I2R-NUS提交的东方语言识别AP16-OL7挑战

Hanwu Sun, Kong-Aik Lee, Trung Hieu Nguyen, B. Ma, Haizhou Li
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引用次数: 1

摘要

本文详细描述和分析了由信息通信研究所(I2R)和新加坡国立大学(NUS)联合提交的AP16-OL7挑战赛中表现最好的系统。所提交的系统是两个子系统的融合:i-vector系统和GMM-SVM系统,都是基于最先进的瓶颈特征。本文的核心工作是基于语言的UBM GMM-SVM系统和基于支持向量机分类器的i向量多项式展开。FoCal工具箱用于子系统融合。实验结果表明,该方法在开发集和评估集上都比基线系统有了显著的改进。我们最终提交的开发集和评价集的识别率分别达到了0.40%、1.09%和98.9%、97.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
I2R-NUS submission to oriental language recognition AP16-OL7 challenge
This paper presents a detailed description and analysis of a joint submission of Institute for Infocomm Research (I2R) and National University of Singapore (NUS), which is the top performing system to AP16-OL7 Challenge. The submitted system was a fusion of two sub-systems: the i-vector system and GMM-SVM system, both based on state-of-the-art bottleneck feature. Central to our work presented in this paper is a language-dependent UBM GMM-SVM system and traditional i- vector polynomials expansion with SVM classifier. The FoCal toolkit was used for sub-system fusion. Experimental results show that the proposed approach achieves significant improvement over the baseline system on the development and evaluation sets. Our final submission achieve EER 0.440%, 1.09% and identification rates 98.9%, 97.6% on the development set and evaluation set, respectively.
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