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AUTOMATIC EMOTION RECOGNITION IN SPEECH SIGNAL USING TEAGER ENERGY OPERATOR AND MFCC FEATURES

机译:利用TEAGER能源运营商和MFCC功能在语音信号中自动识别情绪

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A new approach to feature extraction for the automatic emotion classification in speech signals was described and tested in this work.The method was based on the Teager energy operator combined with mel-frequency cepstral coefficients (TEO-MFCC).The proposed TEO-MFCC method was tested using speech recordings collected from the Speech Under Simulated and Actual Stress (SUSAS) database with three simulated emotions (angry, neutral and soft).The Gaussian mixture model (GMM) was used as classifier. The average classification accuracy for three emotions reached up to 73%, much higher than purely guess (33% for three emotions).Especially, the system showed good performance on the classification of emotion "angry".The correct recognition rate for emotion "angry" was 83%, while it was only 59% for emotion "neutral" and 77% for emotion "soft".
机译:本文描述并测试了一种用于语音信号自动情感分类的特征提取新方法,该方法基于Teager能量算子与mel频率倒谱系数(TEO-MFCC)相结合。使用从模拟和实际压力语音(SUSAS)数据库中收集的语音记录对三种模拟情绪(愤怒,中性和柔和)进行了测试。三种情绪的平均分类准确率高达73%,远高于单纯猜测(三种情绪的33%)。特别是,该系统对情绪“愤怒”的分类表现出良好的性能。情绪“愤怒”的正确识别率”的比例为83%,“中性”情感的比例仅为59%,“柔和”情感的比例仅为77%。

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