首页> 外文会议>Workshop on Automatic Speech Recognition and Understanding >AUTOMATIC MODEL COMPLEXITY CONTROL FOR GENERALIZED VARIABLE PARAMETER HMMS
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AUTOMATIC MODEL COMPLEXITY CONTROL FOR GENERALIZED VARIABLE PARAMETER HMMS

机译:用于广义变量参数HMMS的自动模型复杂性控制

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An important task for speech recognition systems is to handle the mismatch against a target environment introduced by acoustic factors such as variable ambient noise. To address this issue, it is possible to explicitly approximate the continuous trajectory of optimal, well matched model parameters against the varying noise using, for example, using generalized variable parameter HMMs (GVP-HMM). In order to improve the generalization and computational efficiency of conventional GVP-HMMs, this paper investigates a novel model complexity control method for GVP-HMMs. The optimal polynomial degrees of Gaussian mean, variance and model space linear transform trajectories are automatically determined at local level. Significant error rate reductions of 20% and 28% relative were obtained over the multi-style training baseline systems on Aurora 2 and a medium vocabulary Mandarin Chinese speech recognition task respectively. Consistent performance improvements and model size compression of 57% relative were also obtained over the baseline GVP-HMM systems using a uniformly assigned polynomial degree.
机译:语音识别系统的一个重要任务是处理对由声学因子引入的目标环境的不匹配,例如可变环境噪声。为了解决这个问题,可以使用例如使用广义变量参数HMMS(GVP-HMM)来明确地近似于反对变化噪声的最佳良好匹配的模型参数的连续轨迹。为了提高常规GVP-HMMS的泛化和计算效率,本文研究了GVP-HMM的新型模型复杂性控制方法。高斯平均值,方差和模型线性变换轨迹的最佳多项式程度自动确定在本地。在Aurora 2和中等词汇普通话中文语音识别任务中,获得了20%和28%相对的显着的错误率减少。使用均匀分配的多项式程度,还通过基线GVP-HMM系统获得了一致的性能改进和模型尺寸压缩57%的相对。

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