首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >UNSUPERVISED LEARNING APPROACH TO FEATURE ANALYSIS FOR AUTOMATIC SPEECH EMOTION RECOGNITION
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UNSUPERVISED LEARNING APPROACH TO FEATURE ANALYSIS FOR AUTOMATIC SPEECH EMOTION RECOGNITION

机译:自动语音情感识别特征分析的无监督学习方法

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The scarcity of emotional speech data is a bottleneck of developing automatic speech emotion recognition (ASER) systems. One way to alleviate this issue is to use unsupervised feature learning techniques to learn features from the widely available general speech and use these features to train emotion classifiers. These unsupervised methods, such as denoising autoencoder (DAE), variational autoencoder (VAE), adversarial autoencoder (AAE) and adversarial variational Bayes (AVB), can capture the intrinsic structure of the data distribution in the learned feature representation. In this work, we systematically investigate four kinds of unsupervised feature learning methods for improving speaker-independent ASER. We show that all methods improve the performance regarding unweighted accuracy rating (UAR) and F1-score over methods that use hand-crafted features or that do not perform feature learning on external datasets. We also show that VAE, AAE and AVB methods, which control the distribution of the latent representation, outperform DAE that does not control such distribution. This suggests the benefits of using variational inference methods to learn features from general speech for the speech tasks such as ASER that has very limited labeled data.
机译:情绪语音数据的稀缺性是开发自动语音情感识别(ASER)系统的瓶颈。缓解此问题的一种方法是使用无监督的特征学习技术来学习来自广泛可用的一般性语音的功能,并使用这些功能来训练情绪分类器。这些无监督的方法,例如去噪AutoEncoder(DAE),变形自身摩托(AAE),对抗性AutoEncoder(AAE)和逆势变分贝叶(AVB)可以捕获所学到的特征表示中的数据分布的内在结构。在这项工作中,我们系统地调查了改进扬声器无关的ALER的四种无监督特征学习方法。我们展示所有方法都改善了有关未加权精度评级(UAR)和F1-Score过度使用手工制作功能或在外部数据集上执行特征学习的方法的性能。我们还显示VAE,AAE和AVB方法,控制潜在表示的分布,不控制这种分布的差异性DAE。这表明使用变分推理方法来学习来自一般性语音的特征的益处,例如具有非常有限的数据具有非常有限的数据的原始语音。

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