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Sparse Autoencoder-Based Feature Transfer Learning for Speech Emotion Recognition

机译:基于稀疏自动编码器的特征转移学习用于语音情感识别

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In speech emotion recognition, training and test data used for system development usually tend to fit each other perfectly, but further 'similar' data may be available. Transfer learning helps to exploit such similar data for training despite the inherent dissimilarities in order to boost a recogniser's performance. In this context, this paper presents a sparse auto encoder method for feature transfer learning for speech emotion recognition. In our proposed method, a common emotion-specific mapping rule is learnt from a small set of labelled data in a target domain. Then, newly reconstructed data are obtained by applying this rule on the emotion-specific data in a different domain. The experimental results evaluated on six standard databases show that our approach significantly improves the performance relative to learning each source domain independently.
机译:在语音情感识别中,用于系统开发的训练和测试数据通常趋于彼此完美契合,但可能还有其他“相似”数据。尽管存在内在差异,但转移学习有助于利用此类相似数据进行训练,以提高识别器的性能。在这种情况下,本文提出了一种用于特征转移学习的稀疏自动编码器方法,用于语音情感识别。在我们提出的方法中,从目标域中的一小组标记数据中学习了特定于情感的通用映射规则。然后,通过将此规则应用于不同域中的特定于情绪的数据,可以获得新重建的数据。在六个标准数据库上评估的实验结果表明,相对于独立学习每个源域,我们的方法显着提高了性能。

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