基于序列核支持向量机的口语识别新方法

A. Ziaei, S. Ahadi, H. Yeganeh, S. M. Mirrezaie
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引用次数: 0

摘要

针对基于GMM-LM的语言识别系统,提出了一种新的后端分类器。该系统由映射矩阵和支持向量机的后端分类器作为主要部分,依次位于GMM-LM系统之后。当映射矩阵将语言模型的输出向量映射到语言比以前更可分离的新空间时,支持向量机银行端分类器中的每个支持向量机将一种语言与其他语言分离开来。对每个支持向量机使用一个新的序列核。作为最后阶段,融合块的任务是将SVM的银行端分数与基于gmm的LID的分数融合,以达到更高的精度。结果表明,基于序列核的支持向量机不仅比普通的高斯混合后端分类器和GLDS支持向量机后端分类器更有效地分离语言,而且新的映射矩阵在分离类别方面也优于普通的线性判别矩阵,最后引入融合块,使得性能更加优越。与其他LDA-GMM和LDAGLDS SVM后端分类器相比,LID的总体精度显着提高。我们在OGI-TS多语言任务中的5种语言上的实验证明了我们的说法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new approach for spoken language identification based on sequence kernel SVMs
A new back-end classifier for GMM-LM based language identification systems is proposed in this paper. The proposed system consists of a mapping matrix and a back-end classifier of SVMs as its main parts, located in series after the GMM-LM system. While the mapping matrix maps the language model's output vectors to a new space in which the languages are more separable than before, each SVM in the SVM bank-end classifier separates one language from the others. A new sequence kernel is used for each SVM in the bank-end classifier. As a final stage, a fusion block carries out the task of fusing the SVM bank-end scores with those of the GMM-based LID to achieve higher accuracies. We show that not only our new sequence kernel-based SVMs separate languages more efficiently than common Gaussian mixture and GLDS SVM back-end classifiers, but also our new mapping matrix outperforms common linear discriminant matrix in separating classes from each other and finally the introduction of fusion block leads to even superior performance. The overall accuracy of the LID is noticeably increased in comparison with the other LDA-GMM and LDAGLDS SVM back-end classifiers. Our experiments on 5 languages from OGI-TS Multilanguage task prove our claim.
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