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首页> 外文期刊>Neural computing & applications >Spoken emotion recognition via locality-constrained kernel sparse representation
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Spoken emotion recognition via locality-constrained kernel sparse representation

机译:通过局部约束的内核稀疏表示进行口语情绪识别

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摘要

Spoken emotion recognition is currently a very active research topic and has attracted extensive attention in signal processing, pattern recognition, artificial intelligence, etc. In this paper, a new emotion classification method based on kernel sparse representation, named locality-constrained kernel sparse representation-based classification (LC-KSRC), is proposed for spoken emotion recognition. LC-KSRC is able to learn more discriminating sparse representation coefficients for spoken emotion recognition, since it integrates both sparsity and data locality in the kernel feature space. The proposed method is compared with six representative emotion classification methods, including linear discriminant classifier, K-nearest-neighbor, radial basis function neural networks, support vector machines, sparse representation-based classification and kernel sparse representation-based classification. Experimental results on two publicly available emotional speech databases, i.e., the Berlin database and the Polish database, demonstrate the promising performance of the proposed method on spoken emotion recognition tasks, outperforming the other used methods.
机译:口语情感识别是目前非常活跃的研究课题,在信号处理,模式识别,人工智能等领域引起了广泛关注。提出了基于语音的分类(LC-KSRC)用于语音情感识别。 LC-KSRC能够在语音特征识别中学习更多可区分的稀疏表示系数,因为它在内核特征空间中集成了稀疏性和数据局部性。将该方法与六种代表性情绪分类方法进行了比较,包括线性判别分类器,K近邻,径向基函数神经网络,支持向量机,基于稀疏表示的分类和基于核稀疏表示的分类。在两个公开可用的情感语音数据库(即柏林数据库和波兰数据库)上的实验结果证明了该方法在语音情感识别任务上的有希望的性能,优于其他使用的方法。

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