A Sample and Feature Selection Scheme for GMM-SVM Based Language Recognition

Yan Song, Lirong Dai
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Abstract

Discriminative training for language recognition has been a key tool for improving system performance. SVM-based algorithms (i.e. GMM-SVM, GLDS-SVM etc.) are important ones for language recognition. The core of these algorithms is to construct the kernel for comparing the similarity of two sequences. It is known that the mismatch between training and test condition will degrade the performance. In this paper, we proposed a novel sample and feature selection scheme under the GMM-SVM framework, which aims at alleviating the duration mismatch problem. The proposed method is evaluated on NIST 03 and 07 language recognition evaluation tasks with improvement over prior techniques.
基于GMM-SVM的语言识别样本和特征选择方案
语言识别的判别训练已经成为提高系统性能的关键工具。基于支持向量机的算法(GMM-SVM、GLDS-SVM等)是语言识别的重要算法。这些算法的核心是构造用于比较两个序列相似性的核。众所周知,训练条件与测试条件的不匹配会导致性能下降。本文在GMM-SVM框架下提出了一种新的样本和特征选择方案,以缓解持续时间不匹配问题。该方法在NIST 03和NIST 07语言识别评估任务中进行了评估,并对先前的技术进行了改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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