系统组合的广义判别训练框架

Yuuki Tachioka, Shinji Watanabe, Jonathan Le Roux, J. Hershey
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引用次数: 7

摘要

本文提出了一种用于系统组合的广义判别训练框架,该框架包括声学建模(高斯混合模型和深度神经网络)和判别特征变换。为了通过基础系统与互补系统的结合来提高性能,互补系统应具有合理的良好性能,但与基础系统相比,互补系统的输出往往不同。尽管在传统的启发式组合方法中很难平衡这两个有点相反的目标,但我们的框架提供了一个新的目标函数,可以在顺序判别性训练标准中调整平衡。我们还描述了所提出的方法与增强方法的关系。在高噪声中词汇语音识别任务(第2次CHiME挑战轨道2)和LVCSR任务(自发日语语料库)上的实验表明,与传统的系统组合方法相比,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A generalized discriminative training framework for system combination
This paper proposes a generalized discriminative training framework for system combination, which encompasses acoustic modeling (Gaussian mixture models and deep neural networks) and discriminative feature transformation. To improve the performance by combining base systems with complementary systems, complementary systems should have reasonably good performance while tending to have different outputs compared with the base system. Although it is difficult to balance these two somewhat opposite targets in conventional heuristic combination approaches, our framework provides a new objective function that enables to adjust the balance within a sequential discriminative training criterion. We also describe how the proposed method relates to boosting methods. Experiments on highly noisy middle vocabulary speech recognition task (2nd CHiME challenge track 2) and LVCSR task (Corpus of Spontaneous Japanese) show the effectiveness of the proposed method, compared with a conventional system combination approach.
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