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Implicit trajectory modelling using temporally varying weight regression for automatic speech recognition

机译:使用时变权重回归的隐式轨迹建模用于自动语音识别

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Recently, implicit trajectory modelling using temporally varying model parameters has achieved promising gains over the discriminatively trained standard HMM system. However, these works only focus on the temporally varying means or precisions explicitly. It is interesting to explore the capability of temporally varying weights, since the effect of time varying Gaussian parameters can be achieved by adjusting the weights of Gaussian Mixture Models (GMM) for different observation. This paper proposes a Temporally Varying Weight Regression (TVWR) model to learn the importance of different Gaussian components under different temporal contexts. Technically, TVWR factorizes the HMM state likelihood such that the contextual information can be modelled using time varying weights. Additionally, approximate constraints are derived to ensure a valid probabilistic model for TVWR. Experimental results for continuous speech recognition on Wall Street Journal show consistent improvements with varying system complexity and about 12% relative significant improvements in the best case.
机译:近来,使用经过时间变化的模型参数的隐式轨迹建模已获得了经过区别训练的标准HMM系统的有希望的收益。但是,这些工作仅专注于时间变化的均值或精度。探索随时间变化的权重的能力很有趣,因为可以通过为不同的观察调整高斯混合模型(GMM)的权重来实现随时间变化的高斯参数的效果。本文提出了一种时变权重回归(TVWR)模型,以了解不同时间背景下不同高斯分量的重要性。从技术上讲,TVWR将HMM状态可能性分解为因子,以便可以使用随时间变化的权重对上下文信息进行建模。另外,导出近似约束以确保TVWR的有效概率模型。 《华尔街日报》连续语音识别的实验结果表明,随着系统复杂度的变化,持续改进的效果最佳,在最佳情况下约有12%的相对重大改进。

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