噪声鲁棒ASR的导数核

A. Ragni, M. Gales
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引用次数: 29

摘要

最近有兴趣结合生成和判别分类器。在这些分类器中,判别模型的特征来源于生成核。使用生成核的一个优点是存在系统化的方法来将复杂的依赖关系引入特征空间。此外,由于特征是基于生成模型的,标准的基于模型的补偿和自适应技术可以使判别模型对噪声和说话人条件具有鲁棒性。本文从几个方面扩展了以前在这个框架下的工作。首先,它引入了基于上下文相关生成模型的衍生核。其次,它描述了如何将衍生核纳入结构化判别模型。第三,它解决了当使用上下文相关模型和衍生核的高维特征空间时与大量类和参数相关的问题。在小词汇量AURORA 2和中大型词汇量AURORA 4两个噪声干扰任务上对该方法进行了评价。
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Derivative kernels for noise robust ASR
Recently there has been interest in combining generative and discriminative classifiers. In these classifiers features for the discriminative models are derived from the generative kernels. One advantage of using generative kernels is that systematic approaches exist to introduce complex dependencies into the feature-space. Furthermore, as the features are based on generative models standard model-based compensation and adaptation techniques can be applied to make discriminative models robust to noise and speaker conditions. This paper extends previous work in this framework in several directions. First, it introduces derivative kernels based on context-dependent generative models. Second, it describes how derivative kernels can be incorporated in structured discriminative models. Third, it addresses the issues associated with large number of classes and parameters when context-dependent models and high-dimensional feature-spaces of derivative kernels are used. The approach is evaluated on two noise-corrupted tasks: small vocabulary AURORA 2 and medium-to-large vocabulary AURORA 4 task.
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