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首页> 外文期刊>International Journal of Engineering and Technology >Speech Emotion Recognition Using Residual Phase and MFCC Features
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Speech Emotion Recognition Using Residual Phase and MFCC Features

机译:语音情感识别使用残差阶段和MFCC功能

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The main objective of this research is to develop a speech emotion recognition system using residual phase and MFCC features with autoassociative neural network (AANN). The speech emotion recognition system classifies the speech emotion into predefined categories such as anger, fear, happy, neutral or sad. The proposed technique for speech emotion recognition (SER) has two phases : Feature extraction, and Classification. Initially, speech signal is given to feature extraction phase to extract residual phase and MFCC features. Based on the feature vectors extracted from the training data, Autoassociative neural network (AANN) are trained to classify the emotions into anger, fear, happy, neutral or sad. Using residual phase and MFCC features the performance of the proposed technique is evaluated in terms of FAR and FRR. The experimental results show that the residual phase gives an equal error rate (EER) of 41.0%, and the system using the MFCC features gives an EER of 20.0%. By combining the both the residual phase and the MFCC features at the matching score level, an EER of 16.0% is obtained.
机译:本研究的主要目标是使用具有自动化神经网络(AANN)的残差相和MFCC功能来开发语音情感识别系统。语音情感识别系统将语音情绪分类为预定义的类别,例如愤怒,恐惧,快乐,中立或悲伤。语音情感识别(SER)的提议技术有两个阶段:特征提取和分类。最初,给出语音信号的特征提取阶段以提取残留相和MFCC特征。基于从训练数据中提取的特征向量,培训自动关联神经网络(AANN),以将情绪分类为愤怒,恐惧,快乐,中立或悲伤。使用残留阶段和MFCC特征在远程和FRR方面评估所提出的技术的性能。实验结果表明,残留相管为41.0%的相等误差率(eer),使用MFCC特征的系统提供了20.0%的eer。通过在匹配得分水平处结合剩余相和MFCC特征,获得16.0%的eer。

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