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Emulating human cognitive approach for speech emotion using MLP and GenSofNN

机译:使用MLP和Gensofnn模拟语音情绪的人类认知方法

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Speech emotion recognition field is growing due to the increasing needs for effective human-computer interaction. There are many approaches in term of features extraction methods coupled with classifiers to obtain optimum performance. However, none can claim superiority as it is very data-dependant and domain-oriented. In this paper, the appropriate sets of features are investigated using segregation method and feature ranking algorithm of Automatic Relevance Determination (ARD) [1]. Two popular classifiers of Multi Layer Perceptron (MLP) [2] and Generic Self-organizing Fuzzy Neural Network (GenSoFNN) [3] are employed to discriminate emotions in the data corpus used in the FAU Aibo Emotion Corpus [4, 5]. The experimental results shows that Mel Frequency Cepstral Coefficient (MFCC) [6] features are able to yield comparable accuracy with baseline result [5]. In addition, it is observed that MLP can perform slightly better than GenSoFNN. Hence, such system envisages that appropriate combination of features extracted with good classifiers is fundamental for the good speech emotion recognition system.
机译:由于需求有效的人机互动需求的增加,语音情感识别领域正在增长。在具有分类器的特征提取方法的特征提取方法中存在许多方法,以获得最佳性能。但是,没有人可以声称优势,因为它是非常数据依赖和面向域的。在本文中,使用分离方法研究了适当的特征,并采用自动相关性确定(ARD)[1]的特征排序算法。多层Perceptron(MLP)[2]和通用自组织模糊神经网络(Gensofnn)[3]的两种流行的分类器被用来区分FAU Aibo情感语料库中使用的数据语料库中的情绪[4,5]。实验结果表明,MEL频率谱系码(MFCC)[6]特征能够产生与基线结果的可比精度[5]。另外,观察到MLP可以比Gensofnn更好地执行。因此,这种系统设想了用良好分类器提取的特征的适当组合是良好语音情绪识别系统的基础。

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