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Study of Different Backends in a State-Of-the-Art Language Recognition System

机译:先进的语言识别系统中不同后端的研究

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State of the art language recognition systems usually add a backend prior to the linear fusion of the subsystems scores. The backend plays a dual role. When the set of languages for which models have been trained does not match the set of target languages, the backend maps the available scores to the space of target languages. On the other hand, the backend serves as a precalibration stage that adapts the space of scores. In this work, well known backends (Generative Gaussian Backend, Discriminative Gaussian Backend and Logistic Regression Backend) and newer proposals (Fully Bayesian Gaussian Backend and Gaussian Mixture Backend) are analyzed and compared. The effect of applying a T-Norm or a ZT-Norm is also analyzed. Finally the effect of discarding development signals, those with the highest scores, is also studied. Experiments have been carried out on the NIST 2009 LRE database, using a state-of-the-art Language Recognition System consisting of the fusion of five subsystems: A Linearized Eigenchannel GMM (LE-GMM) subsystem, an iVector subsystem and three phone-lattice-SVM subsystems. Best performance was attained by Gaussian Mixture Backend (1.25 EER), yielding 23% relative improvement with respect to the baseline (1.62 EER).
机译:最先进的语言识别系统通常在子系统分数的线性融合之前添加一个后端。后端扮演双重角色。当已训练模型的语言集与目标语言集不匹配时,后端会将可用分数映射到目标语言空间。另一方面,后端充当适应分数空间的预校准阶段。在这项工作中,分析和比较了众所周知的后端(生成高斯后端,判别式高斯后端和逻辑回归后端)和较新的建议(完全贝叶斯高斯后端和高斯混合后端)。还分析了应用T型规范或ZT型规范的效果。最后,还研究了丢弃那些得分最高的发展信号的影响。已在NIST 2009 LRE数据库上进行了实验,使用了先进的语言识别系统,该系统由五个子系统的融合组成:线性化本征通道GMM(LE-GMM)子系统,iVector子系统和三个电话-格SVM子系统。高斯混合后端(1.25 EER)获得了最佳性能,相对于基线(1.62 EER)产生了23%的相对改进。

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