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Emotion Recognition from Speech using Representation Learning in Extreme Learning Machines

机译:在极端学习机中使用代表学习的言语感慨认识

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We propose the use of an Extreme Learning Machine initialised as auto-encoder for emotion recognition from speech. This method is evaluated on three different speech corpora, namely EMO-DB, eNTERFACE and SmartKom. We compare our approach against state-of-the-art recognition rates achieved by Support Vector Machines (SVMs) and a deep learning approach based on Generalised Discriminant Analysis (GerDA). We could improve the recognition rate compared to SVMs by 3%-14% on all three corpora and those compared to GerDA by 8%-13% on two of the three corpora.
机译:我们建议使用作为自动编码器初始化的极端学习机,以便言语识别。此方法在三个不同的语音上进行评估,即Emo-DB,Enterface和SmartKom。我们比较我们对支持向量机(SVM)(SVM)实现的最先进识别率的方法以及基于广义判别分析(GERDA)的深度学习方法。与SVMS相比,我们可以提高识别率3%-14%,而在三大公司中的两组上的GERDA与GERDA相比的增长率为8%-13%。

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