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首页> 外文期刊>IEICE transactions on information and systems >Learning Corpus-Invariant Discriminant Feature Representations for Speech Emotion Recognition
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Learning Corpus-Invariant Discriminant Feature Representations for Speech Emotion Recognition

机译:学习语料不变特征特征表示的语音情感识别

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As a hot topic of speech signal processing, speech emotion recognition methods have been developed rapidly in recent years. Some satisfactory results have been achieved. However, it should be noted that most of these methods are trained and evaluated on the same corpus. In reality, the training data and testing data are often collected from different corpora, and the feature distributions of different datasets often follow different distributions. These discrepancies will greatly affect the recognition performance. To tackle this problem, a novel corpus-invariant discriminant feature representation algorithm, called transfer discriminant analysis (TDA), is presented for speech emotion recognition. The basic idea of TDA is to integrate the kernel LDA algorithm and the similarity measurement of distributions into one objective function. Experimental results under the cross-corpus conditions show that our proposed method can significantly improve the recognition rates.
机译:作为语音信号处理的热门话题,语音情感识别方法近年来得到了迅速发展。已经取得了一些令人满意的结果。但是,应该注意的是,大多数这些方法都是在同一语料库上进行训练和评估的。实际上,训练数据和测试数据通常是从不同的语料库收集的,并且不同数据集的特征分布通常遵循不同的分布。这些差异将极大地影响识别性能。为了解决这个问题,提出了一种新的语料不变特征识别算法,称为转移判别分析(TDA),用于语音情感识别。 TDA的基本思想是将内核LDA算法和分布的相似性度量集成到一个目标函数中。在跨主体条件下的实验结果表明,我们提出的方法可以显着提高识别率。

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