通过人工神经网络和支持向量机进行分类。自动语音识别器在话语中透过单词,并基于单词的情绪显着程度产生单独的分类。晚期融合适用于对愤怒进行最终决定,对话的非愤怒。初步结果显示培训数据上的75.9%的平均召回,测试集67.6%。

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