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A new discriminant NMF algorithm and its application to the extraction of subtle emotional differences in speech

机译:一种新的判别NMF算法及其在语音中细微情感差异的提取中

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摘要

In this studywe propose a new feature extraction algorithm, dNMF (discriminant non-negative matrix factorization), to learn subtle class-related differences while maintaining an accurate generative capability. In addition to the minimum representation error for the standard NMF (non-negative matrix factorization) algorithm, the dNMF algorithm also results in higher between-class variance for discriminant power. The multiplicative NMF learning algorithm has been modified to cope with this additional constraint. The cost function was carefully designed so that the extraction of feature coefficients from a single testing pattern with pre-trained feature vectors resulted in a quadratic convex optimization problem in non-negative space for uniqueness. It also resolves issues related to the previous discriminant NMF algorithms. The developed dNMF algorithm has been applied to the emotion recognition task for speech, where it needs to emphasize the emotional differences while de-emphasizing the dominant phonetic components. The dNMF algorithm successfully extracted subtle emotional differences, demonstrated much better recognition performance and showed a smaller representation error from an emotional speech database.
机译:在这项研究中,我们提出了一种新的特征提取算法dNMF(判别式非负矩阵分解),以学习与类相关的细微差别,同时保持准确的生成能力。除了标准NMF(非负矩阵分解)算法的最小表示误差外,dNMF算法还为判别能力带来了更高的类间方差。乘法NMF学习算法已进行了修改,以应对此附加约束。精心设计了代价函数,以便从具有预训练特征向量的单个测试模式中提取特征系数,从而在非负空间中产生二次凸优化问题,以实现唯一性。它还解决了与以前的判别式NMF算法有关的问题。发达的dNMF算法已应用于语音情感识别任务,该任务需要强调情感差异,同时不强调主要语音成分。 dNMF算法成功地提取了细微的情感差异,表现出更好的识别性能,并且从情感语音数据库中显示出较小的表示误差。

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