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Discriminative classifiers for phonotactic language recognition with iVectors

机译:带有iVectors的音位语言识别的判别分类器

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Phonotactic models based on bags of n-grams representations and discriminative classifiers are a popular approach to the language recognition problem. However, the large size of n-gram count vectors brings about some difficulties in discriminative classifiers. The subspace Multinomial model was recently proposed to effectively represent information contained in the n-grams using low-dimensional iVectors. The availability of a low-dimensional feature vector allows investigating different post-processing techniques and different classifiers to improve recognition performance. In this work, we analyze a set of discriminative classifiers based on Support Vector Machines and Logistic Regression and we propose an iVector post-processing technique which allows to improve recognition performance. The proposed systems are evaluated on the NIST LRE 2009 task.
机译:基于n-gram表示袋和判别式分类器的配音模型是一种流行的解决语言识别问题的方法。然而,n-gram计数向量的大尺寸在判别式分类器中带来了一些困难。最近提出了子空间多项式模型,以使用低维iVector有效表示n元语法中包含的信息。低维特征向量的可用性允许研究不同的后处理技术和不同的分类器,以提高识别性能。在这项工作中,我们分析了基于支持向量机和Logistic回归的一组判别式分类器,并提出了一种iVector后处理技术,可以提高识别性能。 NIST LRE 2009任务对建议的系统进行了评估。

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